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Big Data Analysis of the Dynamic Effects of Business Cycles on Stock Prices in Japan

机译:商业周期动态效应对日本股价的大数据分析

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In this paper, we analyze the dynamic effects of business cycles on stock prices using a regression model with a time-varying coefficient. The regression model is constructed using the Nikkei Stock Average (NSA) as the dependent variable and the coincident Composite Index in Japan (CIJ) as the explanatory variable. The Bayesian smoothness priors technique is applied to estimate the time-varying coefficient. Moreover, we analyze the behavior of the estimated time-varying coefficient to explain the dynamic relationship between business cycles and stock prices. The impact of some economic and social events on stock prices in Japan is also analyzed by examining the estimated observation noise in the regression model. As an empirical example, we analyze the daily time series of NSA closing values from January 4, 1991, to December 29, 2017, together with monthly CIJ data over the same period.
机译:在本文中,我们使用带有时变系数的回归模型分析商业周期对股票价格的动态效应。回归模型使用日经股票平均(NSA)作为因变量和日本的重合综合指数(CIJ)作为解释性变量来构建。贝叶斯平滑度前驱技术适用于估计时变系数。此外,我们分析了估计的时变系数的行为来解释商业周期与股票价格之间的动态关系。通过检查回归模型中的估计观察噪声,还分析了一些经济和社会事件对日本股票价格的影响。作为一个经验的例子,我们分析了1991年1月4日至2017年12月29日的NSA闭幕价值的日常时间序列,同时每月CIJ数据在同一时期。

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