在组织与战略研究中充分利用人工智能和机器学习:监督式机器学习、因果推断与匹配模型

Making the most of AI and machine learning in organizations and strategy research: Supervised machine learning, causal inference, and matching models

STRATEGIC MANAGEMENT JOURNAL · 2024
被引 23
人大 AFT50UTD24ABS 4*

中文导读

指导研究者使用机器学习方法选择匹配变量,以增强倾向得分匹配模型中的因果推断,并通过公共-私人关系中的技术发明数据展示其有效性。

Abstract

Abstract Research Summary We spotlight the use of machine learning in two‐stage matching models to deal with sample selection bias. Recent advances in machine learning have unlocked new empirical possibilities for inductive theorizing. In contrast, the opportunities to use machine learning in regression studies involving large‐scale data with many covariates and a causal claim are still less well understood. Our core contribution is to guide researchers in the use of machine learning approaches to choosing matching variables for enhanced causal inference in propensity score matching models. We use an analysis of real‐world technology invention data of public–private relationships to demonstrate the method and find that machine learning can provide an alternative approach to ad hoc matching. However, as with any method, it is also important to understand its limitations. Managerial Summary This article explores the use of machine learning to enhance decision‐making, particularly in addressing sample selection bias in large‐scale datasets. The rapid development of AI and machine learning offers new, powerful tools especially for digital ecosystems where complex data and causal relationships are complex to analyze. We offer managers and stakeholders insight into the effective integration of machine learning for selecting critical variables in propensity score matching models. Through a detailed examination of real‐world data on technology inventions within public–private relationships, we demonstrate the effectiveness of machine learning as a robust alternative to traditional matching methods.

机器学习因果推断组织研究战略研究匹配模型