TL;DR
FinTSB is a new benchmark platform that comprehensively evaluates financial time series forecasting methods, addressing diversity, standardization, and real-world applicability issues.
Contribution
It introduces a unified, practical benchmark with standardized metrics, diverse data processing, and realistic trading constraints for better evaluation of FinTS forecasting models.
Findings
Extensive experiments demonstrate the benchmark's effectiveness in guiding model selection.
The benchmark highlights the importance of considering market diversity and constraints.
Results show improved evaluation consistency across different market scenarios.
Abstract
Financial time series (FinTS) record the behavior of human-brain-augmented decision-making, capturing valuable historical information that can be leveraged for profitable investment strategies. Not surprisingly, this area has attracted considerable attention from researchers, who have proposed a wide range of methods based on various backbones. However, the evaluation of the area often exhibits three systemic limitations: 1. Failure to account for the full spectrum of stock movement patterns observed in dynamic financial markets. (Diversity Gap), 2. The absence of unified assessment protocols undermines the validity of cross-study performance comparisons. (Standardization Deficit), and 3. Neglect of critical market structure factors, resulting in inflated performance metrics that lack practical applicability. (Real-World Mismatch). Addressing these limitations, we propose FinTSB, a…
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