Artificial Intelligence influence in individual investors performance for capital gains in the stock market
Abstract
This research paper investigates the impact of Artificial Intelligence (AI) on the performance of individual investors in achieving capital gains in the stock market. With the proliferation of AI-driven tools and algorithms in financial decision-making, there is a growing need to assess how these technologies influence the investment strategies and outcomes for individual investors. The study employs a mixed-methods approach, combining quantitative analysis of trading data and qualitative exploration of investor experiences. The research aims to uncover patterns in AI utilization, examine the correlation between AI-driven decisions and investment performance, and analyze the psychological and behavioral aspects of individual investors interacting with AI tools. The findings are expected to provide valuable insights into the nuanced dynamics between AI technology and individual investors, shedding light on the factors contributing to successful capital gains and the challenges associated with the adoption of AI in the stock market.
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