Mixtures of Heterogeneous Experts

Callum Parton, A. Engelbrecht
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引用次数: 0

Abstract

No single machine learning algorithm is most accurate for all problems due to the effect of an algorithm's inductive bias. Research has shown that a combination of experts of the same type, referred to as a mixture of homogeneous experts, can increase the accuracy of ensembles by reducing the adverse effect of an algorithm's inductive bias. However, the predictive power of a mixture of homogeneous experts is still limited by the inductive bias of the algorithm that makes up the mixture. For this reason, combinations of different machine learning algorithms, referred to as a mixture of heterogeneous experts, has been proposed to take advantage of the strengths of different machine learning algorithms and to reduce the adverse effects of the inductive biases of these algorithms. This paper presents a mixture of heterogeneous experts, and evaluates its performance to that of a number of mixtures of homogeneous experts on a set of classification problems. The results indicate that a mixture of heterogeneous experts aggregates the advantages of experts, increasing the accuracy of predictions. The mixture of heterogeneous experts not only outperformed all homogeneous ensembles on two of the datasets, but also achieved the best overall accuracy rank across the various datasets.
异质专家的混合
由于算法的归纳偏差的影响,没有一种机器学习算法对所有问题都是最准确的。研究表明,同一类型专家的组合,即同质专家的混合,可以通过减少算法的归纳偏差的不利影响来提高集合的准确性。然而,同质专家混合的预测能力仍然受到组成混合的算法的归纳偏差的限制。因此,已经提出了不同机器学习算法的组合,称为异质专家的混合,以利用不同机器学习算法的优势,并减少这些算法的归纳偏差的不利影响。本文提出了一种混合异质专家的分类方法,并将其性能与若干混合同质专家的分类方法进行了比较。结果表明,异质专家的混合集合了专家的优势,提高了预测的准确性。异质专家的混合不仅在两个数据集上优于所有同质集成,而且在各个数据集上获得了最佳的总体精度排名。
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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