Interpreting Time Series Transformer Models and Sensitivity Analysis of Population Age Groups to COVID-19 Infections

Interpreting deep learning time series models is crucial in understanding the model's behavior and learning patterns from raw data for real-time decision-making. However, the complexity inherent in transformer-based time series models poses challenges in explaining the impact of individual feat...

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Veröffentlicht in:arXiv.org 2024-01
Hauptverfasser: Md Khairul Islam, Valentine, Tyler, Sue, Timothy Joowon, Karmacharya, Ayush, Benham, Luke Neil, Wang, Zhengguang, Kim, Kingsley, Fox, Judy
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Valentine, Tyler
Sue, Timothy Joowon
Karmacharya, Ayush
Benham, Luke Neil
Wang, Zhengguang
Kim, Kingsley
Fox, Judy
description Interpreting deep learning time series models is crucial in understanding the model's behavior and learning patterns from raw data for real-time decision-making. However, the complexity inherent in transformer-based time series models poses challenges in explaining the impact of individual features on predictions. In this study, we leverage recent local interpretation methods to interpret state-of-the-art time series models. To use real-world datasets, we collected three years of daily case data for 3,142 US counties. Firstly, we compare six transformer-based models and choose the best prediction model for COVID-19 infection. Using 13 input features from the last two weeks, we can predict the cases for the next two weeks. Secondly, we present an innovative way to evaluate the prediction sensitivity to 8 population age groups over highly dynamic multivariate infection data. Thirdly, we compare our proposed perturbation-based interpretation method with related work, including a total of eight local interpretation methods. Finally, we apply our framework to traffic and electricity datasets, demonstrating that our approach is generic and can be applied to other time-series domains.
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subjects Age groups
COVID-19
Datasets
Deep learning
Multivariate analysis
Prediction models
Sensitivity analysis
Time series
Transformers
title Interpreting Time Series Transformer Models and Sensitivity Analysis of Population Age Groups to COVID-19 Infections
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