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StockEmotions: Discover Investor Emotions for Financial Sentiment Analysis and Multivariate Time Series

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Listed:
  • Jean Lee
  • Hoyoul Luis Youn
  • Josiah Poon
  • Soyeon Caren Han

Abstract

There has been growing interest in applying NLP techniques in the financial domain, however, resources are extremely limited. This paper introduces StockEmotions, a new dataset for detecting emotions in the stock market that consists of 10,000 English comments collected from StockTwits, a financial social media platform. Inspired by behavioral finance, it proposes 12 fine-grained emotion classes that span the roller coaster of investor emotion. Unlike existing financial sentiment datasets, StockEmotions presents granular features such as investor sentiment classes, fine-grained emotions, emojis, and time series data. To demonstrate the usability of the dataset, we perform a dataset analysis and conduct experimental downstream tasks. For financial sentiment/emotion classification tasks, DistilBERT outperforms other baselines, and for multivariate time series forecasting, a Temporal Attention LSTM model combining price index, text, and emotion features achieves the best performance than using a single feature.

Suggested Citation

  • Jean Lee & Hoyoul Luis Youn & Josiah Poon & Soyeon Caren Han, 2023. "StockEmotions: Discover Investor Emotions for Financial Sentiment Analysis and Multivariate Time Series," Papers 2301.09279, arXiv.org, revised Feb 2023.
  • Handle: RePEc:arx:papers:2301.09279
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    References listed on IDEAS

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    1. John Griffith & Mohammad Najand & Jiancheng Shen, 2020. "Emotions in the Stock Market," Journal of Behavioral Finance, Taylor & Francis Journals, vol. 21(1), pages 42-56, January.
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