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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.

Abstract

The report presents with the development and optimisation of an enhanced algorithmic trading strategy through the use of historical S&P 500 market data and earnings call sentiment analysis. The proposed strategy integrates various technical indicators such as moving averages, momentum, volatility, and FinBERT-based sentiment analysis to improve overall trades being taken. The results show that the enhanced strategy significantly outperforms the baseline model in terms of total return, Sharpe ratio, and drawdown amongst other factors. The findings helped demonstrate the relevance and effectiveness of combining technical indicators, sentiment analysis, and computational optimisation in algorithmic trading systems.