Algorithmic Trading Strategy Development and Optimisation
arXiv cs.AI / 3/18/2026
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Key Points
- A new arXiv preprint (2603.15848v1) presents development and optimisation of an enhanced algorithmic trading strategy using historical S&P 500 data and earnings call sentiment analysis.
- The approach combines traditional technical indicators (moving averages, momentum, volatility) with FinBERT-based sentiment analysis to inform trading decisions.
- Results indicate the enhanced strategy significantly outperforms a baseline model in total return, Sharpe ratio, and drawdown, among other metrics.
- The study demonstrates the potential of integrating technical indicators, sentiment analysis, and computational optimisation in algorithmic trading systems.
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