A Bayesian Approach to Ranking Private Companies Based on Predictive Indicators

M. Dixon, J. Chong
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引用次数: 4

Abstract

Private equity investors seek to rank potential investment opportunities in growth stage private companies within an industry sector. The sparsity of historical investment transaction data for many growth stage private companies' may present a major obstacle to using statistical methods to discern industry specific features associated with successful and failed companies.This paper describes a Bayesian ranking approach based on i extracting and selecting features; ii training support vector machine classifiers from feature pairs of labeled companies in an industry; iii non-parametric estimation of posterior probabilities of success and failure; and iv ranking unlabeled companies within a cohort based on scores derived from posterior probability estimates. We anticipate that this approach will not only be of interest to statisticians and machine learning specialists with an interest in venture capital and private equity but extend to a broader readership whose interests lie in classification methods where missing data is the primary obstacle.
基于预测指标的民营企业排名贝叶斯方法
私人股本投资者寻求对某个行业内处于成长期的私人公司的潜在投资机会进行排名。许多处于成长期的私营公司的历史投资交易数据的稀缺性,可能会给使用统计方法来辨别与成功和失败公司相关的行业特定特征带来重大障碍。本文描述了一种基于i提取和选择特征的贝叶斯排序方法;从一个行业中被标记公司的特征对中训练支持向量机分类器;成功和失败后验概率的非参数估计;根据后验概率估计得出的分数,对队列中未标记的公司进行排名。我们预计,这种方法不仅会引起对风险投资和私募股权感兴趣的统计学家和机器学习专家的兴趣,而且会扩展到更广泛的读者,他们的兴趣在于分类方法,其中缺失数据是主要障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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