Computational experiments successfully predict the emergence of autocorrelations in ultra-high-frequency stock returns

Abstract

Social and economic systems are complex adaptive systems, in which heterogenous agents interact and evolve in a self-organized manner, and macroscopic laws emerge from microscopic properties. To understand the behaviors of complex systems, computational experiments based on physical and mathematical models provide a useful tools. Here, we perform computational experiments using a phenomenological order-driven model called the modified Mike-Farmer (MMF) to predict the impacts of order flows on the autocorrelations in ultra-high-frequency returns, quantified by Hurst index Hr. Three possible determinants embedded in the MMF model are investigated, including the Hurst index Hs of order directions, the Hurst index Hx and the power-law tail index αx of the relative prices of placed orders. The computational experiments predict that Hr is negatively correlated with αx and Hx and positively correlated with Hs. In addition, the values of αx and Hx have negligible impacts on Hr, whereas Hs exhibits a dominating impact on Hr. The predictions of the MMF model on the dependence of Hr upon Hs and Hx are verified by the empirical results obtained from the order flow data of 43 Chinese stocks.

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