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Market Microstructure: Can Dinosaurs Return? A Self-Organizing Map Approach under an Evolutionary Framework

机译:市场微观结构:恐龙能重返市场吗?演化框架下的自组织映射方法

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This paper extends a previous market microstructure model, which investigated fraction dynamics of trading strategies. Our model consisted of two parts: Genetic Programming, which acted as an inference engine for trading rules, and Self-Organizing Maps (SOM), which was used for clustering the above rules into trading strategy types. However, for the purposes of the experiments of our previous work, we needed to make the assumption that SOM maps, and thus strategy types, remained the same over time. Nevertheless, this assumption could be considered as strict, and even unrealistic. In this paper, we relax this assumption. This offers a significant extension to our model, because it makes it more realistic. In addition, this extension allows us to investigate the dynamics of market behavior. We are interested in examining whether financial markets' behavior is non-stationary, because this implies that strategies from the past cannot be applied to future time periods, unless they have co-evolved with the market. The results on an empirical financial market show that its behavior constantly changes; thus, agents' strategies need to continuously adapt to the changes taking place in the market, in order to remain effective.
机译:本文扩展了先前的市场微观结构模型,该模型研究了交易策略的分数动态。我们的模型由两部分组成:遗传编程(用作交易规则的推理引擎)和自组织映射(SOM),用于将上述规则聚类为交易策略类型。但是,出于我们先前工作的实验目的,我们需要假设SOM映射以及策略类型在一段时间内保持不变。然而,这个假设可以被认为是严格的,甚至是不现实的。在本文中,我们放宽了这一假设。这为我们的模型提供了重要的扩展,因为它使模型更加真实。此外,此扩展使我们能够调查市场行为的动态。我们有兴趣检查金融市场的行为是否不稳定,因为这意味着过去的策略无法应用于未来的时间段,除非它们与市场共同发展。根据经验金融市场的结果表明,其行为不断变化。因此,代理商的策略需要不断适应市场变化,以保持有效性。

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