利用机器学习识别和衡量家族对公司的影响

IF 9.5 1区 管理学 Q1 BUSINESS
Mario Daniele Amore , Valentino D’Angelo , Isabelle Le Breton-Miller , Danny Miller , Valerio Pelucco , Marc Van Essen
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引用次数: 0

摘要

许多研究都关注家族企业。然而,把握这些组织的本质仍然具有挑战性,因为企业的家族性可以有多种形式,而这些形式很难通过传统数据进行追踪。我们使用 ChatGPT(机器学习的一种应用),试图在大型数据集中揭示家族对企业的复杂而无形的影响。虽然 ChatGPT 通常按照股权标准对家族企业进行分类,但它似乎能够衡量家族的传统和价值观。因此,在那些家族对企业具有强大影响力的国家,即使没有大量股权,它也能发现更多的家族企业。此外,ChatGPT 通常将单人创办的企业视为非家族企业,而对于同名企业、继承人领导的企业以及拥有多名家族董事的企业,则给予较高的家族评分。最后,使用 ChatGPT 对家族企业进行分类可以为投资者提供财务相关信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using machine learning to identify and measure the family influence on companies
Many studies have focused on family firms. Yet, grasping the nature of these organizations remains challenging because firms’ familiness can take many forms, which are hard to trace with traditional data. We use ChatGPT – an application of machine learning – to try to unravel the complex and intangible influence of families on firms in large datasets. Whereas it often classifies family firms consistently with equity criteria, ChatGPT appears able to gauge families’ legacy and values. Hence, it detects more family firms in countries where families have a strong influence on firms even without large equity stakes. Also, ChatGPT often treats lone-founder firms as non-family firms, whereas it assigns a higher family score to firms that are eponymous, heir-led, and with multiple family directors. Finally, classifying family firms using ChatGPT provides financially relevant information to investors.
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来源期刊
CiteScore
11.40
自引率
19.40%
发文量
53
期刊介绍: The Journal of Family Business Strategy takes an international perspective, providing a platform for research that advances our understanding of family businesses. Welcoming submissions across various dimensions, the journal explores the intricate interplay between family dynamics and business operations, contributing new insights to this specialized field.
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