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k-Shape: Efficient and Accurate Clustering of Time Series

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k-Shape is a highly accurate and efficient unsupervised method for univariate and multivariate time-series clustering. k-Shape appeared at the ACM SIGMOD 2015 conference, where it was selected as one of the (2) best papers and received the inaugural 2015 ACM SIGMOD Research Highlight Award. An extended version appeared in the ACM TODS 2017 journal. Since then, k-Shape has achieved state-of-the-art performance in both univariate and multivariate time-series datasets (i.e., k-Shape is among the fastest and most accurate time-series clustering methods, ranked in the top positions of established benchmarks with 100+ datasets).

k-Shape has been widely adopted across scientific areas (e.g., computer science, social science, space science, engineering, econometrics, biology, neuroscience, and medicine), Fortune 100-500 enterprises (e.g., Exelon, Nokia, and many financial firms), and organizations such as the European Space Agency.

If you use k-Shape in your project or research, cite the following two papers:

References

"k-Shape: Efficient and Accurate Clustering of Time Series"
John Paparrizos and Luis Gravano
2015 ACM SIGMOD International Conference on Management of Data (ACM SIGMOD 2015)

@inproceedings{paparrizos2015k,
  title={{k-Shape: Efficient and Accurate Clustering of Time Series}},
  author={Paparrizos, John and Gravano, Luis},
  booktitle={Proceedings of the 2015 ACM SIGMOD international conference on management of data},
  pages={1855--1870},
  year={2015}
}

"Fast and Accurate Time-Series Clustering"
John Paparrizos and Luis Gravano
ACM Transactions on Database Systems (ACM TODS 2017), volume 42(2), pages 1-49

@article{paparrizos2017fast,
  title={{Fast and Accurate Time-Series Clustering}},
  author={Paparrizos, John and Gravano, Luis},
  journal={ACM Transactions on Database Systems (ACM TODS)},
  volume={42},
  number={2},
  pages={1--49},
  year={2017}
}

Acknowledgements

We thank Teja Bogireddy for his valuable help on this repository.

We also thank the initial contributors Jörg Thalheim and Gregory Rehm. The initial code was used in Sieve.

k-Shape's Python Repository

This repository contains the Python implementation for k-Shape. For the Matlab version, check here.

Data

To ease reproducibility, we share our results over two established benchmarks:

  • The UCR Univariate Archive, which contains 128 univariate time-series datasets.
    • Download all 128 preprocessed datasets here.
  • The UAE Multivariate Archive, which contains 28 multivariate time-series datasets.
    • Download the first 14 preprocessed datasets here.
    • Download the remaining 14 preprocessed datasets here.

For the preprocessing steps check here.

Installation

Our code has dependencies on the following python packages:

Install from pip

$ pip install kshape

Install from source

$ git clone https://github.com/thedatumorg/kshape-python
$ cd kshape-python
$ python setup.py install

Benchmarking

We present the runtime performance of k-Shape when varying the number of time series, number of clusters, and the lengths of time series. (All results are the average of 5 runs.)

Usage

Univariate Example:

import numpy as np
from kshape.core import KShapeClusteringCPU 
from kshape.core_gpu import KShapeClusteringGPU 

univariate_ts_datasets = np.expand_dims(np.random.rand(200, 60), axis=2)
num_clusters = 3

# CPU Model
ksc = KShapeClusteringCPU(num_clusters, centroid_init='zero', max_iter=100, n_jobs=-1)
ksc.fit(univariate_ts_datasets)

labels = ksc.labels_ # or ksc.predict(univariate_ts_datasets)
cluster_centroids = ksc.centroids_
    
    
# GPU Model
ksg = KShapeClusteringGPU(num_clusters, centroid_init='zero', max_iter=100)
ksg.fit(univariate_ts_datasets)

labels = ksg.labels_
cluster_centroids = ksg.centroids_.detach().cpu()

Multivariate Example:

import numpy as np
from kshape.core import KShapeClusteringCPU 
from kshape.core_gpu import KShapeClusteringGPU 

multivariate_ts_datasets = np.random.rand(200, 60, 6)
num_clusters = 3

# CPU Model
ksc = KShapeClusteringCPU(num_clusters, centroid_init='zero', max_iter=100, n_jobs=-1)
ksc.fit(univariate_ts_datasets)

labels = ksc.labels_
cluster_centroids = ksc.centroids_
    
    
# GPU Model
ksg = KShapeClusteringGPU(num_clusters, centroid_init='zero', max_iter=100)
ksg.fit(univariate_ts_datasets)

labels = ksg.labels_
cluster_centroids = ksg.centroids_.detach().cpu()

Also see Examples for UCR/UAE dataset clustering

Results

The following tables contain the average Rand Index (RI), Adjusted Rand Index (ARI), and Normalized Mutual Information (NMI) accuracy values over 10 runs for k-Shape on the univariate and multivariate datasets.

Note: We collected the results using a single core implementation.

Server Specifications: AMD Ryzen 9 5900HX 8 Cores 3.30 GHz, 16GB RAM.

GPU Specifications: NVIDIA GeForce RTX 3070, 8GB memory.

Univariate Results:

Datasets RI ARI NMI Runtime (secs)
ACSF1 0.728889447 0.139127178 0.385362576 181.97282
Adiac 0.948199219 0.237456072 0.585026777 150.23389
AllGestureWiimoteX 0.830988989 0.091833105 0.19967124 132.64325
AllGestureWiimoteY 0.83356036 0.1306081 0.265320116 68.32064
AllGestureWiimoteZ 0.831796196 0.08184644 0.184288361 117.54415
ArrowHead 0.623696682 0.176408828 0.251716443 1.42841
Beef 0.666553672 0.102291622 0.274983496 2.04646
BeetleFly 0.518461538 0.037243262 0.049170634 0.62138
BirdChicken 0.522948718 0.046863444 0.055805713 0.46606
BME 0.623662322 0.209189215 0.337562447 0.75734
Car 0.668095238 0.142785926 0.222574613 4.87239
CBF 0.875577393 0.724563717 0.770334057 7.47873
Chinatown 0.526075568 0.041117166 0.015693819 0.548231
ChlorineConcentration 0.526233814 -0.001019087 0.000772354 68.01957
CinCECGTorso 0.625307149 0.051803606 0.093350668 271.74131
Coffee 0.726493506 0.453837834 0.421820948 0.41349
Computers 0.529187976 0.058481715 0.0485609 3.01130
CricketX 0.869701787 0.174655947 0.357916915 55.23645
CricketY 0.873153945 0.206381317 0.373656368 48.83094
CricketZ 0.869909812 0.172669605 0.355604411 44.52660
Crop 0.924108349 0.241974335 0.4388123 5420.01129
DiatomSizeReduction 0.919179195 0.807710845 0.827117298 1.59904
DistalPhalanxOutlineAgeGroup 0.722184825 0.435943568 0.329905608 2.12145
DistalPhalanxOutlineCorrect 0.499455708 -0.001030351 2.97E-05 2.26317
DistalPhalanxTW 0.839607976 0.59272726 0.531060255 10.96752
DodgerLoopDay 0.781988229 0.210916925 0.402897375 1.69891
DodgerLoopGame 0.570071757 0.140620499 0.117161969 0.86779
DodgerLoopWeekend 0.830807063 0.657966909 0.628131221 0.495587
Earthquakes 0.541659908 0.024267193 0.006262268 9.69413
ECG200 0.613753769 0.215794222 0.12870574 0.74401
ECG5000 0.771307998 0.530703353 0.523220504 163.82402
ECGFiveDays 0.811446734 0.623122565 0.586492573 4.52766
ElectricDevices 0.693551963 0.071161449 0.177107461 591.80007
EOGHorizontalSignal 0.86864851 0.227034804 0.408923026 357.01975
EOGVerticalSignal 0.87082521 ,0.200763231 0.37416983 236.19376
EthanolLevel 0.622273617 0.003480205 0.007896876 188.62335
FaceAll 0.910295025 0.433266026 0.610598916 317.37956
FaceFour 0.757335907 0.374239896 0.466746543 1.38740
FacesUCR 0.910295025 0.433266026 0.610598916 136.62772
FiftyWords 0.951558207 0.358925864 0.651569015 198.84656
Fish 0.785345886 0.189885615 0.327951361 17.13432
FordA 0.564619244 0.129237686 0.096210429 344.81591
FordB 0.516109383 0.032218211 0.023938345 254.47971
FreezerRegularTrain 0.638744137 0.277488682 0.211547387 18.45565
FreezerSmallTrain 0.639049682 0.278099783 0.212045663 26.71921
Fungi 0.829126823 0.357543672 0.731173267 6.11174
GestureMidAirD1 0.944819412 0.2937662 0.635503444 30.88751
GestureMidAirD2 0.947697224 0.348582475 0.677310905 43.38524
GestureMidAirD3 0.931266132 0.126759199 0.458782509 18.98568
GesturePebbleZ1 0.883081466 0.585931482 0.675293127 11.72848
GesturePebbleZ2 0.881353135 0.580554538 0.66392792 7.60654
GunPoint 0.497487437 -0.005050505 0 0.431333
GunPointAgeSpan 0.531991131 0.064141145 0.053146884 1.59410
GunPointMaleVersusFemale 0.790127618 0.580242081 0.571776535 1.08047
GunPointOldVersusYoung 0.518734664 0.037473134 0.028207614 3.55970
Ham 0.528831556 0.057673104 0.044612673 2.13764
HandOutlines 0.682856686 0.360051947 0.251176285 247.46488
Haptics 0.689075575 0.063709939 0.09042192 97.01234
Herring 0.501464075 0.003160642 0.007650463 1.22652
HouseTwenty 0.520197437 0.040014774 0.03248788 49.73466
InlineSkate 0.734065189 0.039846163 0.104643365 372.13227
InsectEPGRegularTrain 0.706511773 0.363941816 0.379556522 7.86684
InsectEPGSmallTrain 0.70409136 0.361370964 0.379504988 5.37182
InsectWingbeatSound 0.792640539 0.196225831 0.402373638 220.85374
ItalyPowerDemand 0.60972886 0.219608406 0.188152403 3.01081
LargeKitchenAppliances 0.570070672 0.125576669 0.130422376 12.03511
Lightning2 0.531294766 0.057017617 0.089783145 1.93780
Lightning7 0.806175515 0.322963065 0.506494431 4.51913
Mallat 0.924756461 0.721656055 0.869891088 84.35894
Meat 0.761918768 0.494403401 0.580422751 0.86227
MedicalImages 0.672005013 0.073490231 0.2287366 32.23141
MelbournePedestrian 0.869441656 0.349104777 0.470402239 275.40925
MiddlePhalanxOutlineAgeGroup 0.729585262 0.423115226 0.401722498 1.57184
MiddlePhalanxOutlineCorrect 0.49977175 -0.00373634 0.000894849 2.28809
MiddlePhalanxTW 0.809347564 0.449636118 0.431364361 8.09901
MixedShapesRegularTrain 0.800991079 0.420414418 0.488448041 285.77452
MixedShapesSmallTrain 0.800795029 0.419036374 0.4766379 115.97755
MoteStrain 0.804809143 0.609589015 0.501865061 4.56190
NonInvasiveFetalECGThorax1 0.950981974 0.33373922 0.676420909 2995.88974
NonInvasiveFetalECGThorax2 0.967174335 0.465761156 0.765614776 1748.11823
OliveOil 0.806892655 0.570012361 0.607418333 1.97315
OSULeaf 0.785105837 0.263550973 0.361580708 18.38517
PhalangesOutlinesCorrect 0.505362413 0.01070369 0.010221576 6.79001
Phoneme 0.92769786 0.034705732 0.210108984 1747.00270
PickupGestureWiimoteZ 0.854545455 0.288210152 0.540234358 3.61598
PigAirwayPressure 0.903229862 0.03338252 0.427579631 1632.92364
PigArtPressure 0.959821502 0.273442178 0.717389411 914.99103
PigCVP 0.961346772 0.194516974 0.658363736 1304.41961
PLAID 0.859444881 0.281634259 0.40487855 555.89190
Plane 0.911765778 0.708344209 0.851592604 1.14514
PowerCons 0.57637883 0.153069982 0.137929689 1.74243
ProximalPhalanxOutlineAgeGroup 0.752674183 0.477154395 0.468537655 1.72700
ProximalPhalanxOutlineCorrect 0.53390585 0.066453288 0.08535263 1.15338
ProximalPhalanxTW 0.831222703 0.569454692 0.550694374 5.31783
RefrigerationDevices 0.556208278 0.007595278 0.009437609 28.19549
Rock 0.696935818 0.218081493 0.322230745 179.14048
ScreenType 0.559603738 0.010528249 0.011742597 26.81045
SemgHandGenderCh2 0.546315412 0.091559428 0.058471281 39.87313
SemgHandMovementCh2 0.739443579 0.116429522 0.209097135 195.28737
SemgHandSubjectCh2 0.724787047 0.19660949 0.263889093 211.94098
ShakeGestureWiimoteZ 0.903171717 0.471533102 0.684959604 3.51105
ShapeletSim 0.699939698 0.400050425 0.377331686 3.14061
ShapesAll 0.978735474 0.42589872 0.742885495 201.26739
SmallKitchenAppliances 0.398853939 0.004907405 0.02514159 25.50886
SmoothSubspace 0.642434783 0.198252944 0.19954272 2.06081
SonyAIBORobotSurface1 0.728057763 0.455518203 0.464021606 2.53491
SonyAIBORobotSurface2 0.589140522 0.172496802 0.11750294 4.86348
StarLightCurves 0.769194065 0.520688962 0.610221341 64.50148
Strawberry 0.504165518 -0.019398783 0.123396507 6.72441
SwedishLeaf 0.890254013 0.312306779 0.556179611 58.87581
Symbols 0.880314418 0.619222941 0.757594317 23.11830
SyntheticControl 0.881984975 0.600681896 0.712533175 6.90626
ToeSegmentation1 0.50200682 0.004059369 0.005057191 1.78287
ToeSegmentation2 0.635618839 0.260242738 0.191505717 1.96561
Trace 0.711065327 0.455900994 0.598951999 2.30357
TwoLeadECG 0.538024968 0.076155916 0.059000693 8.53791
TwoPatterns 0.677979172 0.207830772 0.318418523 185.70084
UMD 0.597057728 0.130992637 0.189184137 0.93842
UWaveGestureLibraryAll 0.90364952 0.576024048 0.662693972 288.38747
UWaveGestureLibraryX 0.85435587 0.353963525 0.457132359 348.93967
UWaveGestureLibraryY 0.830476288 0.24845414 0.342123959 471.75583
UWaveGestureLibraryZ 0.849091206 0.350080637 0.46397562 448.39118
Wafer 0.541995609 0.026459678 0.010367784 41.34034
Wine 0.496478296 -0.005187919 0.001056479 0.57659
WordSynonyms 0.892537036 0.221578306 0.451754722 74.17649
Worms 0.647528127 0.028458575 0.062591393 24.33412
WormsTwoClass 0.503616566 0.00695446 0.009827969 8.10779
Yoga 0.499909412 -0.000340663 7.76E-05 146.22124

Multivariate Results:

Datasets RI ARI NMI Runtime (secs)
ArticularyWordRecognition 0.97284653 0.682936 0.864209 2532.5272
AtrialFibrillation 0.560919540 0.01633812 0.128106259 76.43405
BasicMotions 0.725 0.3090610 0.4459239 38.9816293
CharacterTrajectories 0.9365907 0.459423 0.7025514 6976.2988
Cricket 0.93382991 0.624538 0.82573024 1370.6116316
DuckDuckGeese 0.625656 0.01100873 0.08130332 13447.5819
ERing 0.87868450 0.5742014 0.647674 291.04038
Epilepsy 0.81000 0.50352 0.54805851 83.565232
EthanolConcentration 0.59969 -0.00394874 0.0010586 471.00570
FaceDetection 0.50010 0.000212347 0.0002300 54983.670330
FingerMovements 0.5025486 0.0050935 0.005415024 977.18741
HandMovementDirection 0.600674 0.04846741 0.05801 942.49626
Handwriting 0.916650 0.120414 0.40797 2304.06015
Heartbeat 0.502037 0.0040379 0.0032608 4857.40035
InsectWingbeat 0.65513 0.00222 0.01020 705605.323
JapaneseVowels 0.859639 0.314733 0.4591541 1286.313125
LSST 0.760442 0.0608486 0.124402 5608.39906
Libras 0.90685 0.30682997 0.560319 437.0877
MotorImagery 0.49957194 0.00049311 0.0033261 18263.257795
NATOPS 0.82175796 0.3739007 0.45782146 265.831900
PenDigits 0.9146977 0.573592 0.69841860 5172.9306
PhonemeSpectra 0.807146 0.0143122 0.08947696 28615.90575
RacketSports 0.7666819 0.38386 0.442636255 289.75656
SelfRegulationSCP1 0.515991 0.032366 0.035956 543.48927
SelfRegulationSCP2 0.498805 -0.002369 0.00018238 1194.50309
SpokenArabicDigits 0.95415 0.7455001 0.80269645 12275.5243
StandWalkJump 0.4957264 0.040850354 0.16682 412.409304
UWaveGestureLibrary 0.86596 0.474113616 0.629729 184.98871