Intelligent asset allocation via market sentiment views
The sentiment index of market participants has been extensively used for stock market prediction in recent years. Many financial information vendors also provide it as a service. However, utilizing market sentiment under the asset allocation framework has been rarely discussed. In this article, we i...
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sg-ntu-dr.10356-1403882020-05-28T08:45:20Z Intelligent asset allocation via market sentiment views Xing, Frank Z. Cambria, Erik Welsch, Roy E. School of Computer Science and Engineering Engineering::Computer science and engineering Stock Markets Covariance Matrices The sentiment index of market participants has been extensively used for stock market prediction in recent years. Many financial information vendors also provide it as a service. However, utilizing market sentiment under the asset allocation framework has been rarely discussed. In this article, we investigate the role of market sentiment in an asset allocation problem. We propose to compute sentiment time series from social media with the help of sentiment analysis and text mining techniques. A novel neural network design, built upon an ensemble of evolving clustering and long short-term memory, is used to formalize sentiment information into market views. These views are later integrated into modern portfolio theory through a Bayesian approach. We analyze the performance of this asset allocation model from many aspects, such as stability of portfolios, computing of sentiment time series, and profitability in our simulations. Experimental results show that our model outperforms some of the most successful forecasting techniques. Thanks to the introduction of the evolving clustering method, the estimation accuracy of market views is significantly improved. 2020-05-28T08:45:19Z 2020-05-28T08:45:19Z 2018 Journal Article Xing, F. Z., Cambria, E., & Welsch, R. E. (2018). Intelligent asset allocation via market sentiment views. IEEE Computational Intelligence Magazine, 13(4), 25-34. doi:10.1109/MCI.2018.2866727 1556-603X https://hdl.handle.net/10356/140388 10.1109/MCI.2018.2866727 2-s2.0-85055283489 4 13 25 34 en IEEE Computational Intelligence Magazine © 2018 IEEE. All rights reserved. |
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Engineering::Computer science and engineering Stock Markets Covariance Matrices Xing, Frank Z. Cambria, Erik Welsch, Roy E. Intelligent asset allocation via market sentiment views |
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The sentiment index of market participants has been extensively used for stock market prediction in recent years. Many financial information vendors also provide it as a service. However, utilizing market sentiment under the asset allocation framework has been rarely discussed. In this article, we investigate the role of market sentiment in an asset allocation problem. We propose to compute sentiment time series from social media with the help of sentiment analysis and text mining techniques. A novel neural network design, built upon an ensemble of evolving clustering and long short-term memory, is used to formalize sentiment information into market views. These views are later integrated into modern portfolio theory through a Bayesian approach. We analyze the performance of this asset allocation model from many aspects, such as stability of portfolios, computing of sentiment time series, and profitability in our simulations. Experimental results show that our model outperforms some of the most successful forecasting techniques. Thanks to the introduction of the evolving clustering method, the estimation accuracy of market views is significantly improved. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Xing, Frank Z. Cambria, Erik Welsch, Roy E. |
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Article |
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Xing, Frank Z. Cambria, Erik Welsch, Roy E. |
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Xing, Frank Z. |
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Intelligent asset allocation via market sentiment views |
title_short |
Intelligent asset allocation via market sentiment views |
title_full |
Intelligent asset allocation via market sentiment views |
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Intelligent asset allocation via market sentiment views |
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Intelligent asset allocation via market sentiment views |
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intelligent asset allocation via market sentiment views |
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2020 |
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https://hdl.handle.net/10356/140388 |
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