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Evolving linear transformations with a rotation-angles/scaling representation

机译:使用旋转角度/缩放表示进化的线性变换

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摘要

Similarity between patterns is commonly used in many distance-based classification algorithms like KNN or RBF. Generalized Euclidean Distances (GED) can be optimized in order to improve the classification success rate in distance-based algorithms. This idea can be extended to any classification algorithm, because it can be shown that a GEDs is equivalent to a linear transformations of the dataset. In this paper, the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) is applied to the optimization of linear transformations represented as matrices. The method has been tested on several domains and results show that the classification success rate can be improved for some of them. However, in some domains, diagonal matrices get higher accuracies than full square ones. In order to solve this problem, we propose in the second part of the paper to represent linear transformations by means of rotation angles and scaling factors, based on the Singular Value Decomposition theorem (SVD). This new representation solves the problems found in the former part.
机译:模式之间的相似性通常在许多基于距离的分类算法(例如KNN或RBF)中使用。可以优化广义欧几里得距离(GED),以提高基于距离的算法中的分类成功率。该思想可以扩展到任何分类算法,因为可以证明GED等效于数据集的线性变换。在本文中,将协方差矩阵适应进化策略(CMA-ES)用于优化以矩阵表示的线性变换。该方法已在多个领域进行了测试,结果表明,其中某些领域的分类成功率可以提高。但是,在某些域中,对角矩阵的精度要高于全角矩阵。为了解决这个问题,我们在本文的第二部分中提出基于奇异值分解定理(SVD)借助旋转角度和比例因子来表示线性变换。这种新的表示方式解决了前一部分中发现的问题。

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