library(emhawkes)This subsection outlines the steps for constructing, running
simulations, and estimating a univariate Hawkes model. To begin, create
an hspec object which defines the Hawkes model. S4 class
hspec contains slots for the model parameters:
mu, alpha, beta,
dimens, rmark, and impact.
In a univariate model, the basic parameters of the model,
mu, alpha, beta, can be given as
numeric. If numeric values are given, they will be converted to
matrices. Below is an example of a univariate Hawkes model without a
mark.
set.seed(1107)
mu1 <- 0.3; alpha1 <- 1.2; beta1 <- 1.5
hspec1 <- new("hspec", mu = mu1, alpha = alpha1, beta = beta1)
show(hspec1)
#> An object of class "hsepc" of 1-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.3
#>
#> Slot alpha:
#> [,1]
#> [1,] 1.2
#>
#> Slot beta:
#> [,1]
#> [1,] 1.5The function hsim implements simulation where the input
arguments are hspec, size and the initial
values of intensity component process, lambda_component0,
and the initial values of Hawkes processes, N0. More
precisely, the intensity process the basic univariate Hawkes model is
represented by \[ \lambda(t) = \mu +
\int_{-\infty}^t \alpha e^{-\beta (t-s)} d N(s) = \mu + \lambda_c(0)
e^{-\beta t} + \int_0^t \alpha e^{-\beta (t-s)} d N(s) \] where
the lambda_component0 denotes \[
\lambda_c(0) = \int_{-\infty}^0 \alpha e^{\beta s} d N(s).\] If
lambda_component0 is not provided, the internally
determined initial values for intensity process are used. If
size is sufficiently large, exact value of
lambda_component0 may not be important. The default initial
value of counting process, N0, is zero.
res1 <- hsim(hspec1, size = 1000)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for simulation.
summary(res1)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 mark lambda1
#> [1,] 0.00000 0 0 0.90000
#> [2,] 0.97794 1 1 0.43838
#> [3,] 1.09001 2 1 1.43128
#> [4,] 1.28999 3 1 2.02711
#> [5,] 1.53225 4 1 2.33527
#> [6,] 1.65001 5 1 3.01139
#> [7,] 2.51807 6 1 1.36377
#> [8,] 2.81710 7 1 1.74553
#> [9,] 2.87547 8 1 2.72378
#> [10,] 3.16415 9 1 2.65016
#> [11,] 3.51378 10 1 2.40131
#> [12,] 4.22355 11 1 1.43843
#> [13,] 16.96752 12 1 0.30000
#> [14,] 17.71654 13 1 0.69015
#> [15,] 19.10293 14 1 0.49874
#> [16,] 24.06354 15 1 0.30082
#> [17,] 24.09256 16 1 1.44967
#> [18,] 28.40173 17 1 0.30366
#> [19,] 28.53743 18 1 1.28198
#> [20,] 28.56702 19 1 2.38725
#> ... with 980 more rows
#> ------------------------------------------The results of hsim is an S3 class hreal
which consists of hspec, inter_arrival,
arrival, type, mark,
N, Nc, lambda,
lambda_component, rambda,
rambda_component.
hspec is the model specification
inter_arrival is the inter-arrival time of every
event
arrival is the cumulative sum of
inter_arrival
type is the type of events, i.e., \(i\) for \(N_i\), and used for multivariate
model
mark is a numeric vector which represents additional
information for the event
lambda represents \(\lambda\) which is the left continuous and
right limit version
The right continuous version of intensity is
rambda
lambda_component represents \(\lambda_{ij}\) and
rambda_component is the right continuous version.
inter_arrival, type, mark,
N, and Nc start at zero. Using
summary() function, one can print the first 20 elements of
arrival, N and lambda.
print() function also can be used.
By the definition, we have
lambda == mu + lambda_compoent:
# first and third columns are the same
cbind(res1$lambda[1:5], res1$lambda_component[1:5], mu1 + res1$lambda_component[1:5])
#> [,1] [,2] [,3]
#> [1,] 0.900000 0.600000 0.900000
#> [2,] 0.438383 0.138383 0.438383
#> [3,] 1.431282 1.131282 1.431282
#> [4,] 2.027111 1.727111 2.027111
#> [5,] 2.335269 2.035269 2.335269Except the first row, rambda == lambda + alpha .
# second and third columns are the same
cbind(res1$lambda[1:5], res1$rambda[1:5], res1$lambda[1:5] + alpha1)
#> [,1] [,2] [,3]
#> [1,] 0.900000 0.900000 2.100000
#> [2,] 0.438383 1.638383 1.638383
#> [3,] 1.431282 2.631282 2.631282
#> [4,] 2.027111 3.227111 3.227111
#> [5,] 2.335269 3.535269 3.535269Also check the exponential decaying:
# By definition, the following two are equal:
res1$lambda[2:6]
#> [1] 0.438383 1.431282 2.027111 2.335269 3.011391
mu1 + (res1$rambda[1:5] - mu1) * exp(-beta1 * res1$inter_arrival[2:6])
#> [1] 0.438383 1.431282 2.027111 2.335269 3.011391The log-likelihood function is computed by logLik
method. In this case, the inter-arrival times and hspec are
inputs of the function.
logLik(hspec1, inter_arrival = res1$inter_arrival)
#> The initial values for intensity processes are not provided. Internally determined initial values are used.
#> [,1]
#> [1,] -214.2385The likelihood estimation is performed using mhfit
function. The specification of the initial values of the parameters,
hspec0 is needed. Note that only inter_arrival
is needed in this univariate model. (Indeed, for more precise
simulation, lambda0, the initial value of lambda component,
should be specified. If not, internally determined initial values are
used.) By default, it uses the BFGS method for numerical
optimization.
# initial value for numerical optimization
mu0 <- 0.5; alpha0 <- 1.0; beta0 <- 1.8
hspec0 <- new("hspec", mu = mu0, alpha = alpha0, beta = beta0)
# the intial values are provided through hspec
mle <- hfit(hspec0, inter_arrival = res1$inter_arrival)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
summary(mle)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 24 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -213.4658
#> 3 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.33641 0.03486 9.65 <2e-16 ***
#> alpha1 1.16654 0.09980 11.69 <2e-16 ***
#> beta1 1.52270 0.13019 11.70 <2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------The intensity process of basic bivariate Hawkes model is defined by
\[ \lambda_1(t) = \mu_1 + \int_{-\infty}^t \alpha_{11} e^{-\beta_{11}(t-s)} d N_1(s) + \int_{-\infty}^t \alpha_{12} e^{-\beta_{12}(t-s)} d N_2(s), \]
\[ \lambda_2(t) = \mu_2 + \int_{-\infty}^t \alpha_{21} e^{-\beta_{21}(t-s)} d N_1(s) + \int_{-\infty}^t \alpha_{22} e^{-\beta_{22}(t-s)} d N_2(s). \]
In a bivariate model, the parameters, the slots of
hspec, are matrices. mu is 2-by-1, and
alpha and beta are 2-by-2 matrices:
\[ \mu = \begin{bmatrix} \mu_1 \\ \mu_2 \end{bmatrix}, \quad \alpha = \begin{bmatrix} \alpha_{11} & \alpha_{12} \\ \alpha_{21} & \alpha_{22} \end{bmatrix}, \quad \beta = \begin{bmatrix} \beta_{11} & \beta_{12} \\ \beta_{21} & \beta_{22} \end{bmatrix} \]
rmark is a random number generating function for mark
and is not used for non-mark model. lambda_component0,
2-by-2 matrix, represents the initial values of
lambda_component, a set of
lambda11, lambda12, lambda21, lambda22. The intensity
processes are represented by
\[ \lambda_1(t) = \mu_1 + \lambda_{11}(t) + \lambda_{12}(t), \]
\[ \lambda_2(t) = \mu_2 + \lambda_{21}(t) + \lambda_{22}(t). \]
\(\lambda_{ij}\) called lambda
components and lambda0 is \(\lambda_{ij}(0)\).
lambda_component0 can be omitted and then internally
determined initial values are used.
mu2 <- matrix(c(0.2), nrow = 2)
alpha2 <- matrix(c(0.5, 0.9, 0.9, 0.5), nrow = 2, byrow = TRUE)
beta2 <- matrix(c(2.25, 2.25, 2.25, 2.25), nrow = 2, byrow = TRUE)
hspec2 <- new("hspec", mu=mu2, alpha=alpha2, beta=beta2)
print(hspec2)
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.2
#> [2,] 0.2
#>
#> Slot alpha:
#> [,1] [,2]
#> [1,] 0.5 0.9
#> [2,] 0.9 0.5
#>
#> Slot beta:
#> [,1] [,2]
#> [1,] 2.25 2.25
#> [2,] 2.25 2.25To simulate, use function hsim.
res2 <- hsim(hspec2, size=1000)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for simulation.
summary(res2)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 N2 mark lambda1 lambda2
#> [1,] 0.00000 0 0 0 0.52941 0.52941
#> [2,] 0.45174 1 0 1 0.31921 0.31921
#> [3,] 1.08505 2 0 1 0.34893 0.44514
#> [4,] 1.80625 3 0 1 0.32808 0.42601
#> [5,] 5.85572 4 0 1 0.20007 0.20012
#> [6,] 7.06679 4 1 1 0.23278 0.25901
#> [7,] 7.29302 5 1 1 0.76068 0.53601
#> [8,] 7.40387 5 2 1 1.02655 1.16317
#> [9,] 7.41410 6 2 1 1.88724 1.62986
#> [10,] 7.44747 6 3 1 2.22904 2.36135
#> [11,] 7.51014 6 4 1 2.74383 2.51135
#> [12,] 7.67411 6 5 1 2.58131 2.14396
#> [13,] 10.80975 6 6 1 0.20283 0.20211
#> [14,] 20.12343 7 6 1 0.20000 0.20000
#> [15,] 27.36900 8 6 1 0.20000 0.20000
#> [16,] 27.71327 9 6 1 0.43044 0.61479
#> [17,] 29.31115 10 6 1 0.22005 0.23610
#> [18,] 30.38241 10 7 1 0.24669 0.28405
#> [19,] 31.85751 11 7 1 0.23426 0.22114
#> [20,] 32.02988 12 7 1 0.56251 0.82501
#> ... with 980 more rows
#> ------------------------------------------type is crucial in multi-variate models, which
represents the type of event.
# Under bi-variate model, there are two types, 1 or 2.
res2$type[1:10]
#> [1] 0 1 1 1 1 2 1 2 1 2The column names of N are N1,
N2, N3 and so on, for multivariate models.
res2$N[1:3, ]
#> N1 N2
#> [1,] 0 0
#> [2,] 1 0
#> [3,] 2 0Similarly, the column names of lambda are
lambda1, lambda2, lambda3 and so
on.
res2$lambda[1:3, ]
#> lambda1 lambda2
#> [1,] 0.5294118 0.5294118
#> [2,] 0.3192112 0.3192112
#> [3,] 0.3489332 0.4451416The column names of lambda_component are
lambda_component11, lambda_component12,
lambda_component13 and so on.
res2$lambda_component[1:3, ]
#> lambda11 lambda12 lambda21 lambda22
#> [1,] 0.11764706 0.21176471 0.21176471 0.11764706
#> [2,] 0.04257541 0.07663575 0.07663575 0.04257541
#> [3,] 0.13050071 0.01843250 0.23490128 0.01024028By definition, the following two are the same:
mu2[1] + rowSums(res2$lambda_component[1:5, c("lambda11", "lambda12")])
#> [1] 0.5294118 0.3192112 0.3489332 0.3280770 0.2000693
res2$lambda[1:5, "lambda1"]
#> [1] 0.5294118 0.3192112 0.3489332 0.3280770 0.2000693From the result, we get vectors of realized
inter_arrival and type. Bivariate model
requires inter_arrival and type for
estimation.
inter_arrival2 <- res2$inter_arrival
type2 <- res2$typeLog-likelihood is computed by a function logLik.
logLik(hspec2, inter_arrival = inter_arrival2, type = type2)
#> The initial values for intensity processes are not provided. Internally determined initial values are used.
#> [1] -1155.221A maximum log-likelihood estimation is performed using
hfit. In the following, the values of parameter slots in
hspec0, such as mu, alpha, beta, serve as
starting points of the numerical optimization. For the purpose of
illustration, we use hspec0 <- hspec2. Since the true
parameter values are not known in practical applications, the initial
guess is used. The realized inter_arrival and
type are used for estimation.
hspec0 <- hspec2
mle <- hfit(hspec0, inter_arrival = inter_arrival2, type = type2)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
summary(mle)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 35 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1153.699
#> 4 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.19244 0.01457 13.209 < 2e-16 ***
#> alpha1.1 0.61305 0.07819 7.841 4.48e-15 ***
#> alpha1.2 0.88418 0.09465 9.342 < 2e-16 ***
#> beta1.1 2.29655 0.20506 11.199 < 2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------coef(mle)
#> mu1 alpha1.1 alpha1.2 beta1.1
#> 0.1924436 0.6130518 0.8841788 2.2965457miscTools::stdEr(mle)
#> mu1 alpha1.1 alpha1.2 beta1.1
#> 0.01456893 0.07818747 0.09464793 0.20506267This subsection covers about the relation between parameter setting
and estimation procedure in multi-variate Hawkes model. The number of
parameters to be estimated in the model depends on how we set the
parameter slots such as mu, alpha and
beta in hspec0, the specification for initial
values. Since the parameter slot such as alpha is a matrix,
and the element in the matrix can be the same or different. The number
of parameters in the estimation varies depending on whether or not some
of the elements in the initial setting are the same or different.
For example, if alpha[1,1] and alpha[1,2]
in hspec0 are different in initial starting, the numerical
procedure tries to estimate both parameters of alpha[1,1]
and alpha[1,2] differently. If alpha[1,1] and
alpha[1,2] are the same in the initial setting, then the
estimation procedure considered two parameters are identical in the
model and hence only one value is estimated.
Recall that the example in the previous section is of a symmetric
Hawkes model where the matrix alpha is symmetric. In
addition, the elements of beta are all the same.
print(hspec2)
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.2
#> [2,] 0.2
#>
#> Slot alpha:
#> [,1] [,2]
#> [1,] 0.5 0.9
#> [2,] 0.9 0.5
#>
#> Slot beta:
#> [,1] [,2]
#> [1,] 2.25 2.25
#> [2,] 2.25 2.25res2 <- hsim(hspec2, size = 1000)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for simulation.In the first example of estimation, the initial value of
alpha0 is a matrix where the all elements have the same
value of 0.75. In this configuration, hfit assumes that
alpha11 == alpha12 == alpha21 == alpha22 in the model (even
if the actual parameters have different values). Similarly, the other
parameter matrices mu0 and beta0 are also
treated in the same way.
mu0 <- matrix(c(0.15, 0.15), nrow = 2)
alpha0 <- matrix(c(0.75, 0.75, 0.75, 0.75), nrow = 2, byrow=TRUE)
beta0 <- matrix(c(2.6, 2.6, 2.6, 2.6), nrow = 2, byrow=TRUE)
hspec0 <- new("hspec", mu=mu0, alpha=alpha0, beta=beta0)
summary(hfit(hspec0, inter_arrival = res2$inter_arrival, type = res2$type))
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 27 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1452.179
#> 3 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.20553 0.01405 14.63 <2e-16 ***
#> alpha1.1 0.61267 0.05758 10.64 <2e-16 ***
#> beta1.1 2.17234 0.20925 10.38 <2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------Note that in the above result, alpha1.1 is somewhere
between original alpha1.1 = 0.5 and
alpha1.2 = 0.9.
In the following second example, alpha0’s elements are
not same, but symmetric as in the original values in the simulation. We
have alpha11 == alpha22 and alpha11 == alpha22
in alpha0 and hence alpha11 and
alpha12 will be estimated differently.
mu0 <- matrix(c(0.15, 0.15), nrow = 2)
alpha0 <- matrix(c(0.75, 0.751, 0.751, 0.75), nrow = 2, byrow=TRUE)
beta0 <- matrix(c(2.6, 2.6, 2.6, 2.6), nrow = 2, byrow=TRUE)
hspec0 <- new("hspec", mu=mu0, alpha=alpha0, beta=beta0)
summary(hfit(hspec0, inter_arrival = res2$inter_arrival, type = res2$type))
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 32 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1446.605
#> 4 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.20625 0.01409 14.641 < 2e-16 ***
#> alpha1.1 0.44832 0.06714 6.677 2.44e-11 ***
#> alpha1.2 0.78307 0.08702 8.999 < 2e-16 ***
#> beta1.1 2.18866 0.21322 10.265 < 2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------In the third example, the estimation is performed under the
assumption that mu1 and mu2 may also be
different (even though they are the same in the original model).
mu0 <- matrix(c(0.15, 0.14), nrow = 2)
alpha0 <- matrix(c(0.75, 0.751, 0.751, 0.75), nrow = 2, byrow=TRUE)
beta0 <- matrix(c(2.6, 2.6, 2.6, 2.6), nrow = 2, byrow=TRUE)
hspec0 <- new("hspec", mu=mu0, alpha=alpha0, beta=beta0)
summary(hfit(hspec0, inter_arrival = res2$inter_arrival, type = res2$type))
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 38 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1446.346
#> 5 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.19770 0.01801 10.978 < 2e-16 ***
#> mu2 0.21493 0.01878 11.447 < 2e-16 ***
#> alpha1.1 0.44765 0.06535 6.850 7.39e-12 ***
#> alpha1.2 0.78386 0.08384 9.349 < 2e-16 ***
#> beta1.1 2.18967 0.19821 11.047 < 2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------By simply setting reduced = FALSE, all parameters are
estimated (not recommended).
summary(hfit(hspec2, inter_arrival = res2$inter_arrival, type = res2$type, reduced=FALSE))
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 57 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1446.275
#> 10 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.19807 0.01933 10.247 < 2e-16 ***
#> mu2 0.21443 0.02305 9.301 < 2e-16 ***
#> alpha1.1 0.47011 0.14692 3.200 0.00138 **
#> alpha2.1 0.79003 0.15344 5.149 2.62e-07 ***
#> alpha1.2 0.77643 0.12187 6.371 1.88e-10 ***
#> alpha2.2 0.42980 0.14530 2.958 0.00310 **
#> beta1.1 2.36707 0.89765 2.637 0.00837 **
#> beta2.1 2.24280 0.46762 4.796 1.62e-06 ***
#> beta1.2 2.13501 0.37341 5.718 1.08e-08 ***
#> beta2.2 2.04468 0.92742 2.205 0.02748 *
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------The same logic is applied to all the higher dimensional model.
Residual process can be extracted by residual_process().
inter_arrival, type,
rambda_component, mu,beta should
be provided. The component denotes the type of the process
to be extracted for multivariate model. For example, for a bi-variate
model, we have \(N_1\) and $N_2$.
component=1 is for the residual of \(N_1\) and component=2 is for
the residual of \(N_2\).
hrp <- new("hspec", mu = 0.3, alpha = 1.2, beta = 1.5)
res_rp <- hsim(hrp, size = 1000)
rp <- residual_process(component = 1,
inter_arrival = res_rp$inter_arrival, type = res_rp$type,
rambda_component = res_rp$rambda_component,
mu = 0.3, beta = 1.5)
p <- ppoints(100)
q <- quantile(rp,p=p)
plot(qexp(p), q, xlab="Theoretical Quantiles",ylab="Sample Quantiles")
qqline(q, distribution=qexp,col="blue", lty=2)In case that rambda_component is unknown, it can be
inferred by infer_lambda(). For
infer_lambda(), the model hspec,
inter_arrival and type are required. The above
example is then:
# estimation
mle_rp <- hfit(new("hspec", mu = 0.2, alpha = 1, beta = 2),
res_rp$inter_arrival)
# construct hspec from estimation result
he <- new("hspec", mu = coef(mle_rp)["mu1"],
alpha = coef(mle_rp)["alpha1"], beta = coef(mle_rp)["beta1"])
# infer intensity
infered_res <- infer_lambda(he, res_rp$inter_arrival, res_rp$type)
# compute residuals where we use
rp2 <- residual_process(component = 1,
inter_arrival = res_rp$inter_arrival, type = res_rp$type,
rambda_component = infered_res$rambda_component,
mu = coef(mle_rp)["mu1"], beta = coef(mle_rp)["beta1"])
p <- ppoints(100)
q <- quantile(rp2, p=p)
plot(qexp(p), q, xlab="Theoretical Quantiles",ylab="Sample Quantiles")
qqline(q, distribution=qexp,col="blue", lty=2)In a multi-kernel Hawkes model, type_col_map is required
for hspec. type_col_map is a list that
represents the mapping between type and column number. For example,
consider a bi-variate multi-kernel model: \[
\lambda_t = \mu + \int_{-\infty}^{t} h(t-u) d N(u)
\] where \[ h = \sum_{k=1}^{K} h_k,
\quad
h_k (t) = \alpha_k \circ \begin{bmatrix}
e^{-\beta_{k11} t} & e^{-\beta_{k12} t} \\
e^{-\beta_{k21} t} & e^{-\beta_{k22} t}
\end{bmatrix}
\]
with matrix \(\alpha_k\) and \(k\) denoting kernel number.
For example, in a bi-variate Hawkes model with two kernels, the intensity processes are
\[ \begin{bmatrix} \lambda_1(t) \\ \lambda_2(t) \end{bmatrix} = \begin{bmatrix} \mu_1 \\ \mu_2 \end{bmatrix} + \int_{-\infty}^{t} \begin{bmatrix} \alpha_{111} e^{-\beta_{111} t} & \alpha_{112} e^{-\beta_{112} t} \\ \alpha_{121}e^{-\beta_{121} t} & \alpha_{122}e^{-\beta_{122} t} \end{bmatrix} \begin{bmatrix} d N_1(s) \\ dN_2(s) \end{bmatrix} + \int_{-\infty}^{t} \begin{bmatrix} \alpha_{211} e^{-\beta_{211} t} & \alpha_{212} e^{-\beta_{212} t} \\ \alpha_{221}e^{-\beta_{221} t} & \alpha_{222}e^{-\beta_{222} t} \end{bmatrix} \begin{bmatrix} d N_1(s) \\ dN_2(s) \end{bmatrix}. \]
The parameter matrix is defined by
\[ \alpha = \begin{bmatrix} \alpha_{111} & \alpha_{112} & \alpha_{211} & \alpha_{212} \\ \alpha_{121} & \alpha_{122} & \alpha_{221} & \alpha_{222} \end{bmatrix}, \quad \beta = \begin{bmatrix} \beta_{111} & \beta_{112} & \beta_{211} & \beta_{212} \\ \beta_{121} & \beta_{122} & \beta_{221} & \beta_{222} \end{bmatrix} \quad \]
and we should specify which columns of matrix are associated with which \(N_i\).
mu <- matrix(c(0.02, 0.02), nrow=2)
beta_1 <- matrix(rep(10, 4), nrow=2)
beta_2 <- matrix(rep(1, 4), nrow=2)
beta <- cbind(beta_1, beta_2)
alpha_1 <- matrix(c(3, 2,
2, 3), nrow=2, byrow=TRUE)
alpha_2 <- matrix(c(0.3, 0.2,
0.2, 0.3), nrow=2, byrow=TRUE)
alpha <- cbind(alpha_1, alpha_2)
print(alpha)
#> [,1] [,2] [,3] [,4]
#> [1,] 3 2 0.3 0.2
#> [2,] 2 3 0.2 0.3Note that \(d N_1(s)\) is multiplied
by first and third columns of \(\alpha\) and \(dN_2(s)\) is multiplied by second and
fourth columns of \(\alpha\) and hence
type_col_map is
type_col_map <- list(c(1,3), # columns for dN1
c(2,4)) # columns for dN2
type_col_map
#> [[1]]
#> [1] 1 3
#>
#> [[2]]
#> [1] 2 4where type i is associated with columns of
type_col_map[[i]]. Thus,
cat("Part of alpha associated with N1: \n")
#> Part of alpha associated with N1:
alpha[, type_col_map[[1]]] # associated with N1
#> [,1] [,2]
#> [1,] 3 0.3
#> [2,] 2 0.2
cat("Part of alpha associated with N2: \n")
#> Part of alpha associated with N2:
alpha[, type_col_map[[2]]] # associated with N2
#> [,1] [,2]
#> [1,] 2 0.2
#> [2,] 3 0.3
cat("Part of beta associated with N1: \n")
#> Part of beta associated with N1:
beta[, type_col_map[[1]]] # associated with N1
#> [,1] [,2]
#> [1,] 10 1
#> [2,] 10 1
cat("Part of beta associated with N2: \n")
#> Part of beta associated with N2:
beta[, type_col_map[[2]]] # associated with N2
#> [,1] [,2]
#> [1,] 10 1
#> [2,] 10 1h <- new("hspec", mu = mu, alpha = alpha, beta=beta, type_col_map = type_col_map)
h
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.02
#> [2,] 0.02
#>
#> Slot alpha:
#> [,1] [,2] [,3] [,4]
#> [1,] 3 2 0.3 0.2
#> [2,] 2 3 0.2 0.3
#>
#> Slot beta:
#> [,1] [,2] [,3] [,4]
#> [1,] 10 10 1 1
#> [2,] 10 10 1 1
#>
#> Slot type_col_map:
#> [[1]]
#> [1] 1 3
#>
#> [[2]]
#> [1] 2 4In addition, lambda_component0 should be provided for
simulation and estimation.
res_mk <- hsim(h, size = 2000,
# for an illustration purpose
lambda_component0 = matrix(seq(1, 1.7, 0.1), nrow = 2))
res_mk
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.02
#> [2,] 0.02
#>
#> Slot alpha:
#> [,1] [,2] [,3] [,4]
#> [1,] 3 2 0.3 0.2
#> [2,] 2 3 0.2 0.3
#>
#> Slot beta:
#> [,1] [,2] [,3] [,4]
#> [1,] 10 10 1 1
#> [2,] 10 10 1 1
#>
#> Slot type_col_map:
#> [[1]]
#> [1] 1 3
#>
#> [[2]]
#> [1] 2 4
#>
#>
#> Realized path :
#> arrival N1 N2 mark lambda1 lambda2 lambda11 lambda12 lambda13 lambda14
#> [1,] 0.00000 0 0 0 5.220 5.620 1.0000 1.1000 1.200 1.300
#> [2,] 0.07015 1 0 1 3.392 4.534 0.4959 0.5455 1.119 1.212
#> [3,] 0.17930 1 1 1 3.735 4.112 1.1736 0.1831 1.272 1.087
#> [4,] 0.30659 2 1 1 3.213 4.034 0.3286 0.6113 1.120 1.133
#> [5,] 0.34314 3 1 1 5.215 5.156 2.3096 0.4242 1.369 1.092
#> [6,] 0.35253 4 1 1 7.975 6.951 4.8338 0.3861 1.653 1.082
#> [7,] 0.35850 5 1 1 10.781 8.794 7.3798 0.3638 1.942 1.076
#> [8,] 0.36815 5 2 1 13.060 10.272 9.4243 0.3303 2.220 1.065
#> [9,] 0.43375 5 3 1 9.384 8.622 4.8907 1.2093 2.079 1.185
#> [10,] 0.48780 5 4 1 8.020 8.346 2.8485 1.8692 1.970 1.312
#> [11,] 0.52019 6 4 1 8.250 9.389 2.0605 2.7988 1.907 1.464
#> [12,] 0.61771 6 5 1 6.314 6.500 1.9084 1.0555 2.002 1.328
#> [13,] 0.62451 7 5 1 8.164 9.388 1.7830 2.8546 1.988 1.517
#> [14,] 0.70313 7 6 1 7.017 7.210 2.1789 1.3004 2.115 1.403
#> [15,] 0.80564 7 7 1 5.342 6.006 0.7817 1.1841 1.909 1.447
#> [16,] 0.83007 7 8 1 6.596 8.061 0.6123 2.4938 1.863 1.607
#> [17,] 0.87075 7 9 1 6.943 8.805 0.4076 2.9919 1.789 1.735
#> [18,] 0.90271 7 10 1 7.549 9.846 0.2961 3.6262 1.733 1.874
#> [19,] 0.91728 7 11 1 8.891 11.911 0.2560 4.8639 1.708 2.044
#> [20,] 0.99000 8 11 1 7.135 9.471 0.1237 3.3170 1.588 2.087
#> lambda21 lambda22 lambda23 lambda24
#> [1,] 1.40000 1.5000 1.600 1.700
#> [2,] 0.69421 0.7438 1.492 1.585
#> [3,] 0.90447 0.2497 1.517 1.421
#> [4,] 0.25326 0.9099 1.335 1.515
#> [5,] 1.56347 0.6314 1.480 1.461
#> [6,] 3.24415 0.5748 1.665 1.447
#> [7,] 4.94020 0.5415 1.854 1.439
#> [8,] 6.30130 0.4916 2.034 1.425
#> [9,] 3.27006 1.8120 1.905 1.615
#> [10,] 1.90458 2.8026 1.804 1.815
#> [11,] 1.37771 4.1974 1.747 2.047
#> [12,] 1.27382 1.5830 1.766 1.857
#> [13,] 1.19007 4.2817 1.754 2.142
#> [14,] 1.45323 1.9505 1.806 1.980
#> [15,] 0.52138 1.7761 1.630 2.058
#> [16,] 0.40835 3.7407 1.591 2.301
#> [17,] 0.27187 4.4878 1.528 2.498
#> [18,] 0.19749 5.4393 1.479 2.710
#> [19,] 0.17073 7.2958 1.458 2.966
#> [20,] 0.08251 4.9755 1.356 3.037
#> ... with 1980 more rows
#> ------------------------------------------summary(hfit(h, res_mk$inter_arrival, res_mk$type,
lambda_component0 = matrix(seq(1, 1.7, 0.1), nrow = 2)))
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 44 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: 3045.102
#> 7 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.020655 0.005892 3.506 0.000456 ***
#> alpha1.1 3.134528 0.265585 11.802 < 2e-16 ***
#> alpha1.2 2.056690 0.249917 8.230 < 2e-16 ***
#> alpha1.3 0.131581 0.058441 2.252 0.024353 *
#> alpha1.4 0.234245 0.067582 3.466 0.000528 ***
#> beta1.1 9.423118 NaN NaN NaN
#> beta1.3 0.834374 0.111776 7.465 8.35e-14 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------This model is basically two-kernel model and defined by little bit complicated reparameterization.
\[ \mu = \begin{bmatrix} \theta/(1 - \kappa)/2 + \tilde\theta/(1 + \kappa)/2 \\ \theta/(1 - \kappa)/2 - \tilde\theta/(1 + \kappa)/2 \end{bmatrix}, \quad \theta = (\theta^- + \theta^+)/2,\quad \tilde\theta=(\theta^- -\theta^+)/2 \]
\[ \alpha = \begin{bmatrix} \zeta & \tilde\zeta & \zeta & -\tilde\zeta \\ \zeta & -\tilde\zeta & \zeta & \tilde\zeta \end{bmatrix}, \quad \zeta = (\eta + \nu) / 2, \quad \tilde \zeta = (\eta - \nu)/ 2 \]
\[ \beta = \begin{bmatrix} \beta_1 & \beta_2 & \beta_1 & \beta_2 \\ \beta_1 & \beta_2 & \beta_1 & \beta_2 \end{bmatrix}, \quad \beta_1 = (\eta + \nu) / 2, \quad \beta_2 = (\eta - \nu)/2 \]
In order to handle complex re-parametrization, each slot is expressed
as a function rather than a matrix. The first argument
param is a set of parameters.
mu <- function(param = c(theta_p = 0.15, theta_n = 0.21, kappa = 0.12)){
theta <- (param["theta_n"] + param["theta_p"])/2
theta_tl <- (param["theta_n"] - param["theta_p"])/2
matrix(c(theta/2/(1 - param["kappa"]) + theta_tl/2/(1 + param["kappa"]),
theta/2/(1 - param["kappa"]) - theta_tl/2/(1 + param["kappa"])), nrow=2)
}
alpha <- function(param = c(eta = 5, nu = 3)){
zeta <- (param["eta"] + param["nu"])/2
zeta_tl <- (param["eta"] - param["nu"])/2
matrix(c(zeta, zeta_tl, zeta, -zeta_tl,
zeta, -zeta_tl, zeta, zeta_tl), nrow=2, byrow=TRUE)
}
beta <- function(param = c(beta = 12, kappa = 0.12)){
beta1 <- param["beta"] * (1 - param["kappa"])
beta2 <- param["beta"] * (1 + param["kappa"])
matrix(c(beta1, beta2, beta1, beta2,
beta1, beta2, beta1, beta2), nrow = 2, byrow = TRUE)
}
type_col_map <- list(c(1,2), c(3,4))
h_sy <- new("hspec", mu = mu, alpha = alpha, beta = beta, type_col_map = type_col_map)
h_sy
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> function(param = c(theta_p = 0.15, theta_n = 0.21, kappa = 0.12)){
#> theta <- (param["theta_n"] + param["theta_p"])/2
#> theta_tl <- (param["theta_n"] - param["theta_p"])/2
#> matrix(c(theta/2/(1 - param["kappa"]) + theta_tl/2/(1 + param["kappa"]),
#> theta/2/(1 - param["kappa"]) - theta_tl/2/(1 + param["kappa"])), nrow=2)
#> }
#> <bytecode: 0x0000022e44e3de78>
#>
#> Slot alpha:
#> function(param = c(eta = 5, nu = 3)){
#> zeta <- (param["eta"] + param["nu"])/2
#> zeta_tl <- (param["eta"] - param["nu"])/2
#> matrix(c(zeta, zeta_tl, zeta, -zeta_tl,
#> zeta, -zeta_tl, zeta, zeta_tl), nrow=2, byrow=TRUE)
#> }
#> <bytecode: 0x0000022e47b273c0>
#>
#> Slot beta:
#> function(param = c(beta = 12, kappa = 0.12)){
#> beta1 <- param["beta"] * (1 - param["kappa"])
#> beta2 <- param["beta"] * (1 + param["kappa"])
#> matrix(c(beta1, beta2, beta1, beta2,
#> beta1, beta2, beta1, beta2), nrow = 2, byrow = TRUE)
#> }
#> <bytecode: 0x0000022e497fe600>
#>
#> Slot type_col_map:
#> [[1]]
#> [1] 1 2
#>
#> [[2]]
#> [1] 3 4# run simulation
res_sy <- hsim(h_sy, size = 2000, lambda_component0 = matrix(rep(1, 2 * 4), nrow=2))
summary(res_sy)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 N2 mark lambda1 lambda2
#> [1,] 0.000000 0 0 0 4.11567 4.08888
#> [2,] 0.070185 0 1 1 1.84748 1.82069
#> [3,] 0.115018 0 2 1 3.07961 4.14764
#> [4,] 0.202363 0 3 1 2.58595 3.51595
#> [5,] 0.202621 1 3 1 5.57203 8.49177
#> [6,] 0.228158 1 4 1 8.11899 8.76375
#> [7,] 0.275585 1 5 1 6.88016 8.26571
#> [8,] 0.534843 2 5 1 0.80398 0.88186
#> [9,] 0.558298 2 6 1 4.50760 3.09794
#> [10,] 0.621263 2 7 1 3.94368 4.18165
#> [11,] 10.646319 3 7 1 0.11567 0.08888
#> [12,] 10.692853 3 8 1 3.09778 2.00092
#> [13,] 14.367382 4 8 1 0.11567 0.08888
#> [14,] 14.661734 4 9 1 0.31350 0.24844
#> [15,] 14.676306 4 10 1 2.89197 4.47800
#> [16,] 14.749612 4 11 1 2.93772 4.25978
#> [17,] 14.767749 5 11 1 4.99332 7.59096
#> [18,] 14.782096 6 11 1 8.61547 9.10360
#> [19,] 14.786881 7 11 1 12.94070 11.52132
#> [20,] 14.837901 8 11 1 10.38070 8.64495
#> ... with 1980 more rows
#> ------------------------------------------The estimation is based on function arguments param. In
addition, the initial values of the numerical optimization is the
default values specified in param. Note that the same name
arguments are treated as the same parameter. kappa is in
both of mu and beta, but only one
kappa appears in the estimation result.
fit_sy <- hfit(h_sy, inter_arrival=res_sy$inter_arrival,
type=res_sy$type,
lambda_component0 = matrix(rep(1, 2 * 4), nrow=2))
summary(fit_sy)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 40 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -185.6958
#> 6 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> theta_p 0.13479 0.01701 7.926 2.26e-15 ***
#> theta_n 0.21716 0.01753 12.388 < 2e-16 ***
#> kappa 0.18762 0.03384 5.544 2.95e-08 ***
#> eta 4.94486 0.22840 21.650 < 2e-16 ***
#> nu 3.26335 0.17484 18.664 < 2e-16 ***
#> beta 13.24212 NaN NaN NaN
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------The following family of extended multi-variate marked Hawkes models are implemented:
\[ \lambda(t) = \mu + \int_{(-\infty,t)\times E} h(t, u, z)M(du \times dz) \]
where the kernel \(h\) is represented by
\[ h(t, u, z) = (\alpha + g(t, z))\Gamma(t), \]
and
\(\alpha\) is a constant matrix,
\(g(t, z)\) is additional impacts on intensities, which may depend on mark, or any information generated by underlying processes,
\(\Gamma(t)\) is exponential decaying matrix such that \(\Gamma_{ij}(t) = e^{-\beta_{ij}(t)}\),
\(M\) denotes the random measures defined on the product of time and mark spaces.
In the linear impact model,
\[ g(t, z) = \eta (z-1). \]
impact represents \(\Psi(z)\), the impact of mark on future
intensity. It is a function, and the first argument is
param represents the parameter of the model.
impact() function can have additional arguments related to
the model specification or generated path, such as n,
mark, etc. Do not miss ... as the ellipsis is
omitted, an error occurs. rmark() is a function that
generate marks for simulation.
mu <- matrix(c(0.15, 0.15), nrow=2)
alpha <- matrix(c(0.75, 0.6, 0.6, 0.75), nrow=2, byrow=T)
beta <- matrix(c(2.6, 2.6, 2.6, 2.6), nrow=2)
rmark <- function(param = c(p=0.65), ...){
rgeom(1, p=param[1]) + 1
}
impact <- function(param = c(eta1=0.2), alpha, n, mark, ...){
ma <- matrix(rep(mark[n]-1, 4), nrow = 2)
ma * matrix( rep(param["eta1"], 4), nrow=2)
}
hi <- new("hspec", mu=mu, alpha=alpha, beta=beta,
rmark = rmark,
impact=impact)
hi
#> An object of class "hsepc" of 2-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.15
#> [2,] 0.15
#>
#> Slot alpha:
#> [,1] [,2]
#> [1,] 0.75 0.60
#> [2,] 0.60 0.75
#>
#> Slot beta:
#> [,1] [,2]
#> [1,] 2.6 2.6
#> [2,] 2.6 2.6
#>
#> Slot impact:
#> function(param = c(eta1=0.2), alpha, n, mark, ...){
#> ma <- matrix(rep(mark[n]-1, 4), nrow = 2)
#> ma * matrix( rep(param["eta1"], 4), nrow=2)
#> }
#>
#> Slot rmark:
#> function(param = c(p=0.65), ...){
#> rgeom(1, p=param[1]) + 1
#> }
res_impact <- hsim(hi, size=1000, lambda_component0 = matrix(rep(0.1,4), nrow=2))
summary(res_impact)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 N2 mark lambda1 lambda2
#> [1,] 0.000000 0 0 0 0.35000 0.35000
#> [2,] 0.057871 0 1 1 0.32206 0.32206
#> [3,] 1.285922 0 2 4 0.18169 0.18785
#> [4,] 1.341407 0 3 1 1.21623 1.35141
#> [5,] 1.754653 1 3 1 0.71900 0.81639
#> [6,] 13.225292 1 4 2 0.15000 0.15000
#> [7,] 14.102382 2 4 1 0.23179 0.24713
#> [8,] 14.236517 3 4 1 0.73689 0.64187
#> [9,] 14.612964 3 5 1 0.65237 0.56030
#> [10,] 16.448581 3 6 2 0.15932 0.15981
#> [11,] 16.652090 3 7 1 0.62679 0.71545
#> [12,] 16.948788 3 8 1 0.64786 0.75821
#> [13,] 17.530604 4 8 1 0.39187 0.44923
#> [14,] 17.581394 4 9 3 1.01917 0.93799
#> [15,] 18.009144 5 9 1 0.76468 0.78731
#> [16,] 18.279468 6 9 2 0.82576 0.76269
#> [17,] 18.527888 7 9 1 1.00221 0.89052
#> [18,] 19.961005 7 10 1 0.18859 0.18229
#> [19,] 23.389848 7 11 2 0.15009 0.15011
#> [20,] 24.332375 7 12 1 0.21900 0.23194
#> ... with 980 more rows
#> ------------------------------------------fit <- hfit(hi,
inter_arrival = res_impact$inter_arrival,
type = res_impact$type,
mark = res_impact$mark,
lambda_component0 = matrix(rep(0.1,4), nrow=2))
summary(fit)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 38 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1347.967
#> 5 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.15764 0.01070 14.730 < 2e-16 ***
#> alpha1.1 0.76060 0.08909 8.538 < 2e-16 ***
#> alpha1.2 0.51457 0.07843 6.561 5.36e-11 ***
#> beta1.1 2.38183 0.20207 11.787 < 2e-16 ***
#> eta1 0.19451 0.06697 2.904 0.00368 **
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------For a special case of linear impact function, the following
implementation is recommended. In a marked Hawkes model, the additional
linear impact can be represented by slot eta. In this
model, the intensity process is
\[ \lambda(t) = \mu + \int_{(-\infty, t)\times E} (\alpha + \eta (z-1)) e^{-\beta(t-u)} M(dt \times dz). \]
rmark <- function(param = c(p=0.65), ...){
rgeom(1, p=param[1]) + 1
}
h <- new("hspec", mu=0.15, alpha=0.7, beta=1.6, eta=0.3,
rmark = rmark)
h
#> An object of class "hsepc" of 1-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.15
#>
#> Slot alpha:
#> [,1]
#> [1,] 0.7
#>
#> Slot beta:
#> [,1]
#> [1,] 1.6
#>
#> Slot eta:
#> [,1]
#> [1,] 0.3
#>
#> Slot rmark:
#> function(param = c(p=0.65), ...){
#> rgeom(1, p=param[1]) + 1
#> }res <- hsim(h, size = 1000)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for simulation.
summary(res)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 mark lambda1
#> [1,] 0.0000 0 0 0.20833
#> [2,] 4.5365 1 1 0.15004
#> [3,] 4.9423 2 2 0.51573
#> [4,] 5.1798 3 2 1.08405
#> [5,] 11.7006 4 1 0.15006
#> [6,] 14.7204 5 1 0.15558
#> [7,] 14.8475 6 1 0.72582
#> [8,] 15.2601 7 2 0.80928
#> [9,] 15.3169 8 1 1.66509
#> [10,] 15.4846 9 2 1.84381
#> [11,] 15.5771 10 1 2.47337
#> [12,] 15.5999 11 2 3.06498
#> [13,] 15.7263 12 1 3.34829
#> [14,] 16.2462 13 2 1.84656
#> [15,] 16.8126 14 2 1.23949
#> [16,] 23.9730 15 1 0.15002
#> [17,] 33.8192 16 2 0.15000
#> [18,] 34.6933 17 1 0.39695
#> [19,] 34.7530 18 1 1.01069
#> [20,] 35.0490 19 1 1.12199
#> ... with 980 more rows
#> ------------------------------------------fit <- hfit(h,
inter_arrival = res$inter_arrival,
type = res$type,
mark = res$mark)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
summary(fit)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 39 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1757.824
#> 4 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.147779 0.008233 17.950 < 2e-16 ***
#> alpha1 0.627044 0.065366 9.593 < 2e-16 ***
#> beta1 1.589530 0.125852 12.630 < 2e-16 ***
#> eta1 0.349112 0.069626 5.014 5.33e-07 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------If you want to estimate the mark distribution also, then
dmark slot that describes the density function of mark is
required.
h_md <- h
h_md@dmark <- function(param = c(p = 0.1), n=n, mark=mark, ...){
dgeom(mark[n] - 1, prob = param["p"])
}
mle_md <- hfit(h_md,
inter_arrival = res$inter_arrival, type = res$type, mark = res$mark)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
summary(mle_md)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 41 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -2778.854
#> 5 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.147779 0.008242 17.929 < 2e-16 ***
#> alpha1 0.627045 0.065566 9.564 < 2e-16 ***
#> beta1 1.589534 0.128177 12.401 < 2e-16 ***
#> eta1 0.349112 0.070261 4.969 6.74e-07 ***
#> p 0.639565 0.012128 52.734 < 2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------The function \(g\) is not necessarily depend on mark. In the Hawkes flocking model, the kernel component is represented by\[ \alpha = \begin{bmatrix}\alpha_{11} & \alpha_{12} & 0 & 0 \\\alpha_{12}& \alpha_{11} & 0 & 0 \\0 & 0 & \alpha_{33} & \alpha_{34} \\0 & 0 & \alpha_{34} & \alpha_{33} \end{bmatrix}, \] \[ g = \begin{bmatrix} 0 & 0 & \alpha_{1w} 1_{\{C_1(t) < C_2(t)\}} & \alpha_{1n} 1_{\{C_1(t) < C_2(t)\}} \\ 0 & 0 & \alpha_{1n} 1_{\{C_1(t) > C_2(t)\}} & \alpha_{1w}1_{\{C_1(t) > C_2(t)\}} \\ \alpha_{2w} 1_{\{C_2(t) < C_1(t)\}} & \alpha_{2n}1_{\{C_2(t) < C_1(t)\}} & 0 & 0 \\ \alpha_{2n} 1_{\{C_2(t) > C_1(t)\}} & \alpha_{2w}1_{\{C_2(t) > C_1(t)\}} & 0 & 0 \end{bmatrix}, \]
where\[ C_1(t) = N_1(t) - N_2(t), \quad C_2(t) = N_3(t) - N_4(t). \]
In the basic model, alpha is a matrix, but it can be a
function as in the following code. The function alpha
simply return a \(4\times4\) matrix but
by doing so, we can fix some of elements as specific vales when
estimating. When estimating, the optimization is only applied for the
specified parameters in the argument param. In the case of
simulation, there is no difference whether the parameter set is
represented by a matrix or a function.
mu <- matrix(c(0.02, 0.02, 0.04, 0.04), nrow = 4)
alpha <- function(param = c(alpha11 = 0.2, alpha12 = 0.3, alpha33 = 0.3, alpha34 = 0.4)){
matrix(c(param["alpha11"], param["alpha12"], 0, 0,
param["alpha12"], param["alpha11"], 0, 0,
0, 0, param["alpha33"], param["alpha34"],
0, 0, param["alpha34"], param["alpha33"]), nrow = 4, byrow = TRUE)
}
beta <- matrix(c(rep(0.7, 8), rep(1.1, 8)), nrow = 4, byrow = TRUE)impact() function is little bit complicated, but it is
nothing more than expressing the definition of the model to an R
function. Note that we specify N=N, n=n in the argument.
N is for counting process \(N\) and n denotes the time
step. Both are needed to implement the function body and it is required
to specify in the argument. … also should not be
omitted.
impact <- function(param = c(alpha1n=0.25, alpha1w=0.1, alpha2n=0.1, alpha2w=0.2),
N=N, n=n, ...){
Psi <- matrix(c(0, 0, param['alpha1w'], param['alpha1n'],
0, 0, param['alpha1n'], param['alpha1w'],
param['alpha2w'], param['alpha2n'], 0, 0,
param['alpha2n'], param['alpha2w'], 0, 0), nrow=4, byrow=TRUE)
ind <- N[,"N1"][n] - N[,"N2"][n] > N[,"N3"][n] - N[,"N4"][n]
km <- matrix(c(!ind, !ind, !ind, !ind,
ind, ind, ind, ind,
ind, ind, ind, ind,
!ind, !ind, !ind, !ind), nrow = 4, byrow = TRUE)
km * Psi
}
hspec_fl <- new("hspec",
mu = mu, alpha = alpha, beta = beta, impact = impact)
hspec_fl
#> An object of class "hsepc" of 4-dimensional Hawkes process
#>
#> Slot mu:
#> [,1]
#> [1,] 0.02
#> [2,] 0.02
#> [3,] 0.04
#> [4,] 0.04
#>
#> Slot alpha:
#> function(param = c(alpha11 = 0.2, alpha12 = 0.3, alpha33 = 0.3, alpha34 = 0.4)){
#> matrix(c(param["alpha11"], param["alpha12"], 0, 0,
#> param["alpha12"], param["alpha11"], 0, 0,
#> 0, 0, param["alpha33"], param["alpha34"],
#> 0, 0, param["alpha34"], param["alpha33"]), nrow = 4, byrow = TRUE)
#> }
#> <bytecode: 0x0000022e47ef8698>
#>
#> Slot beta:
#> [,1] [,2] [,3] [,4]
#> [1,] 0.7 0.7 0.7 0.7
#> [2,] 0.7 0.7 0.7 0.7
#> [3,] 1.1 1.1 1.1 1.1
#> [4,] 1.1 1.1 1.1 1.1
#>
#> Slot impact:
#> function(param = c(alpha1n=0.25, alpha1w=0.1, alpha2n=0.1, alpha2w=0.2),
#> N=N, n=n, ...){
#>
#> Psi <- matrix(c(0, 0, param['alpha1w'], param['alpha1n'],
#> 0, 0, param['alpha1n'], param['alpha1w'],
#> param['alpha2w'], param['alpha2n'], 0, 0,
#> param['alpha2n'], param['alpha2w'], 0, 0), nrow=4, byrow=TRUE)
#>
#> ind <- N[,"N1"][n] - N[,"N2"][n] > N[,"N3"][n] - N[,"N4"][n]
#>
#> km <- matrix(c(!ind, !ind, !ind, !ind,
#> ind, ind, ind, ind,
#> ind, ind, ind, ind,
#> !ind, !ind, !ind, !ind), nrow = 4, byrow = TRUE)
#>
#> km * Psi
#> }hr_fl <- hsim(hspec_fl, size=1000)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for simulation.
summary(hr_fl)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 N2 N3 N4 mark lambda1 lambda2 lambda3 lambda4
#> [1,] 0.0000 0 0 0 0 0 0.070000 0.070000 0.110000 0.110000
#> [2,] 1.2793 0 0 0 1 1 0.040420 0.040420 0.057137 0.057137
#> [3,] 2.2434 0 0 0 2 1 0.030398 0.081322 0.184452 0.149822
#> [4,] 4.7739 0 1 0 2 1 0.021769 0.047441 0.073657 0.065335
#> [5,] 4.9708 0 1 1 2 1 0.282922 0.218163 0.147633 0.060402
#> [6,] 5.4371 0 2 1 2 1 0.281836 0.162968 0.284044 0.291688
#> [7,] 5.7018 1 2 1 2 1 0.486830 0.304972 0.222408 0.377610
#> [8,] 6.2979 2 2 1 2 1 0.459340 0.405408 0.134684 0.267155
#> [9,] 6.6156 2 3 1 2 1 0.531848 0.568730 0.247765 0.200153
#> [10,] 7.2575 2 3 2 2 1 0.537990 0.497718 0.142542 0.217754
#> [11,] 10.0636 2 4 2 2 1 0.106678 0.087004 0.058377 0.066375
#> [12,] 10.0711 3 4 2 2 1 0.404668 0.285616 0.058227 0.264529
#> [13,] 11.1695 3 4 2 3 1 0.291006 0.282175 0.045445 0.136941
#> [14,] 12.0410 3 4 3 3 1 0.303070 0.162444 0.195448 0.192187
#> [15,] 12.0956 3 4 4 3 1 0.388705 0.157102 0.468898 0.559999
#> [16,] 12.2291 3 4 4 4 1 0.446904 0.144875 0.669383 0.834393
#> [17,] 12.4804 3 4 4 5 1 0.587698 0.124728 0.820735 0.870042
#> [18,] 12.5662 3 5 4 5 1 0.790039 0.118624 1.114410 1.068281
#> [19,] 12.6038 3 5 5 5 1 1.062283 0.310878 1.070940 1.218586
#> [20,] 12.8947 3 6 5 5 1 0.951807 0.257281 1.006428 1.186250
#> ... with 980 more rows
#> ------------------------------------------fit_fl <- hfit(hspec_fl, hr_fl$inter_arrival, hr_fl$type)
#> The initial values for intensity processes are not provided. Internally determined initial values are used for estimation.
summary(fit_fl)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 89 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1688.599
#> 12 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.014249 0.003779 3.771 0.000163 ***
#> mu3 0.038145 0.005432 7.022 2.19e-12 ***
#> alpha11 0.164235 0.034455 4.767 1.87e-06 ***
#> alpha12 0.256936 0.037036 6.937 3.99e-12 ***
#> alpha33 0.259345 0.048438 5.354 8.60e-08 ***
#> alpha34 0.475611 0.061466 7.738 1.01e-14 ***
#> beta1.1 0.589374 0.059217 9.953 < 2e-16 ***
#> beta3.1 1.062674 0.102009 10.417 < 2e-16 ***
#> alpha1n 0.171924 0.045805 3.753 0.000174 ***
#> alpha1w 0.100048 0.031493 3.177 0.001489 **
#> alpha2n 0.109703 0.057208 1.918 0.055160 .
#> alpha2w 0.160902 0.050062 3.214 0.001309 **
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------In this model, we use a system of counting processes with the corresponding conditional intensities to describe the bid-ask price processes:
\[ N_t = \begin{bmatrix} N_1(t) \\ N_2(t) \\ N_3(t) \\ N_4(t) \end{bmatrix}, \quad \lambda_t = \begin{bmatrix} \lambda_1(t) \\ \lambda_2(t) \\ \lambda_3(t) \\ \lambda_4(t) \end{bmatrix} \]
The ask price process \(N_1(t) - N_2(t)\) and the bid price process is \(N_3(t) - N_4(t)\). The mid price process is \(p(t) = N_1(t) + N_3(t) - N_2(t) - N_4(t)\) plus initial mid price level.
The base intensity process is
\[\mu = \begin{bmatrix} \mu_1 \\ \zeta \ell(t-) \\ \zeta \ell(t-) \\ \mu_1 \end{bmatrix}, \quad \ell(t) = \frac{L(t)}{p(t)} \]
where \(L(t) \in \{ 0, 1, 2, \cdots
\}\) is the absolute level of the bid-ask spread with \(L(t)=0\) implying the minimum level. Note
that in the following code of the definition of mu,
n is needed to represent time \(t\) and Nc is needed to
calculate the level and mid price.
# presumed initial bid and ask prices
initial_ask_price <- 1250 #cents
initial_bid_price <- 1150 #cents
initial_level <- round((initial_ask_price - initial_bid_price) - 1)
initial_mid_price <- (initial_bid_price + initial_ask_price) / 2
mu <- function(param = c(mu1 = 0.08, zeta1 = 0.10), n=n, Nc=Nc, ...){
if(n == 1){
level <- initial_level
mid <- initial_mid_price
} else {
level <- Nc[n-1,1] - Nc[n-1,2] - (Nc[n-1,3] - Nc[n-1,4]) + initial_level
ask <- initial_ask_price + (Nc[n-1,1] - Nc[n-1,2])
bid <- initial_bid_price + (Nc[n-1,3] - Nc[n-1,4])
mid <- (ask + bid) / 2
}
if(level <= 0){
matrix(c(param["mu1"], 0,
0, param["mu1"]), nrow = 4)
} else {
matrix(c(param["mu1"], param["zeta1"] * level / mid,
param["zeta1"]*level / mid, param["mu1"]), nrow = 4)
}
}In addition, the kernel is represented by
\[h(t, u) = \begin{bmatrix} \alpha_{s1} & \alpha_{m} & \alpha_{s2} & 0 \\ \alpha_{w1} & \alpha_{n1}(u) & \alpha_{n1}(u) & \alpha_{w2} \\ \alpha_{w2} & \alpha_{n2}(u) & \alpha_{n2}(u) & \alpha_{w1} \\ 0 & \alpha_{s2} & \alpha_{m} & \alpha_{s1} \\ \end{bmatrix}, \]
where
\[ \alpha_{n1}(u) = - \sum_{j=1}^4 \lambda_{2j}(u) + \xi \ell(u), \quad \alpha_{n2}(u) = - \sum_{j=1}^4 \lambda_{3j}(u) + \xi \ell(u), \]
for constant \(\xi \geq 0\) and \(\lambda_{ij}\) is a component of \(\lambda_i\) such that
\[\lambda_{ij}(t) = \int_{-\infty}^t h_{ij}(t, u) d N_j(u).\]
In the following code, we separate the constant part of \(h\) as alpha and stochastic
part as impact. To represent \(\lambda_{ij}\), we need
lambda_component_n. Note that
alpha <- function(param = c(alpha_s1=4, alpha_m=26, alpha_s2=5,
alpha_w1=11, alpha_w2=7)){
matrix(c(param["alpha_s1"], param["alpha_m"], param["alpha_s2"], 0,
param["alpha_w1"], 0, 0, param["alpha_w2"],
param["alpha_w2"], 0, 0, param["alpha_w1"],
0, param["alpha_s2"], param["alpha_m"], param["alpha_s1"]), nrow = 4, byrow = TRUE)
}
impact <- function(param = c(xi = 2.7), n=n, Nc=Nc, lambda_component = lambda_component, ... ){
if(n == 1){
level <- initial_level
# mid <- initial_mid_price
} else {
level <- Nc[n,1] - Nc[n,2] - (Nc[n,3] - Nc[n,4]) + initial_level
ask <- initial_ask_price + (Nc[n,1] - Nc[n,2])
bid <- initial_bid_price + (Nc[n,3] - Nc[n,4])
mid <- (ask + bid)/2
}
lambda_component_matrix <- matrix(lambda_component[n, ], nrow=4, byrow=TRUE)
l2 <- sum(lambda_component_matrix[2,]) # sum of second row
l3 <- sum(lambda_component_matrix[3,]) # sum of third row
im <- matrix(c(0, 0, 0, 0,
0, -l2 + param["xi"]*level/mid, -l2 + param["xi"]*level/mid, 0,
0, -l3 + param["xi"]*level/mid, -l3 + param["xi"]*level/mid, 0,
0, 0, 0, 0), nrow = 4, byrow = TRUE)
}
beta <- matrix(rep(50, 16), nrow = 4, byrow=TRUE)
rmark <- function(n=n, Nc=Nc, type, ...){
if(n == 1){
level <- initial_level
} else {
level <- Nc[n-1,1] - Nc[n-1,2] - (Nc[n-1,3] - Nc[n-1,4]) + initial_level
}
if (type[n] == 2 | type[n] == 3){
min(level, rgeom(1, p=0.65) + 1)
} else {
rgeom(1, p=0.65) + 1
}
}
h_ba <- new("hspec", mu = mu, alpha = alpha, beta = beta, impact=impact, rmark = rmark)
h_ba
#> An object of class "hsepc" of 4-dimensional Hawkes process
#>
#> Slot mu:
#> function(param = c(mu1 = 0.08, zeta1 = 0.10), n=n, Nc=Nc, ...){
#>
#> if(n == 1){
#>
#> level <- initial_level
#> mid <- initial_mid_price
#>
#> } else {
#>
#> level <- Nc[n-1,1] - Nc[n-1,2] - (Nc[n-1,3] - Nc[n-1,4]) + initial_level
#> ask <- initial_ask_price + (Nc[n-1,1] - Nc[n-1,2])
#> bid <- initial_bid_price + (Nc[n-1,3] - Nc[n-1,4])
#> mid <- (ask + bid) / 2
#>
#> }
#>
#> if(level <= 0){
#> matrix(c(param["mu1"], 0,
#> 0, param["mu1"]), nrow = 4)
#> } else {
#> matrix(c(param["mu1"], param["zeta1"] * level / mid,
#> param["zeta1"]*level / mid, param["mu1"]), nrow = 4)
#>
#> }
#>
#> }
#>
#> Slot alpha:
#> function(param = c(alpha_s1=4, alpha_m=26, alpha_s2=5,
#> alpha_w1=11, alpha_w2=7)){
#> matrix(c(param["alpha_s1"], param["alpha_m"], param["alpha_s2"], 0,
#> param["alpha_w1"], 0, 0, param["alpha_w2"],
#> param["alpha_w2"], 0, 0, param["alpha_w1"],
#> 0, param["alpha_s2"], param["alpha_m"], param["alpha_s1"]), nrow = 4, byrow = TRUE)
#> }
#> <bytecode: 0x0000022e47c25848>
#>
#> Slot beta:
#> [,1] [,2] [,3] [,4]
#> [1,] 50 50 50 50
#> [2,] 50 50 50 50
#> [3,] 50 50 50 50
#> [4,] 50 50 50 50
#>
#> Slot impact:
#> function(param = c(xi = 2.7), n=n, Nc=Nc, lambda_component = lambda_component, ... ){
#> if(n == 1){
#> level <- initial_level
#> # mid <- initial_mid_price
#> } else {
#> level <- Nc[n,1] - Nc[n,2] - (Nc[n,3] - Nc[n,4]) + initial_level
#> ask <- initial_ask_price + (Nc[n,1] - Nc[n,2])
#> bid <- initial_bid_price + (Nc[n,3] - Nc[n,4])
#> mid <- (ask + bid)/2
#> }
#>
#> lambda_component_matrix <- matrix(lambda_component[n, ], nrow=4, byrow=TRUE)
#>
#> l2 <- sum(lambda_component_matrix[2,]) # sum of second row
#> l3 <- sum(lambda_component_matrix[3,]) # sum of third row
#>
#> im <- matrix(c(0, 0, 0, 0,
#> 0, -l2 + param["xi"]*level/mid, -l2 + param["xi"]*level/mid, 0,
#> 0, -l3 + param["xi"]*level/mid, -l3 + param["xi"]*level/mid, 0,
#> 0, 0, 0, 0), nrow = 4, byrow = TRUE)
#>
#> }
#>
#> Slot rmark:
#> function(n=n, Nc=Nc, type, ...){
#> if(n == 1){
#> level <- initial_level
#> } else {
#> level <- Nc[n-1,1] - Nc[n-1,2] - (Nc[n-1,3] - Nc[n-1,4]) + initial_level
#> }
#> if (type[n] == 2 | type[n] == 3){
#> min(level, rgeom(1, p=0.65) + 1)
#> } else {
#> rgeom(1, p=0.65) + 1
#> }
#> }hr_ba <- hsim(h_ba, size=1000, lambda_component0 = matrix(rep(1, 16), 4))
summary(hr_ba)
#> ------------------------------------------
#> Simulation result of marked Hawkes model.
#> Realized path :
#> arrival N1 N2 N3 N4 mark lambda1 lambda2 lambda3 lambda4
#> [1,] 0.000000 0 0 0 0 0 4.08000 4.0082500 4.0082500 4.080000
#> [2,] 0.071944 0 0 1 0 1 0.18960 0.1178535 0.1178535 0.189604
#> [3,] 0.083521 1 0 1 0 2 2.94409 0.1317088 0.1317088 14.715239
#> [4,] 0.105149 1 1 1 0 1 2.40776 3.7805504 2.4240665 5.043116
#> [5,] 7.936156 2 1 1 0 5 0.08000 0.0082431 0.0082431 0.080000
#> [6,] 7.948085 2 1 2 0 1 2.28302 6.0669434 3.8639245 0.080000
#> [7,] 7.953389 2 1 2 1 1 5.60512 0.1857295 0.1857295 20.023463
#> [8,] 7.968243 2 1 2 2 1 2.70901 3.4237505 5.3270672 11.472998
#> [9,] 14.539107 2 1 2 3 3 0.08000 0.0087282 0.0087282 0.080000
#> [10,] 18.537488 3 1 2 3 3 0.08000 0.0089888 0.0089888 0.080000
#> [11,] 18.599612 3 1 3 3 1 0.25908 0.5016981 0.3226176 0.080000
#> [12,] 28.348531 3 1 3 4 1 0.08000 0.0091400 0.0091400 0.080000
#> [13,] 28.697134 3 1 3 5 1 0.08000 0.0092271 0.0092272 0.080000
#> [14,] 38.176858 3 1 3 6 1 0.08000 0.0093139 0.0093139 0.080000
#> [15,] 38.460698 4 1 3 6 4 0.08000 0.0094058 0.0094085 0.080003
#> [16,] 65.653042 5 1 3 6 3 0.08000 0.0097176 0.0097176 0.080000
#> [17,] 65.671917 6 1 3 6 1 1.63666 4.2907779 2.7341148 0.080000
#> [18,] 65.686104 6 2 3 6 2 2.81376 7.5278716 4.7941121 0.080000
#> [19,] 75.299572 7 2 3 6 3 0.08000 0.0098755 0.0098755 0.080000
#> [20,] 75.329555 8 2 3 6 1 0.97328 2.4666315 1.5733516 0.080000
#> ... with 980 more rows
#> ------------------------------------------As a separate log-likelihood estimation performed, the parameter for mark distribution is not estimated.
mle_ba <- hfit(h_ba, inter_arrival = hr_ba$inter_arrival, type = hr_ba$type,
lambda_component0 = matrix(rep(1, 16), 4))
summary(mle_ba)
#> --------------------------------------------
#> Maximum Likelihood estimation
#> BFGS maximization, 35 iterations
#> Return code 0: successful convergence
#> Log-Likelihood: -1636.853
#> 9 free parameters
#> Estimates:
#> Estimate Std. error t value Pr(> t)
#> mu1 0.080464 0.004102 19.618 < 2e-16 ***
#> zeta1 0.144347 0.011955 12.074 < 2e-16 ***
#> alpha_s1 4.009503 NaN NaN NaN
#> alpha_m 26.413030 0.319883 82.571 < 2e-16 ***
#> alpha_s2 3.530883 0.378310 9.333 < 2e-16 ***
#> alpha_w1 11.647698 NaN NaN NaN
#> alpha_w2 7.509122 0.954276 7.869 3.58e-15 ***
#> beta1.1 51.534095 NaN NaN NaN
#> xi 4.057684 NaN NaN NaN
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> --------------------------------------------