Timotej Jagrič, Dušan Fister, Stefan Otto Grbenic, Aljaz Herman
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引用次数: 0
摘要
组建最佳同行组是乘数估值的关键步骤。其中,传统的回归方法要求事先定义最优的同行选择标准集和同行组的最优规模。由于公司的复杂性和多样性,在选择标准方面不存在一套普遍适用的封闭互补规则,因此本研究只对非上市公司进行研究,因此与现有研究进行直接比较是不切实际的。为解决这一问题,我们通过严格的回归分析建立了一个定制基准模型。我们的目的是将其结果与我们的独特方法并列,丰富对非上市公司交易动态的理解。为了将线性回归方法的性能发挥到极致,我们采用了各种选择标准数据集(全面以及 F 和 NCA 优化)。利用 20,000 多项私人公司交易样本,采用乘数预测误差测量(强调偏差和准确性)以及直接预测优越性来评估模型性能。以五个企业和股权价值倍数为重点,结果得出的总体结论是,自组织图算法在最大限度地减少乘数预测误差度量的估值误差方面,以及在直接预测优越性方面,均优于传统的线性回归模型。因此,机器学习方法为改善民营企业乘数估值中的同行选择提供了一种很有前景的方法。
Private Firm Valuation Using Multiples: Can Artificial Intelligence Algorithms Learn Better Peer Groups?
Forming optimal peer groups is a crucial step in multiplier valuation. Among others, the traditional regression methodology requires the definition of the optimal set of peer selection criteria and the optimal size of the peer group a priori. Since there exists no universally applicable set of closed and complementary rules on selection criteria due to the complexity and the diverse nature of firms, this research exclusively examines unlisted companies, rendering direct comparisons with existing studies impractical. To address this, we developed a bespoke benchmark model through rigorous regression analysis. Our aim was to juxtapose its outcomes with our unique approach, enriching the understanding of unlisted company transaction dynamics. To stretch the performance of the linear regression method to the maximum, various datasets on selection criteria (full as well as F- and NCA-optimized) were employed. Using a sample of over 20,000 private firm transactions, model performance was evaluated employing multiplier prediction error measures (emphasizing bias and accuracy) as well as prediction superiority directly. Emphasizing five enterprise and equity value multiples, the results allow for the overall conclusion that the self-organizing map algorithm outperforms the traditional linear regression model in both minimizing the valuation error as measured by the multiplier prediction error measures as well as in direct prediction superiority. Consequently, the machine learning methodology offers a promising way to improve peer selection in private firm multiplier valuation.