LGMLJul 15, 2019

Dynamical Systems as Temporal Feature Spaces

arXiv:1907.06382v329 citations
Originality Incremental advance
AI Analysis

This work provides a theoretical framework for analyzing temporal features in recurrent models, which is incremental but offers insights for improving time series learning in machine learning.

The authors tackled the problem of understanding temporal feature representations in vanishing memory state space models like echo state networks, showing that random coupling leads to shallow memory with fast exponential decay, while imposing symmetry or using cycle reservoir topology can yield deep memory kernels with rich motifs, and they quantified a phase transition in kernel richness near stability edges.

Parameterized state space models in the form of recurrent networks are often used in machine learning to learn from data streams exhibiting temporal dependencies. To break the black box nature of such models it is important to understand the dynamical features of the input driving time series that are formed in the state space. We propose a framework for rigorous analysis of such state representations in vanishing memory state space models such as echo state networks (ESN). In particular, we consider the state space a temporal feature space and the readout mapping from the state space a kernel machine operating in that feature space. We show that: (1) The usual ESN strategy of randomly generating input-to-state, as well as state coupling leads to shallow memory time series representations, corresponding to cross-correlation operator with fast exponentially decaying coefficients; (2) Imposing symmetry on dynamic coupling yields a constrained dynamic kernel matching the input time series with straightforward exponentially decaying motifs or exponentially decaying motifs of the highest frequency; (3) Simple cycle high-dimensional reservoir topology specified only through two free parameters can implement deep memory dynamic kernels with a rich variety of matching motifs. We quantify richness of feature representations imposed by dynamic kernels and demonstrate that for dynamic kernel associated with cycle reservoir topology, the kernel richness undergoes a phase transition close to the edge of stability.

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