Quantifying a firm's AI engagement: Constructing objective, data-driven, AI stock indices using 10-K filings

IF 13.3 1区 管理学 Q1 BUSINESS Technological Forecasting and Social Change Pub Date : 2025-03-01 Epub Date: 2025-01-02 DOI:10.1016/j.techfore.2024.123965
Lennart Ante , Aman Saggu
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Abstract

This paper proposes an objective, data-driven approach using natural language processing (NLP) techniques to classify AI stocks by analyzing annual 10-K filings from 3395 NASDAQ-listed firms between 2010 and 2022. Each company's engagement with AI is classified through binary and weighted AI scores based on the frequency of AI-related terms. Using these metrics, we construct four AI stock indices—the Equally Weighted AI Index (AII), the Size-Weighted AI Index (SAII), and two Time-Discounted AI Indices (TAII05 and TAII5X)—offering different perspectives on AI investment. We validate our methodology through an event study on the launch of OpenAI's ChatGPT, demonstrating that companies with higher AI engagement saw significantly greater positive abnormal returns, with analyses supporting the predictive power of our AI measures. Our indices perform on par with or surpass 14 existing AI-themed ETFs and the Nasdaq Composite Index in risk-return profiles, market responsiveness, and overall performance, achieving higher average daily returns and risk-adjusted metrics without increased volatility. These results suggest our NLP-based approach offers a reliable, market-responsive, and cost-effective alternative to existing AI-related ETF products. Our methodology can also guide investors, asset managers, and policymakers in using corporate data to construct other thematic portfolios, contributing to a more transparent, data-driven, and competitive approach.
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量化公司的人工智能参与:使用10-K文件构建客观的、数据驱动的人工智能股票指数
本文通过分析2010年至2022年期间3395家纳斯达克上市公司的年度10-K文件,提出了一种客观的、数据驱动的方法,使用自然语言处理(NLP)技术对人工智能股票进行分类。根据人工智能相关术语的频率,通过二元和加权人工智能分数对每家公司与人工智能的接触进行分类。利用这些指标,我们构建了四个人工智能股票指数——等加权人工智能指数(AII)、规模加权人工智能指数(SAII)和两个时间贴现人工智能指数(TAII05和TAII5X)——为人工智能投资提供了不同的视角。我们通过对OpenAI ChatGPT发布的事件研究验证了我们的方法,表明人工智能参与度较高的公司获得了更大的正异常回报,分析支持了我们的人工智能措施的预测能力。我们的指数在风险回报曲线、市场反应能力和整体表现方面与现有的14只人工智能主题etf和纳斯达克综合指数相当或超过,在不增加波动性的情况下实现更高的平均日回报和风险调整指标。这些结果表明,我们基于nlp的方法为现有的人工智能相关ETF产品提供了一种可靠的、对市场敏感的、具有成本效益的替代方案。我们的方法还可以指导投资者、资产管理公司和政策制定者使用企业数据构建其他主题投资组合,从而为更透明、数据驱动和更具竞争力的方法做出贡献。
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来源期刊
CiteScore
21.30
自引率
10.80%
发文量
813
期刊介绍: Technological Forecasting and Social Change is a prominent platform for individuals engaged in the methodology and application of technological forecasting and future studies as planning tools, exploring the interconnectedness of social, environmental, and technological factors. In addition to serving as a key forum for these discussions, we offer numerous benefits for authors, including complimentary PDFs, a generous copyright policy, exclusive discounts on Elsevier publications, and more.
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