How Sentiment Indicators Improve Algorithmic Trading Performance

Other authors

Universitat Ramon Llull. Esade

Publication date

2025-07



Abstract

This study explores the hypothesis that sentiment indicators can enhance the performance of algorithmic trading strategies. Specifically, we investigate the impact of incorporating investor sentiment metrics, such as the CNN Fear & Greed Index and cryptocurrency sentiment, on predictive accuracy and profitability. To test this hypothesis, two trading strategies are compared in the Nasdaq Mini futures market. The first strategy employs traditional technical indicators and machine learning models, whereas sentiment-based indicators are incorporated to the second one to enhance it. Backtests are conducted over the period from May 16, 2022 to December 20, 2024, to evaluate the effectiveness of sentiment signals. The results demonstrate that the sentiment-augmented strategy improves risk-adjusted returns, reduces volatility, and enhances profitability compared to the baseline model. This study provides evidence that sentiment indicators can be a valuable addition to algorithmic trading systems, offering a more stable and risk-managed approach, even though they may not always maximise net profit.

Document Type

Article

Document version

Published version

Language

English

Pages

11 p.

Publisher

SAGE Publications

Published in

SAGE Open, Vol. 15, Issue 3

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Rights

© L'autor/a

© L'autor/a

Attribution-NonCommercial 4.0 International

This item appears in the following Collection(s)

Esade [293]