投资者行为的算法模型

A. Lo, Alexander Remerov
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引用次数: 1

摘要

我们提出了一种启发式方法,通过模拟与众所周知的行为偏差相关的简单系统投资策略的组合,使用从历史数据校准的参数,通过对行为金融学文献的广泛回顾,以功能形式激发。我们使用模拟和历史资产类别回报分别计算这些启发式的投资绩效和两两组合。启发式的均值回归或动量性质通常可以解释其对业绩的影响,这取决于资产回报是否与这种动态一致。这些算法表明,看似非理性的投资者行为实际上可能是由进化力量塑造的,在某些环境中可能有效,而在其他环境中则可能不适应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic Models of Investor Behavior
We propose a heuristic approach to modeling investor behavior by simulating combinations of simpler systematic investment strategies associated with well-known behavioral biases—in functional forms motivated by an extensive review of the behavioral finance literature—using parameters calibrated from historical data. We compute the investment performance of these heuristics individually and in pairwise combinations using both simulated and historical asset-class returns. The mean-reversion or momentum nature of a heuristic can often explain its effect on performance, depending on whether asset returns are consistent with such dynamics. These algorithms show that seemingly irrational investor behavior may, in fact, have been shaped by evolutionary forces and can be effective in certain environments and maladaptive in others.
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