| compress | Compresses a data matrix based on mutual information (segregation) |
| dissimilarity | Calculates Index of Dissimilarity |
| dissimilarity_expected | Calculates expected values when true segregation is zero |
| entropy | Calculates the entropy of a distribution |
| exposure | Calculates pairwise exposure indices |
| get_crosswalk | Create crosswalk after compression |
| ipf | Adjustment of marginal distributions using iterative proportional fitting |
| isolation | Calculates isolation indices |
| matrix_to_long | Turns a contingency table into long format |
| merge_units | Creates a compressed dataset |
| mutual_difference | Decomposes the difference between two M indices |
| mutual_expected | Calculates expected values when true segregation is zero |
| mutual_local | Calculates local segregation scores based on M |
| mutual_total | Calculates the Mutual Information Index M and Theil's Entropy Index H |
| mutual_total_nested | Calculates a nested decomposition of segregation for M and H |
| mutual_within | Calculates detailed within-category segregation scores for M and H |
| schools00 | Ethnic/racial composition of schools for 2000/2001 |
| schools05 | Ethnic/racial composition of schools for 2005/2006 |
| school_ses | Student-level data including SES status |
| scree_plot | Scree plot for segregation compression |
| segcurve | A visual representation of two-group segregation |
| segplot | A visual representation of segregation |