Unsupervised Discovery of Temporal Structure in Noisy Data with Dynamical Components Analysis
May 23, 2019 Β· Declared Dead Β· π Neural Information Processing Systems
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Authors
David G. Clark, Jesse A. Livezey, Kristofer E. Bouchard
arXiv ID
1905.09944
Category
cs.IT: Information Theory
Cross-listed
cs.LG
Citations
26
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Linear dimensionality reduction methods are commonly used to extract low-dimensional structure from high-dimensional data. However, popular methods disregard temporal structure, rendering them prone to extracting noise rather than meaningful dynamics when applied to time series data. At the same time, many successful unsupervised learning methods for temporal, sequential and spatial data extract features which are predictive of their surrounding context. Combining these approaches, we introduce Dynamical Components Analysis (DCA), a linear dimensionality reduction method which discovers a subspace of high-dimensional time series data with maximal predictive information, defined as the mutual information between the past and future. We test DCA on synthetic examples and demonstrate its superior ability to extract dynamical structure compared to commonly used linear methods. We also apply DCA to several real-world datasets, showing that the dimensions extracted by DCA are more useful than those extracted by other methods for predicting future states and decoding auxiliary variables. Overall, DCA robustly extracts dynamical structure in noisy, high-dimensional data while retaining the computational efficiency and geometric interpretability of linear dimensionality reduction methods.
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