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SaMUraiS
StAtistical Models for the UnsupeRvised segmentAion of tIme-SeriesHMMR
Hidden Markov Model Regression (HMMR) for time-series segmentationMHMMR
Joint segmentation of multivariate time series with a Multiple Hidden Markov Model Regression (MHMMR)MEteorits
Mixtures-of-ExperTs modEling for cOmplex and non-noRmal dIsTributionStMoE_m
Robust Mixtures-of-Experts modelling using the t distribution for clustering and non-linear regression for heteregenous datamixRHLP_py
A flexible mixture model for simultaneous clustering and segmentation of functional data (time series). It uses the EM algorithm (or a CEM-like algorithm).mixHMMR_m
Clustering and segmentation of heterogeneous functional data (sequential data) with regime changes by mixture of Hidden Markov Model Regressions (MixFHMMR) and the EM algorithmStMoE
Robust modeling, density estimation and model-based clustering of heterogeneous regression data with possibly skewed and non-normal distributions using skew-t mixture of experts.PWR_m
Piecewise regression (PWR) for the optimal segmentation of time-series with regime changesRHLP_m
User-friendly and flexible algorithm for time-series segmentation by a Regression model with a Hidden Logistic Process (RHLP).mixRHLP
A flexible mixture model for simultaneous clustering and segmentation of functional data (time series). It uses the EM algorithm (or a CEM-like algorithm).MHMMR_m
Joint segmentation of multivariate time-series with a Multiple Hidden Markov Model Regression (MHMMR)mixHMMR
Clustering and segmentation of time series with regime changes by mixture of Hidden Markov Model Regressions (MixFHMMR) and the EM algorithmmixHMM
Clustering and segmentation of time series by mixture of gaussian Hidden Markov Models (MixFHMMs) and the EM algorithmMixRHLP_m
Flexible Mixture modelling for simultaneous clustering and segmentation of heterogeneous functional dataSNMoE_m
Skew-Normal Mixture-of-Experts: A toolbox for Non-Linear Regression and Clustering using some non-normal mixtures of expertstMoE
Robust Mixtures-of-Experts for Non-Linear Regression and ClusteringDECT-CLUST
DECT-CLUST: DECT image clustering and application to HNSCC tumor segmentationPWR_R
Piecewise Regression (PWR) for Optimal Time Series SegmentationHMMR_r
Hidden Markov Model Regression (HMMR) for Times Series SegmentationmixHMM_m
Clustering and segmentation of heteregeneous functional data (sequential data) by mixture of gaussian Hidden Markov Models (MixFHMMs) and the EM algorithmMRHLP
Joint segmentation of multivariate time series with a Multiple Regression model with a Hidden Logistic Process (MRHLP).StMoE_m
Toolbox for the Skew-t mixture of experts (StMoE) modelSNMoE
Skew-Normal Mixture-of-Experts: A toolbox for Non-Linear Regression and Clustering using some non-normal mixtures of expertsMRHLP_m
Joint segmentation of multivariate time-series with a Multiple Regression model with a Hidden Logistic Process (MRHLP).RHLP
User-freindly and flexible algorithm for time series segmentation by a Regression model with a Hidden Logistic Process (RHLP).Love Open Source and this site? Check out how you can help us