TL;DR
FinSTaR introduces a specialized reasoning framework and benchmark for financial time series analysis, achieving significant accuracy improvements by tailoring reasoning strategies to assessment and prediction tasks.
Contribution
The paper develops a novel taxonomy, benchmark, and tailored reasoning strategies for financial time series reasoning models, addressing their limitations in the financial domain.
Findings
FinSTaR achieves 78.9% accuracy on FinTSR-Bench.
Scenario-Aware CoT improves prediction accuracy over standard CoT.
Joint training of capability categories enhances overall performance.
Abstract
Time series (TS) reasoning models (TSRMs) have shown promising capabilities in general domains, yet they consistently fail on financial domain, which exhibit unique characteristics. We propose a general 2x2 capability taxonomy for TSRMs by crossing 1) single-entity vs. multi-entity analysis with 2) assessment of the current state vs. prediction of future behavior. We instantiate this taxonomy in the financial domain -- where the distinction between deterministic assessment and stochastic prediction is particularly critical -- as ten financial reasoning tasks, forming the FinTSR-Bench benchmark based on S&P stocks. To this end, we propose FinSTaR (Financial Time Series Thinking and Reasoning), trained on FinTSR-Bench with distinct chain-of-thought (CoT) strategies tailored to each category. For assessment, which is deterministic (i.e., computable from observable data), we employ…
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