混合型企业成功与失败分类预测模型:以伊朗加速创业为例

S. Sadatrasoul, O. Ebadati, R. Saedi
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引用次数: 1

摘要

本研究的目的是通过识别和评估成功变量,建立一种新的伊朗初创企业成功失败(S/F)数据挖掘分类预测模型,以减少早期创业成功预测的不确定性,填补该领域前人研究的空白。为此,本文试图将Bill Gross和Robert Lussier的S/F预测模型变量和算法扩展到从加速器开始的伊朗初创企业的新背景下,以建立新的S/F预测模型。本文选取了2013年至2018年在加速器中成立的161家伊朗初创企业作为样本,从文献中提取了39个变量,并将其分为五组。然后将样本输入六种著名的分类算法。在其他6种基于分类的S/F预测模型中,两阶段叠加作为分类模型表现最好,它可以预测成功或失败的二元因变量,平均准确率为89%。研究还发现,“从加速器开始”、“创业者的创造力和解决问题的能力”、“先发优势”和“种子投资金额”是影响创业成功的4个最重要的变量,其他15个变量的重要性较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Business Success Versus Failure Classification Prediction Model: A Case of Iranian Accelerated Start-ups
The purpose of this study is to reduce the uncertainty of early stage startups success prediction and filling the gap of previous studies in the field, by identifying and evaluating the success variables and developing a novel business success failure (S/F) data mining classification prediction model for Iranian start-ups. For this purpose, the paper is seeking to extend Bill Gross and Robert Lussier S/F prediction model variables and algorithms in a new context of Iranian start-ups which starts from accelerators in order to build a new S/F prediction model. A sample of 161 Iranian start-ups which are based in accelerators from 2013 to 2018 is applied and 39 variables are extracted from the literature and organized in five groups. Then the sample is fed into six well-known classification algorithms. Two staged stacking as a classification model is the best performer among all other six classification based S/F prediction models and it can predict binary dependent variable of success or failure with accuracy of 89% on average. Also finding shows that “starting from Accelerators”, “creativity and problem solving ability of founders”, “fist mover advantage” and “amount of seed investment” are the four most important variables which affects the start-ups success and the other 15 variables are less important.
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