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News versus Sentiment

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News versus Sentiment

Predicting Stock Returns from News Stories

Federal Reserve Board,

5 мин на чтение
5 основных идей
Аудио и текст

Что внутри?

Artificial intelligence and algorithms may inform the future of stock picking.

автоматическое преобразование текста в аудио
автоматическое преобразование текста в аудио

Editorial Rating

8

Qualities

  • Analytical
  • Scientific
  • Eye Opening

Recommendation

Algorithms have been buying and selling stocks for some time now, and in the past few years, as many media outlets look for cost savings, algorithms have also begun writing news stories. So the time may be right for artificial intelligence to take over the management of investments, sending the multitrillion-dollar investment industry into a paradigm shift. An intriguing new paper from economists Steven L. Heston and Nitish R. Sinha demonstrates that artificial intelligence and algorithms can successfully make share price predictions using news stories. getAbstract recommends this thought-provoking but highly technical description of novel research on news sentiment analysis and stock prices.

Summary

Artificial intelligence and textual analysis now play important roles in finance and markets. While academic research has lagged behind commercial applications, a growing body of work shows that “neural networks” – systems that can assess the interactions of various functions, much as a biological central nervous system can – and content analyses of news stories can predict stock returns, corporate distress and bankruptcy.

An in-depth textual analysis examined news stories – Thomson Reuters’s database of more...

About the Authors

Steven L. Heston is a professor of finance at the University of Maryland. Nitish R. Sinha is an economist at the Board of Governors of the Federal Reserve System.


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