Modeling new-firm growth and survival with panel data using event magnitude regression

IF 7.7 1区 管理学 Q1 BUSINESS Journal of Business Venturing Pub Date : 2022-09-01 DOI:10.1016/j.jbusvent.2022.106245
Frédéric Delmar , Jonas Wallin , Ahmed Maged Nofal
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引用次数: 4

Abstract

We introduce a new model to address three methodological biases in research on new venture growth and survival. The model offers entrepreneurship scholars numerous benefits. The biases are identified using a systematic review of 96 papers using longitudinal data published over a period of 20 years. They are: (1) distributional properties of new ventures; (2) selection bias; and (3) causal asymmetry. The biases make the popular use of normal distribution models problematic. As a potential solution, we introduce and test an event magnitude regression model approach (EMM). In this two-stage model, the first model explores the probability of four events: a firm staying the same size, expanding, contracting, or exiting. In the second stage, if the firm contracts or expands, we estimate the magnitude of the change. A suggested benefit is that researchers can better separate the likelihood of an event from its magnitude, thereby opening new avenues for research. We provide an overview of our model analyzing an example data set involving longitudinal venture level data. We provide a new package for the statistical software R. Our findings show that EMM outperforms the widely adopted normal distribution model. We discuss the benefits and consequences of our model, identify areas for future research, and offer recommendations for research practice.

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使用事件大小回归对面板数据进行新公司成长和生存建模
我们引入了一个新的模型来解决新创企业成长和生存研究中的三个方法学偏差。这种模式为创业学者提供了许多好处。这些偏差是通过对96篇论文的系统回顾来确定的,这些论文使用了20年来发表的纵向数据。它们是:(1)新企业的分配性质;(2)选择偏差;(3)因果不对称。这些偏差使得普遍使用的正态分布模型存在问题。作为一种潜在的解决方案,我们引入并测试了事件大小回归模型方法(EMM)。在这个两阶段模型中,第一个模型探讨了四种事件的概率:企业保持规模不变、扩张、收缩或退出。在第二阶段,如果企业收缩或扩张,我们估计变化的幅度。一个建议的好处是,研究人员可以更好地将事件的可能性与其规模分开,从而为研究开辟新的途径。我们概述了我们的模型,分析了一个涉及纵向风险水平数据的示例数据集。我们为统计软件r提供了一个新的软件包。我们的研究结果表明,EMM优于广泛采用的正态分布模型。我们讨论了我们的模型的好处和后果,确定了未来研究的领域,并为研究实践提供了建议。
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来源期刊
CiteScore
16.70
自引率
6.90%
发文量
59
审稿时长
77 days
期刊介绍: The Journal of Business Venturing: Entrepreneurship, Entrepreneurial Finance, Innovation and Regional Development serves as a scholarly platform for the exchange of valuable insights, theories, narratives, and interpretations related to entrepreneurship and its implications. With a focus on enriching the understanding of entrepreneurship in its various manifestations, the journal seeks to publish papers that (1) draw from the experiences of entrepreneurs, innovators, and their ecosystem; and (2) tackle issues relevant to scholars, educators, facilitators, and practitioners involved in entrepreneurship. Embracing diversity in approach, methodology, and disciplinary perspective, the journal encourages contributions that contribute to the advancement of knowledge in entrepreneurship and its associated domains.
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