迈向管理研究中的预测:来自运筹学的见解及关于性别与母亲收入差距的实证证据

Towards forecasting in management studies: insights from operations research and empirical evidence on gender and motherhood income gap

Journal of the Operational Research Society · 2025
被引 0
ABS 3

中文导读

本文质疑管理研究中过度依赖模型拟合的做法,通过系统综述和实证分析性别与母亲收入差距,提出结合运筹学预测指标来提升理论预测能力和实际应用价值。

Abstract

Management theories and models aim to predict future states and outcomes. Yet, as management scholars, we often tend to prioritise model fit metrics over prediction and forecasting, assuming that strong model fit inherently leads to accurate predictions. We challenge this assumption, arguing that an exclusive focus on model fit can yield theories that fail to generalise to new datasets, thereby limiting their forecasting accuracy and practical relevance. In a systematic review of 6,514 studies, we find a pronounced dominance of model fit approaches. Model fit metrics are susceptible to overfitting, where models capture noise rather than patterns, and underfitting, where key relationships are overlooked. Both problems undermine predictive performance. Drawing on insights from operations research, we apply newly developed forecasting metrics to address these limitations. Empirically examining the gender gap and motherhood penalty in returns from employment and entrepreneurship, we demonstrate how these metrics can complement traditional fit measures. By integrating multiple assessment metrics, we offer a comprehensive framework for improving both predictive accuracy and theoretical development in management research. We provide the Stata syntax that scholars can download and use to assess the forecasting ability of their models.

管理研究预测方法性别收入差距运筹学