Tools for Handling Extraction of Features from Time Series


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Documentation for package ‘theft’ version 0.8.1

Help Pages

calculate_features Compute features on an input time series dataset
check_vector_quality Check for presence of NAs and non-numerics in a vector
feature_list All features available in theft in tidy format
init_theft Communicate to R the Python virtual environment containing the relevant libraries for calculating features
install_kats Download and install Kats from Python into a new virtual environment
install_python_pkgs Download and install tsfresh, TSFEL, and Kats from Python into a new virtual environment
install_tsfel Download and install TSFEL from Python into a new virtual environment
install_tsfresh Download and install tsfresh from Python into a new virtual environment
process_hctsa_file Load in hctsa formatted MATLAB files of time series data into a tidy format ready for feature extraction
simData Sample of randomly-generated time series to produce function tests and vignettes
theft Tools for Handling Extraction of Features from Time-series