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Papers/Seq2Tens: An Efficient Representation of Sequences by Low-...

Seq2Tens: An Efficient Representation of Sequences by Low-Rank Tensor Projections

Csaba Toth, Patric Bonnier, Harald Oberhauser

2020-06-12ICLR 2021 1ImputationTime SeriesTime Series AnalysisTime Series Classification
PaperPDFCode(official)

Abstract

Sequential data such as time series, video, or text can be challenging to analyse as the ordered structure gives rise to complex dependencies. At the heart of this is non-commutativity, in the sense that reordering the elements of a sequence can completely change its meaning. We use a classical mathematical object -- the tensor algebra -- to capture such dependencies. To address the innate computational complexity of high degree tensors, we use compositions of low-rank tensor projections. This yields modular and scalable building blocks for neural networks that give state-of-the-art performance on standard benchmarks such as multivariate time series classification and generative models for video.

Results

TaskDatasetMetricValueModel
ImputationSpritesMSE0.002GP-VAE (B-NLST)
ImputationHMNISTAUROC0.962GP-VAE (B-NLST)
ImputationHMNISTMSE0.092GP-VAE (B-NLST)
ImputationHMNISTNLL0.251GP-VAE (B-NLST)
ImputationPhysioNet Challenge 2012AUROC0.743GP-VAE (B-NLST)
Time Series ClassificationSHAPESAccuracy1SNLST
Time Series ClassificationSHAPESAccuracy1FCN-SNLST
Time Series ClassificationNetFlowAccuracy0.96FCN-SNLST
Time Series ClassificationNetFlowAccuracy0.793SNLST
Time Series ClassificationLibrasAccuracy0.957FCN-SNLST
Time Series ClassificationLibrasAccuracy0.773SNLST
Time Series ClassificationDigitShapesAccuracy1SNLST
Time Series ClassificationDigitShapesAccuracy1FCN-SNLST
Time Series ClassificationCharacterTrajectoriesAccuracy0.994FCN-SNLST
Time Series ClassificationCharacterTrajectoriesAccuracy0.957SNLST
Time Series ClassificationPenDigitsAccuracy0.954SNLST
Time Series ClassificationPenDigitsAccuracy0.953FCN-SNLST
Time Series ClassificationAUSLANAccuracy0.993FCN-SNLST
Time Series ClassificationAUSLANAccuracy0.969SNLST
Time Series ClassificationArabicDigitsAccuracy0.993FCN-SNLST
Time Series ClassificationArabicDigitsAccuracy0.968SNLST
Time Series ClassificationJapaneseVowelsAccuracy0.98FCN-SNLST
Time Series ClassificationJapaneseVowelsAccuracy0.979SNLST
Time Series ClassificationUWaveAccuracy0.969FCN-SNLST
Time Series ClassificationUWaveAccuracy0.938SNLST
Time Series ClassificationECGAccuracy0.86FCN-SNLST
Time Series ClassificationECGAccuracy0.842SNLST
Time Series ClassificationPEMSAccuracy0.857FCN-SNLST
Time Series ClassificationPEMSAccuracy0.747SNLST
Time Series ClassificationWalkvsRunAccuracy1FCN-SNLST
Time Series ClassificationWalkvsRunAccuracy1SNLST
Time Series ClassificationCMUsubject16Accuracy1SNLST
Time Series ClassificationCMUsubject16Accuracy1FCN-SNLST
Time Series ClassificationKickvsPunchAccuracy1SNLST
Time Series ClassificationKickvsPunchAccuracy1FCN-SNLST
Time Series ClassificationWaferAccuracy0.989FCN-SNLST
Time Series ClassificationWaferAccuracy0.981SNLST
Feature EngineeringSpritesMSE0.002GP-VAE (B-NLST)
Feature EngineeringHMNISTAUROC0.962GP-VAE (B-NLST)
Feature EngineeringHMNISTMSE0.092GP-VAE (B-NLST)
Feature EngineeringHMNISTNLL0.251GP-VAE (B-NLST)
Feature EngineeringPhysioNet Challenge 2012AUROC0.743GP-VAE (B-NLST)

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