Partial mutual information based algorithm for input variable selection For time series forecasting

A. Darudi, Shideh Rezaeifar, Mohammd Hossein Javidi Dasht Bayaz
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引用次数: 12

Abstract

In time series forecasting, it is a crucial step to identify proper set of variables as the inputs to the model. Many input variable selection (IVS) techniques fail to perform suitably due to inherent assumption of linearity or rich redundancy between variables. The motivation behind this research is to propose an input variable selection algorithm which not only can handle nonlinear problems and redundant data, but also is straightforward and easy-to-implement. In the field of information theory, partial mutual information is a reliable measure to evaluate linear/nonlinear dependency and redundancy among variables. In this paper, we propose an IVS algorithm based on partial mutual information. The algorithm is tested on three time series with known dependence attributes. Results confirm credibility of the proposed method to capture linear/non-linear dependence and redundancy between variables.
基于部分互信息的时间序列预测输入变量选择算法
在时间序列预测中,确定一组合适的变量作为模型的输入是至关重要的一步。许多输入变量选择(IVS)技术由于固有的线性假设或变量之间的丰富冗余而不能很好地执行。本研究的动机是提出一种既能处理非线性问题和冗余数据,又简单易行的输入变量选择算法。在信息论领域,部分互信息是评价变量间线性/非线性依赖和冗余的可靠测度。本文提出了一种基于部分互信息的IVS算法。该算法在三个已知依赖属性的时间序列上进行了测试。结果证实了所提出的方法在捕获变量之间的线性/非线性依赖和冗余方面的可信度。
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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