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

Delmar, Frédéric LU ; Wallin, Jonas LU and Nofal, Ahmed Maged (2022) In Journal of Business Venturing 37(5).
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,... (More)

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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organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
Longitudinal, Methods, New firm growth and survival, Quantitative
in
Journal of Business Venturing
volume
37
issue
5
article number
106245
publisher
Elsevier
external identifiers
  • scopus:85135357504
ISSN
0883-9026
DOI
10.1016/j.jbusvent.2022.106245
language
English
LU publication?
yes
id
7cf0d912-ddce-48ac-aeb8-e46e649c62cb
date added to LUP
2022-09-12 10:48:50
date last changed
2022-09-12 10:48:50
@article{7cf0d912-ddce-48ac-aeb8-e46e649c62cb,
  abstract     = {{<p>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.</p>}},
  author       = {{Delmar, Frédéric and Wallin, Jonas and Nofal, Ahmed Maged}},
  issn         = {{0883-9026}},
  keywords     = {{Longitudinal; Methods; New firm growth and survival; Quantitative}},
  language     = {{eng}},
  number       = {{5}},
  publisher    = {{Elsevier}},
  series       = {{Journal of Business Venturing}},
  title        = {{Modeling new-firm growth and survival with panel data using event magnitude regression}},
  url          = {{http://dx.doi.org/10.1016/j.jbusvent.2022.106245}},
  doi          = {{10.1016/j.jbusvent.2022.106245}},
  volume       = {{37}},
  year         = {{2022}},
}