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首页> 外文期刊>Annals of Operations Research >Measuring short-term risk of initial public offering of equity securities: a hybrid Bayesian and Data-Envelopment-Analysis-based approach
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Measuring short-term risk of initial public offering of equity securities: a hybrid Bayesian and Data-Envelopment-Analysis-based approach

机译:衡量股权证券首次公开发行的短期风险:混合贝叶斯和基于数据包络分析的方法

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摘要

This paper offers a methodology to estimate an unconditional probability density function (PDF) for the stock price of an initial public offering (IPO), at a short-term post-IPO horizon. The resultant PDF is unique to the IPO of interest (IPOI) and serves to model the short-term post-market uncertainty associated with its price. Such a methodology is unprecedented in the IPO risk literature since the ex ante quantification of the short-term uncertainty associated with the stock price of a newly public firm was viewed as burdened by the lack of sufficient accounting and market history at the IPO stage. This gap is addressed here through recognizing that common in most IPO cases are the scarcity of hard data and abundance of soft data (strong prior belief), and that one can combine Bayesian inference and Data Envelopment Analysis (DEA) to develop a unique risk quantification setting that befits and serves these two characteristics of IPOs. In this setting, DEA serves to quantify the prior belief, to be subsequently updated in the Bayesian phase. This paper remains the first of its kind which unravels the IPO risk analysis from such perspective. It develops an iterative process that uses DEA to design a multi-dimensional similarity metric to find the 'comparables' to IPOI, and thereof the closest comparable to it, whereupon Bayesian inference is employed to utilize the information available from these comparables to sequentially update and revise the IPOI's prior PDF. The validity of the proposed risk methodology was examined by backtesting analyses.
机译:本文提供了一种方法来估算关于首次公开发行(IPO)的股票价格的无条件概率密度函数(PDF),在短期后的IPO地平线上。结果的PDF对利息的IPO(IPOI)是独一无二的,并用于模拟与其价格相关的短期市场不确定性。这种方法在IPO风险文献中是前所未有的,因为在与新公共公司股票价格相关的短期不确定性的前赌注量化被视为IPO阶段缺乏足够的会计和市场历史的负担。这里通过认识到大多数IPO病例中的常见是缺乏困难数据和丰富的软数据(强先前信仰)的缺点,并且可以将贝叶斯推断和数据包络分析(DEA)相结合,开发独特的风险量化设置该刻录物并服务于IPO的这两个特征。在此设置中,DEA用于量化现有信念,随后在贝叶斯阶段更新。本文仍然是第一个从这种角度解开IPO风险分析的首先。它开发了一个迭代过程,使用DEA设计多维相似度量,以找到IPOI的“比较”,及其与其最接近的相当,其中用于利用这些比较可从这些比较可获得的信息来顺序更新和修改IPOI的PDF。通过反向分析检查了拟议风险方法的有效性。

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