Abstract
News dissemination in social media causes fluctuations in financial markets. (Scope) Recent advanced methods in deep learning-based natural language processing have shown promising results in financial market analysis. However, understanding how to leverage large amounts of textual data alongside financial market information is important for the investors’ behavior analysis. In this study, we review over 150 publications in the field of behavioral finance that jointly investigated natural language processing (NLP) approaches and a market data analysis for financial decision support. This work differs from other reviews by focusing on applied publications in computer science and artificial intelligence that contributed to a heterogeneous information fusion for the investors’ behavior analysis. (Goal) We study various text representation methods, sentiment analysis, and information retrieval methods from heterogeneous data sources. (Findings) We present current and future research directions in text mining and deep learning for correlation analysis, forecasting, and recommendation systems in financial markets, such as stocks, cryptocurrencies, and Forex (Foreign Exchange Market).
Reference174 articles.
1. The Behavior of Stock-Market Prices
2. From Efficient Markets Theory to Behavioral Finance
3. Neoclassical finance, behavioral finance and noise traders: A review and assessment of the literature
4. Distributed representations of sentences and documents;Le;Proceedings of the International Conference on Machine Learning,2014
5. Efficient estimation of word representations in vector space;Mikolov;arXiv,2013
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