多效性
特质
多元统计
计量经济学
无效假设
统计假设检验
空(SQL)
生物
遗传学
统计
进化生物学
表型
数学
计算机科学
基因
数据挖掘
程序设计语言
作者
Qing Jiang,Xun Zhang,Min Wu,Xingwei Tong
标识
DOI:10.1080/03610926.2019.1609036
摘要
Genetic pleiotropy occurs when a single gene influences two or more seemingly unrelated phenotypic traits. It is significant to detect pleiotropy and understand its causes. However, most current statistical methods to discover pleiotropy mainly test the null hypothesis that none of the traits is associated with a variant, which departures from the null to test just one associated trait or k associated traits. Schaid et al. (2016 Schaid, D. J., X. Tong, B. Larrabee, R. B. Kennedy, G. A. Poland, and J. P. Sinnwell. 2016. Statistical methods for testing genetic pleiotropy. Genetics 204 (2):483–97. doi:10.1534/genetics.116.189308.[Crossref], [PubMed], [Web of Science ®] , [Google Scholar]) first proposed a sequential testing framework to analyze pleiotropy based on a linear model and a multivariate normal distribution. In this paper, we analyze the Economic pleiotropy which occurs when an economic action or policy influences two or more economic phenomena. In this paper, we extend the linear model to Box-Cox transformation model and proposed a new decision method. It improves the efficiency of hypothesis test and controls the Type I error. We then apply the method using economic data to multivariate sectoral employments in response to governmental expenditures and provide a quantitative assessment and some insights of different impacts from economic policy.
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