Prediction in financial markets: The case for small disjuncts

V. Dhar
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引用次数: 21

Abstract

Predictive models in regression and classification problems typically have a single model that covers most, if not all, cases in the data. At the opposite end of the spectrum is a collection of models, each of which covers a very small subset of the decision space. These are referred to as “small disjuncts.” The trade-offs between the two types of models have been well documented. Single models, especially linear ones, are easy to interpret and explain. In contrast, small disjuncts do not provides as clean or as simple an interpretation of the data, and have been shown by several researchers to be responsible for a disproportionately large number of errors when applied to out-of-sample data. This research provides a counterpoint, demonstrating that a portfolio of “simple” small disjuncts provides a credible model for financial market prediction, a problem with a high degree of noise. A related novel contribution of this article is a simple method for measuring the “yield” of a learning system, which is the percentage of in-sample performance that the learned model can be expected to realize on out-of-sample data. Curiously, such a measure is missing from the literature on regression learning algorithms. Pragmatically, the results suggest that for problems characterized by a high degree of noise and lack of a stable knowledge base it makes sense to reconstruct the portfolio of small rules periodically.
金融市场的预测:小脱节的理由
回归和分类问题中的预测模型通常有一个单一的模型,该模型覆盖了数据中的大多数(如果不是全部)情况。在光谱的另一端是模型的集合,每个模型只覆盖决策空间的一个非常小的子集。这些被称为“小分离”。这两种模型之间的权衡已经被很好地记录下来了。单一模型,特别是线性模型,很容易解释和解释。相比之下,小的分离不能提供清晰或简单的数据解释,并且已经被几位研究人员证明,当应用于样本外数据时,会造成不成比例的大量错误。这项研究提供了一个相反的观点,证明了“简单”小分离的组合为金融市场预测提供了一个可信的模型,这是一个具有高度噪声的问题。本文的一个相关的新颖贡献是一种测量学习系统“产量”的简单方法,即学习模型在样本外数据上预期实现的样本内性能的百分比。奇怪的是,关于回归学习算法的文献中缺少这样的度量。实际应用中,研究结果表明,对于具有高度噪声且缺乏稳定知识库的问题,周期性地重建小规则组合是有意义的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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