Seq2Tens: An Efficient Representation of Sequences by Low-Rank Tensor Projections
About
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.
Csaba Toth, Patric Bonnier, Harald Oberhauser• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time-series classification | PENDIGITS (test) | Accuracy96.3 | 36 | |
| Time-series classification | 16 TSC datasets (test) | P(Pred > True)2 | 33 | |
| Time-series classification | UWAVE (test) | Accuracy97.6 | 27 | |
| Time-series classification | WALK VS RUN (test) | Accuracy100 | 27 | |
| Time-series classification | CMUSUBJECT16 (test) | Accuracy100 | 19 | |
| Time-series classification | PEMS (test) | Accuracy80.2 | 16 | |
| Multivariate Time Series Classification | Arabic Digits (test) | Accuracy99.7 | 14 | |
| Multivariate Time Series Classification | Japanese Vowels (test) | Accuracy99.4 | 14 | |
| Multivariate Time Series Classification | AUSLAN (test) | Accuracy99.6 | 13 | |
| Multivariate Time Series Classification | CHAR. TRAJ. (test) | Accuracy99.5 | 13 |
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