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Time Evidence Fusion Network: Multi-source View in Long-Term Time Series Forecasting

2024-05-10Code Available2· sign in to hype

Tianxiang Zhan, Yuanpeng He, Yong Deng, Zhen Li, Wenjie Du, Qingsong Wen

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Abstract

In practical scenarios, time series forecasting necessitates not only accuracy but also efficiency. Consequently, the exploration of model architectures remains a perennially trending topic in research. To address these challenges, we propose a novel backbone architecture named Time Evidence Fusion Network (TEFN) from the perspective of information fusion. Specifically, we introduce the Basic Probability Assignment (BPA) Module based on evidence theory to capture the uncertainty of multivariate time series data from both channel and time dimensions. Additionally, we develop a novel multi-source information fusion method to effectively integrate the two distinct dimensions from BPA output, leading to improved forecasting accuracy. Lastly, we conduct extensive experiments to demonstrate that TEFN achieves performance comparable to state-of-the-art methods while maintaining significantly lower complexity and reduced training time. Also, our experiments show that TEFN exhibits high robustness, with minimal error fluctuations during hyperparameter selection. Furthermore, due to the fact that BPA is derived from fuzzy theory, TEFN offers a high degree of interpretability. Therefore, the proposed TEFN balances accuracy, efficiency, stability, and interpretability, making it a desirable solution for time series forecasting.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Electricity (192)TEFNMSE0.2Unverified
Electricity (336)TEFNMSE0.21Unverified
Electricity (720)TEFNMSE0.25Unverified
Electricity (96)TEFNMSE0.2Unverified
ETTh1 (192) MultivariateTEFNMSE0.43Unverified
ETTh1 (336) MultivariateTEFNMSE0.48Unverified
ETTh1 (720) MultivariateTEFNMSE0.48Unverified
ETTh1 (96) MultivariateTEFNMSE0.38Unverified
ETTh2 (192) MultivariateTEFNMSE0.38Unverified
ETTh2 (336) MultivariateTEFNMSE0.42Unverified
ETTh2 (720) MultivariateTEFNMSE0.43Unverified
ETTh2 (96) MultivariateTEFNMSE0.29Unverified
ETTm1 (192) MultivariateTEFNMSE0.38Unverified
ETTm1 (336) MultivariateTEFNMSE0.41Unverified
ETTm1 (720) MultivariateTEFNMSE0.48Unverified
ETTm1 (96) MultivariateTEFNMSE0.34Unverified
ETTm2 (192) MultivariateTEFNMSE0.38Unverified
ETTm2 (336) MultivariateTEFNMSE0.31Unverified
ETTm2 (720) MultivariateTEFNMSE0.41Unverified
ETTm2 (96) MultivariateTEFNMSE0.18Unverified
Weather (192)TEFNMSE0.23Unverified
Weather (336)TEFNMSE0.28Unverified
Weather (720)TEFNMSE0.35Unverified
Weather (96)TEFNMSE0.18Unverified

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