Interpretable Dynamic Network Modeling of Tensor Time Series via Kronecker Time-Varying Graphical Lasso
Shingo Higashiguchi, Koki Kawabata, Yasuko Matsubara, Yasushi Sakurai

TL;DR
This paper introduces KTVGL, a novel method for modeling tensor time series that estimates mode-specific dynamic networks in a Kronecker product form, enhancing interpretability and computational efficiency.
Contribution
The paper proposes KTVGL, a new approach for tensor time series that produces interpretable, mode-specific dynamic networks with scalable computation and streaming capabilities.
Findings
Higher edge estimation accuracy than existing methods
Reduced computational time for large data
Effective on real-world tensor data
Abstract
With the rapid development of web services, large amounts of time series data are generated and accumulated across various domains such as finance, healthcare, and online platforms. As such data often co-evolves with multiple variables interacting with each other, estimating the time-varying dependencies between variables (i.e., the dynamic network structure) has become crucial for accurate modeling. However, real-world data is often represented as tensor time series with multiple modes, resulting in large, entangled networks that are hard to interpret and computationally intensive to estimate. In this paper, we propose Kronecker Time-Varying Graphical Lasso (KTVGL), a method designed for modeling tensor time series. Our approach estimates mode-specific dynamic networks in a Kronecker product form, thereby avoiding overly complex entangled structures and producing interpretable modeling…
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Taxonomy
TopicsMachine Learning in Healthcare · Tensor decomposition and applications · Generative Adversarial Networks and Image Synthesis
