MTS2Graph: Interpretable Multivariate Time Series Classification with Temporal Evolving Graphs
Raneen Younis, Abdul Hakmeh, and Zahra Ahmadi

TL;DR
This paper introduces MTS2Graph, a framework that interprets multivariate time series by extracting patterns, constructing temporal graphs, and embedding them for improved classification and interpretability using CNNs.
Contribution
The work presents a novel graph-based interpretability framework for multivariate time series classification that captures temporal relationships and signal dependencies.
Findings
Enhanced classification accuracy on multiple datasets
Improved interpretability of CNN models
Effective extraction of signal patterns and dependencies
Abstract
Conventional time series classification approaches based on bags of patterns or shapelets face significant challenges in dealing with a vast amount of feature candidates from high-dimensional multivariate data. In contrast, deep neural networks can learn low-dimensional features efficiently, and in particular, Convolutional Neural Networks (CNN) have shown promising results in classifying Multivariate Time Series (MTS) data. A key factor in the success of deep neural networks is this astonishing expressive power. However, this power comes at the cost of complex, black-boxed models, conflicting with the goals of building reliable and human-understandable models. An essential criterion in understanding such predictive deep models involves quantifying the contribution of time-varying input variables to the classification. Hence, in this work, we introduce a new framework for interpreting…
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Taxonomy
TopicsTime Series Analysis and Forecasting
MethodsMatching The Statements
