Research output: Contribution to journal › Article › peer-review
ShapTime: A General XAI Approach for Explainable Time Series Forecasting. / Zhang, Yuyi; Sun, Qiushi; Qi, Dongfang; Liu, Jing; Ma, Ruimin; Petrosian, Ovanes.
In: Lecture Notes in Networks and Systems, 2023.Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - ShapTime: A General XAI Approach for Explainable Time Series Forecasting
AU - Zhang, Yuyi
AU - Sun, Qiushi
AU - Qi, Dongfang
AU - Liu, Jing
AU - Ma, Ruimin
AU - Petrosian, Ovanes
PY - 2023
Y1 - 2023
N2 - The application of Explainable AI (XAI) in time series forecasting has gradually attracted attention, given the widespread implementation of machine learning and deep learning. ShapTime - A general XAI approach based on Shapley Value specially developed for explainable time series forecasting, which can explore more plentiful information in the temporal dimension, instead of only roughly applying traditional XAI approaches to time series forecasting as in previous works. Its novel components include: (1) It provides the relatively stable explanation inthe temporal dimension, that is, the explanation result can reflect the importance of time itself, which is more suitable for time series forecasting than traditional XAI approaches; (2) It builds the practical application scenario of XAI - improving forecasting performance guided by explanation results. This is distinctly different from previous works, which only present the results of XAI as the demonstration of innovation. Eventually, in five real-world datasets, ShapTime’s average performance improvements for Boosting, RNN-based and Bi-RNN-based reached 18%, 20% and 35%, respectively.
AB - The application of Explainable AI (XAI) in time series forecasting has gradually attracted attention, given the widespread implementation of machine learning and deep learning. ShapTime - A general XAI approach based on Shapley Value specially developed for explainable time series forecasting, which can explore more plentiful information in the temporal dimension, instead of only roughly applying traditional XAI approaches to time series forecasting as in previous works. Its novel components include: (1) It provides the relatively stable explanation inthe temporal dimension, that is, the explanation result can reflect the importance of time itself, which is more suitable for time series forecasting than traditional XAI approaches; (2) It builds the practical application scenario of XAI - improving forecasting performance guided by explanation results. This is distinctly different from previous works, which only present the results of XAI as the demonstration of innovation. Eventually, in five real-world datasets, ShapTime’s average performance improvements for Boosting, RNN-based and Bi-RNN-based reached 18%, 20% and 35%, respectively.
KW - time-series forecasting
KW - explainable AI
KW - Shapley value
M3 - Article
JO - Lecture Notes in Networks and Systems
JF - Lecture Notes in Networks and Systems
SN - 2367-3389
ER -
ID: 114434258