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股票市场收益风险结构的贝叶斯稳健移位检测

A Bayesian Robust Detection of Shift in the Risk Structure of Stock Market Returns

Journal of the American Statistical Association · 1982
被引 28
ABS 4

中文导读

提出一种稳健统计方法,能在数据偏离正态假设时检测股票价格参数在未知时点的变化,并应用于1971-1974年美国股市数据,分析个股系统性风险的变动。

Abstract

Abstract In this article we provide a statistical procedure for the analysis of stock market prices that is robust toward departures from the normal distribution assumption and that can detect and evaluate a shift of parameters at an unknown time point. The method is an adaptation of a Bayesian inferential procedure developed by Box and Tiao that allows data to deviate moderately from the normal distribution model. It is applied to a set of U.S. stock market prices for 1971–1974. In addition to the detection of shift in distribution parameters, the procedure is also applied to the examination of shift of the “beta coefficients” that represent the degree of undiversifiable (systematic) risk of individual securities. Implications of the empirical findings for financial theories and their applications are sketched.

金融经济学贝叶斯统计股票市场风险管理计量经济学