Can LLM-based Financial Investing Strategies Outperform the Market in Long Run?
This work addresses the problem of overestimated effectiveness in AI-driven investing for financial researchers and practitioners, highlighting incremental insights on robustness.
The study critically assessed the generalizability of LLM-based financial investing strategies by evaluating them over longer periods and a larger stock universe, finding that previously reported advantages deteriorate significantly, with strategies underperforming in bull markets and incurring heavy losses in bear markets.
Large Language Models (LLMs) have recently been leveraged for asset pricing tasks and stock trading applications, enabling AI agents to generate investment decisions from unstructured financial data. However, most evaluations of LLM timing-based investing strategies are conducted on narrow timeframes and limited stock universes, overstating effectiveness due to survivorship and data-snooping biases. We critically assess their generalizability and robustness by proposing FINSABER, a backtesting framework evaluating timing-based strategies across longer periods and a larger universe of symbols. Systematic backtests over two decades and 100+ symbols reveal that previously reported LLM advantages deteriorate significantly under broader cross-section and over a longer-term evaluation. Our market regime analysis further demonstrates that LLM strategies are overly conservative in bull markets, underperforming passive benchmarks, and overly aggressive in bear markets, incurring heavy losses. These findings highlight the need to develop LLM strategies that are able to prioritise trend detection and regime-aware risk controls over mere scaling of framework complexity.