基于机器学习的创业公司寿命预测:以中国市场为例

Lei Wang, Tian-Ze Zhang, Yingting Chen, Yongyang Huang, Xitong Yin, Xiao Fan Liu, Daning Hu
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引用次数: 0

摘要

初创企业已成为经济增长的关键驱动力,促进了各行各业的创新、就业和知识传播。准确预测初创企业的生命周期对于投资者、政策制定者和企业家做出明智的决策和优化资源配置至关重要。然而,现有的预测模型,如线性回归和生存分析,在捕捉影响创业成功的因素的复杂相互作用和动态性质方面面临挑战。本文提出应用先进的机器学习技术XGBoost算法来提高启动寿命预测的准确性和可靠性。与传统方法相比,XGBoost提供了几个优势,包括对各种数据类型的适应性、对异常值的鲁棒性和高效的计算性能。通过结合广泛的特征,如财务、组织和死亡原因,该算法可以有效地捕获这些因素之间的复杂关系,而无需显式的特征工程。此外,应用SHAP值提供了额外的可解释性,帮助利益相关者更好地理解驱动启动寿命的因素。利用IT Orange数据集,我们调查了创业生命周期的决定因素,为创业生态系统中的利益相关者提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-based Start-up Company Lifespan Prediction: the Chinese Market as an Example
Start-ups have emerged as key drivers of economic growth, fostering innovation, job creation, and knowledge dissemination across various industries. Accurately forecasting start-up life spans is critical for investors, policymakers, and entrepreneurs to make informed decisions and optimize resource allocation. However, existing predictive models, such as linear regression and survival analysis, face challenges in capturing the complex interactions and dynamic nature of factors influencing start-up success. This paper proposes applying the XGBoost algorithm, an advanced machine learning technique, to enhance the accuracy and reliability of start-up life span predictions. XGBoost offers several advantages over traditional methods, including adaptability to various data types, robustness to outliers, and efficient computational performance. By incorporating a wide range of features, such as financial, organizational, and death reasons, the algorithm can effectively capture the complex relationships among these factors without explicit feature engineering. Moreover, applying SHAP values provides an additional layer of interpretability, aiding stakeholders in better understanding the factors driving start-up life span. Utilizing the IT Orange dataset, we investigate the determinants of startup life spans, offering valuable insights for stakeholders in the entrepreneurial ecosystem.
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