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CHANGELOG.md

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Changelog

All notable changes to this project will be documented in this file.

The format is based on Keep a Changelog, and this project adheres to Semantic Versioning.

Changelogs for this project are recorded in this file since v0.2.0.

[Towards v0.6]

[v0.5.3]

Changed

  • Support for macOS-10.15 is replaced by support for macOS-12
  • Support for scikit-learn 0.23 is replaced by support for scikit-learn 1.0
  • Specify supported TensorFlow version (2.9.0)

Added

  • Support for Python versions 3.9 and 3.10

Fixed

  • Fixed a bug about result of path in lcss_path_from_metric function
  • Fixed incompatibilities between NumPy, TensorFlow and scikit-learn versions
  • Fixed a bug preventing tslearn installation by removing the NumPy version constraint (<=1.19) in the file pyproject.toml

Removed

  • Cython is now replaced by Numba
  • Support for Python versions 3.5 and 3.6 is dropped

[v0.5.2]

Changed

  • In docs, change references to master branch to main branch.

[v0.5.0]

Changed

  • Code refactoring to have all subpackages in subfolders
  • Improved warnings in datasets loading
  • shapelets module is now compatible with tensorflow 2.4

Added

  • Added canonical time warping (ctw and ctw_path)
  • soft_dtw_alignment provides soft alignment path for soft-dtw
  • lcss is a similarity measure based on the longest common subsequence
  • lcss_path_from_metric allows one to pick a dedicated ground metric on top of which the LCSS algorithm can be run

Fixed

  • numpy array hyper-parameters can now be serialized using to_*() methods
  • avoid DivisionByZero in MinMaxScaler
  • Fixed incompatibilities with scikit-learn 0.24

[v0.4.0]

Changed

  • k-means initialization function within clustering/kmeans.py updated to be compatible with scikit-learn 0.24
  • Better initialization schemes for TimeSeriesKMeans that lead to more consistent clustering runs (helps avoid empty cluster situations)
  • TimeSeriesScalerMeanVariance and TimeSeriesScalerMinMax are now completely sklearn-compliant
  • The shapelets module now requires tensorflow>=2 as dependency (was keras tensorflow==1.* up to version 0.3)
  • GlobalAlignmentKernelKMeans is deprecated in favor of KernelKMeans that accepts various kernels (and "gak" is the default)
  • ShapeletModel is now called LearningShapelets to be more explicit about which shapelet-based classifier is implemented. ShapeletModel is still available as an alias, but is now considered part of the private API

Added

  • Python 3.8 support
  • dtw_path_from_metric allows one to pick a dedicated ground metric on top of which the DTW algorithm can be run
  • Nearest Neighbors on SAX representation (with custom distance)
  • Calculate pairwise distance matrix between SAX representations
  • PiecewiseAggregateApproximation can now handle variable lengths
  • ShapeletModel is now serializable to JSON and pickle formats
  • Multivariate datasets from the UCR/UEA archive are now available through UCR_UEA_datasets().load_dataset(...)
  • ShapeletModel now accepts variable-length time series dataset; a max_size parameter has been introduced to save room at fit time for possibly longer series to be fed to the model afterwards
  • ShapeletModel now accepts a scale parameter that drives time series pre-processing for better convergence
  • ShapeletModel now has a public history_ attribute that stores loss and accuracy along fit epochs
  • SAX and variants now accept a scale parameter that drives time series pre-processing to fit the N(0,1) underlying hypothesis for SAX
  • TimeSeriesKMeans now has a transform method that returns distances to centroids
  • A new matrix_profile module is added that allows MatrixProfile to be computed using the stumpy library or using a naive "numpy" implementation.
  • A new early_classification module is added that offers early classification estimators
  • A new neural_network module is added that offers Multi Layer Perceptron estimators for classification and regression

Fixed

  • Estimators that can operate on variable length time series now allow for test time datasets to have a different length from the one that was passed at fit time
  • Bugfix in kneighbors() methods.

Removed

  • Support for Python 2 is dropped

[v0.3.1]

Fixed

  • Fixed a bug in TimeSeriesSVC and TimeSeriesSVR that caused user-input gamma to be ignored (always treated as if it were "auto") for gak kernel

[v0.3.0]

Changed

  • dtw_barycenter_averaging is made faster by using vectorized computations
  • dtw_barycenter_averaging can be restarted several times to reach better local optima using a parameter n_init set to 1 by default
  • Functions load_timeseries_txt and save_timeseries_txt from the utils module have changed their names to load_time_series_txt and save_time_series_txt. Old names can still be used but considered deprecated and removed from the public API documentation for the sake of harmonization
  • Default value for the maximum number of iterations to train ShapeletModel and SerializableShapeletModel is now set to 10,000 (used to be 100)
  • TimeSeriesScalerMeanVariance and TimeSeriesScalerMinMax now ignore any NaNs when calling their respective transform methods in order to better mirror scikit-learn's handling of missing data in preprocessing.
  • KNeighborsTimeSeries now accepts variable-length time series as inputs when used with metrics that can deal with it (eg. DTW)
  • When constrained DTW is used, if the name of the constraint is not given but its parameter is set, that is now considered sufficient to identify the constraint.

Added

  • KNeighborsTimeSeriesRegressor is a new regressor based on k-nearest-neighbors that accepts the same metrics as KNeighborsTimeSeriesClassifier
  • A set_weights method is added to the ShapeletModel and
    SerializableShapeletModel estimators
  • subsequence_path and subsequence_cost_matrix are now part of the public API and properly documented as such with an example use case in which more than one path could be of interest (cf. plot_sdtw.py)
  • verbose levels can be set for all functions / classes that use joblib for parallel computations and joblib levels are used;
  • conversion functions are provided in the utils module to interact with other Python time series packages (pyts, sktime, cesium, seglearn, tsfresh, stumpy, pyflux)
  • dtw_barycenter_averaging_subgradient is now available to compute DTW barycenter based on subgradient descent
  • dtw_limited_warping_length is provided as a way to compute DTW under upper bound constraint on warping path length
  • BaseModelPackage is a base class for serializing models to hdf5, json and pickle. h5py is added to requirements for hdf5 support.
  • BaseModelPackage is used to add serialization functionality to the following models: GlobalAlignmentKernelKMeans, TimeSeriesKMeans, KShape, KNeighborsTimeSeries, KNeighborsTimeSeriesClassifier, PiecewiseAggregateApproximation, SymbolicAggregateApproximation, and OneD_SymbolicAggregateApproximation

[v0.2.4]

Fixed

  • The tests subdirectory is now made a python package and hence included in wheels

[v0.2.2]

Fixed

  • The way version number is retrieved in setup.py was not working properly on Python 3.4 (and made the install script fail), switched back to the previous version

[v0.2.1]

Added

  • A RuntimeWarning is raised when an 'itakura' constraint is set that is unfeasible given the provided shapes.

Fixed

  • 'itakura' and 'sakoe_chiba' were swapped in metrics.compute_mask

[v0.2.0]

Added

  • tslearn estimators are now automatically tested to match sklearn requirements "as much as possible" (cf. tslearn needs in terms of data format, etc.)
  • cdist_dtw and cdist_gak now have a n_jobs parameter to parallelize distance computations using joblib.Parallel
  • n_jobs is also available as a prameter in silhouette_score, TimeSeriesKMeans, KNeighborsTimeSeries, KNeighborsTimeSeriesClassifier, TimeSeriesSVC, TimeSeriesSVR and GlobalAlignmentKernelKMeans

Changed

  • Faster DTW computations using numba
  • tslearn estimators can be used in conjunction with sklearn pipelines and cross-validation tools, even (for those concerned) with variable-length data
  • doctests have been reduced to those necessary for documentation purposes, the other tests being moved to tests/*.py
  • The list of authors for the tslearn bibliographic reference has been updated to include Johann Faouzi and Gilles Van de Wiele
  • In TimeSeriesScalerMinMax, min and max parameters are now deprecated in favor of value_range. Will be removed in v0.4
  • In TimeSeriesKMeans and silhouette_score, 'gamma_sdtw' is now deprecated as a key for metric_params in favor of gamma. Will be removed in v0.4

Removed

  • Barycenter methods implemented as estimators are no longer provided: use dedicated functions from the tslearn.barycenters module instead