Within the Private Equity (PE) market, the event of a private company undertaking an Initial Public Offering (IPO) is usually a very high-return one for the investors in the company. For this reason, an effective predictive model for the IPO event is considered as a valuable tool in the PE market, an endeavor in which publicly available quantitative information is generally scarce. In this paper, we describe a data-analytic procedure for predicting the probability with which a company will go public in a given forward period of time. The proposed method is based on the interplay of a neural network (NN) model for estimating the overall event probability, and Survival Analysis (SA) for further modeling the probability of the IPO event in any given interval of time. The proposed neuro-survival model is tuned and tested across nine industrial sectors using real data from the Thomson Reuters Eikon PE database.
翻译:在私募股市内,一家私营公司进行初步公开提供(IPO)的事件对公司投资者来说通常是一种回报率很高的事件,因此,在PE市场中,对IPO事件的有效预测模型被视为一种有价值的工具,公众可公开获得的定量信息一般很少。在本文中,我们描述了一种数据分析程序,用于预测公司在某一前期内公开的概率。拟议方法基于神经网络模型(NN)对估计总事件概率的相互作用,以及生存分析模型(SA)对在任何特定时间段内进一步模拟IPO事件概率的相互作用。拟议的神经生存模型利用Thomson路透社Eikon PE数据库的实际数据,在九个工业部门进行了调整和测试。