揭示四支柱框架:中国管理过度自信的个性、公司、治理和财务根源的机器学习证据

IF 4.8 2区 经济学 Q1 BUSINESS, FINANCE
Yating Luo , Naiqian Zhang , Tong Tong , Xiaofei Jia
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引用次数: 0

摘要

本文研究了2011 - 2023年中国a股上市公司管理层过度自信的关键驱动因素。利用先进的机器学习算法,包括随机森林和XGBoost,我们分析了个人特征、公司特征、治理结构和成本效益对管理者过度自信的影响。我们的研究结果表明,治理结构是各种模型和数据集中管理过度自信的最重要决定因素。此外,非线性机器学习算法,特别是随机森林算法,在捕捉预测者和管理层过度自信之间的复杂关系方面,一直优于线性模型。该分析确定了五个关键的次要指标:员工人数、最大股东持股比例、企业规模、营业收入增长率和公司上市时间。值得注意的是,管理层过度自信随着公司成立时间、员工人数和企业规模的增加而增加,而随着营业收入增长率的增加而减少。与大股东所有权的关系呈现出更为复杂的非线性模式。这些发现对公司治理实践、投资者决策和监管政策具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling the four-pillar framework: Machine learning evidence on personality, firm, governance, and financial origins of managerial overconfidence in China
This study investigates the key factors driving managerial overconfidence in Chinese A-share listed companies from 2011 to 2023. Utilizing advanced machine learning algorithms, including Random Forest and XGBoost, we analyze the effects of personal traits, firm characteristics, governance structures, and cost-effectiveness on managerial overconfidence. Our findings indicate that governance structure is the most significant determinant of managerial overconfidence across various models and datasets. Moreover, non-linear machine learning algorithms, particularly Random Forest, consistently outperform linear models in capturing the complex relationships between predictors and managerial overconfidence. The analysis identifies five critical secondary indicators: staff number, top shareholder ownership, enterprise size, operating income growth rate, and company listing age. Notably, managerial overconfidence is found to increase with company age, staff number, and enterprise size, while it decreases with operating income growth rate. The relationship with top shareholder ownership exhibits a more complex and non-linear pattern. These findings have important implications for corporate governance practices, investor decision-making, and regulatory policies.
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来源期刊
Pacific-Basin Finance Journal
Pacific-Basin Finance Journal BUSINESS, FINANCE-
CiteScore
6.80
自引率
6.50%
发文量
157
期刊介绍: The Pacific-Basin Finance Journal is aimed at providing a specialized forum for the publication of academic research on capital markets of the Asia-Pacific countries. Primary emphasis will be placed on the highest quality empirical and theoretical research in the following areas: • Market Micro-structure; • Investment and Portfolio Management; • Theories of Market Equilibrium; • Valuation of Financial and Real Assets; • Behavior of Asset Prices in Financial Sectors; • Normative Theory of Financial Management; • Capital Markets of Development; • Market Mechanisms.
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