Potential Predictors of Psychologically Based Stock Price Movements

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Date

2024-08

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MDPI (Basel, Switzerland)

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(c) The author/s
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Abstract

Investment in stocks is increasingly dependent on artificial intelligence (AI), but the psychological and social factors that affect stock prices may not be fully covered by the measures currently used in AI training. Here, we search for additional measures that may improve AI predictions. We start by reviewing stock price movements that appear to be affected by social and psychological factors, drawing on stock market behaviour during the COVID-19 pandemic. A review of processes that are likely to produce such stock market movements follows: the disposition effect, momentum, and the response to information. These processes are then explained by regression to the mean, negativity bias, the availability mechanism, and information diffusion. Taking account of these processes and drawing on the consumer behaviour literature, we identify three factors which may not be covered by current AI training data that could affect stock prices: publicity in relation to capitalization, stock-holding penetration in relation to capitalization, and changes in the penetration of stock holding.

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momentum, stock price prediction, artificial intelligence, availability, negativity bias, information diffusion

Citation

East R, Wright M. (2024). Potential Predictors of Psychologically Based Stock Price Movements. Journal of Risk and Financial Management. 17. 8.

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Except where otherwised noted, this item's license is described as (c) The author/s