Article ID Journal Published Year Pages File Type
974042 Physica A: Statistical Mechanics and its Applications 2016 19 Pages PDF
Abstract

•We model spatial dependence and serial correlation in stock returns.•We use a spatiotemporal model with time-varying spatial weight matrices.•Behavioral factors based on firm characteristics are relevant for stock returns.•Different Value-at-Risk (VaR) models are used and compared to each other.

This paper generalizes a recently proposed spatial autoregressive model and introduces a spatiotemporal model for forecasting stock returns. We support the view that stock returns are affected not only by the absolute values of factors such as firm size, book-to-market ratio and momentum but also by the relative values of factors like trading volume ranking and market capitalization ranking in each period. This article studies a new method for constructing stocks’ reference groups; the method is called quartile method. Applying the method empirically to the Shanghai Stock Exchange 50 Index, we compare the daily volatility forecasting performance and the out-of-sample forecasting performance of Value-at-Risk (VaR) estimated by different models. The empirical results show that the spatiotemporal model performs surprisingly well in terms of capturing spatial dependences among individual stocks, and it produces more accurate VaR forecasts than the other three models introduced in the previous literature. Moreover, the findings indicate that both allowing for serial correlation in the disturbances and using time-varying spatial weight matrices can greatly improve the predictive accuracy of a spatial autoregressive model.

Related Topics
Physical Sciences and Engineering Mathematics Mathematical Physics
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