Financial sentiment analysis: techniques and applications
Financial Sentiment Analysis (FSA) is an important domain application of sentiment analysis that has gained increasing attention in the past decade. FSA research falls into two main streams. The first stream focuses on defining tasks and developing techniques for FSA, and its main objective is to im...
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sg-ntu-dr.10356-1790272024-07-16T07:01:26Z Financial sentiment analysis: techniques and applications Du, Kelvin Xing, Frank Mao, Rui Cambria, Erik School of Computer Science and Engineering Computer and Information Science Deep learning Financial forecasting Financial Sentiment Analysis (FSA) is an important domain application of sentiment analysis that has gained increasing attention in the past decade. FSA research falls into two main streams. The first stream focuses on defining tasks and developing techniques for FSA, and its main objective is to improve the performances of various FSA tasks by advancing methods and using/curating human-annotated datasets. The second stream of research focuses on using financial sentiment, implicitly or explicitly, for downstream applications on financial markets, which has received more research efforts. The main objective is to discover appropriate market applications for existing techniques. More specifically, the application of FSA mainly includes hypothesis testing and predictive modeling in financial markets. This survey conducts a comprehensive review of FSA research in both the technique and application areas and proposes several frameworks to help understand the two areas’ interactive relationship. This article defines a clearer scope for FSA studies and conceptualizes the FSA-investor sentiment-market sentiment relationship. Major findings, challenges, and future research directions for both FSA techniques and applications have also been summarized and discussed. 2024-07-16T07:01:26Z 2024-07-16T07:01:26Z 2024 Journal Article Du, K., Xing, F., Mao, R. & Cambria, E. (2024). Financial sentiment analysis: techniques and applications. ACM Computing Surveys, 56(9), 3649451-. https://dx.doi.org/10.1145/3649451 0360-0300 https://hdl.handle.net/10356/179027 10.1145/3649451 2-s2.0-85192916714 9 56 3649451 en ACM Computing Surveys © 2024 Copyright held by the owner/author(s). Publication rights licensed to ACM. All rights reserved. |
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Computer and Information Science Deep learning Financial forecasting Du, Kelvin Xing, Frank Mao, Rui Cambria, Erik Financial sentiment analysis: techniques and applications |
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Financial Sentiment Analysis (FSA) is an important domain application of sentiment analysis that has gained increasing attention in the past decade. FSA research falls into two main streams. The first stream focuses on defining tasks and developing techniques for FSA, and its main objective is to improve the performances of various FSA tasks by advancing methods and using/curating human-annotated datasets. The second stream of research focuses on using financial sentiment, implicitly or explicitly, for downstream applications on financial markets, which has received more research efforts. The main objective is to discover appropriate market applications for existing techniques. More specifically, the application of FSA mainly includes hypothesis testing and predictive modeling in financial markets. This survey conducts a comprehensive review of FSA research in both the technique and application areas and proposes several frameworks to help understand the two areas’ interactive relationship. This article defines a clearer scope for FSA studies and conceptualizes the FSA-investor sentiment-market sentiment relationship. Major findings, challenges, and future research directions for both FSA techniques and applications have also been summarized and discussed. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Du, Kelvin Xing, Frank Mao, Rui Cambria, Erik |
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Article |
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Du, Kelvin Xing, Frank Mao, Rui Cambria, Erik |
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Du, Kelvin |
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Financial sentiment analysis: techniques and applications |
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Financial sentiment analysis: techniques and applications |
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Financial sentiment analysis: techniques and applications |
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Financial sentiment analysis: techniques and applications |
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Financial sentiment analysis: techniques and applications |
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financial sentiment analysis: techniques and applications |
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2024 |
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https://hdl.handle.net/10356/179027 |
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1814047348403208192 |