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Main Authors: Kanai, Sekitoshi, Ida, Yasutoshi, Adachi, Kazuki, Uchida, Mihiro, Yoshida, Tsukasa, Yamaguchi, Shin'ya
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.16261
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author Kanai, Sekitoshi
Ida, Yasutoshi
Adachi, Kazuki
Uchida, Mihiro
Yoshida, Tsukasa
Yamaguchi, Shin'ya
author_facet Kanai, Sekitoshi
Ida, Yasutoshi
Adachi, Kazuki
Uchida, Mihiro
Yoshida, Tsukasa
Yamaguchi, Shin'ya
contents This study investigates a method to evaluate time-series datasets in terms of the performance of deep neural networks (DNNs) with state space models (deep SSMs) trained on the dataset. SSMs have attracted attention as components inside DNNs to address time-series data. Since deep SSMs have powerful representation capacities, training datasets play a crucial role in solving a new task. However, the effectiveness of training datasets cannot be known until deep SSMs are actually trained on them. This can increase the cost of data collection for new tasks, as a trial-and-error process of data collection and time-consuming training are needed to achieve the necessary performance. To advance the practical use of deep SSMs, the metric of datasets to estimate the performance early in the training can be one key element. To this end, we introduce the concept of data evaluation methods used in system identification. In system identification of linear dynamical systems, the effectiveness of datasets is evaluated by using the spectrum of input signals. We introduce this concept to deep SSMs, which are nonlinear dynamical systems. We propose the K-spectral metric, which is the sum of the top-K spectra of signals inside deep SSMs, by focusing on the fact that each layer of a deep SSM can be regarded as a linear dynamical system. Our experiments show that the K-spectral metric has a large absolute value of the correlation coefficient with the performance and can be used to evaluate the quality of training datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2408_16261
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evaluating Time-Series Training Dataset through Lens of Spectrum in Deep State Space Models
Kanai, Sekitoshi
Ida, Yasutoshi
Adachi, Kazuki
Uchida, Mihiro
Yoshida, Tsukasa
Yamaguchi, Shin'ya
Machine Learning
Artificial Intelligence
This study investigates a method to evaluate time-series datasets in terms of the performance of deep neural networks (DNNs) with state space models (deep SSMs) trained on the dataset. SSMs have attracted attention as components inside DNNs to address time-series data. Since deep SSMs have powerful representation capacities, training datasets play a crucial role in solving a new task. However, the effectiveness of training datasets cannot be known until deep SSMs are actually trained on them. This can increase the cost of data collection for new tasks, as a trial-and-error process of data collection and time-consuming training are needed to achieve the necessary performance. To advance the practical use of deep SSMs, the metric of datasets to estimate the performance early in the training can be one key element. To this end, we introduce the concept of data evaluation methods used in system identification. In system identification of linear dynamical systems, the effectiveness of datasets is evaluated by using the spectrum of input signals. We introduce this concept to deep SSMs, which are nonlinear dynamical systems. We propose the K-spectral metric, which is the sum of the top-K spectra of signals inside deep SSMs, by focusing on the fact that each layer of a deep SSM can be regarded as a linear dynamical system. Our experiments show that the K-spectral metric has a large absolute value of the correlation coefficient with the performance and can be used to evaluate the quality of training datasets.
title Evaluating Time-Series Training Dataset through Lens of Spectrum in Deep State Space Models
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2408.16261