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LEARNING SVM WITH COMPLEX MULTIPLE KERNELS EVOLVED BY GENETIC PROGRAMMING

机译:通过遗传编程学习具有复杂多核的SVM

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摘要

Classic kernel-based classifiers use only a single kernel, but the real-world applications have emphasized the need to consider a combination of kernels - also known as a multiple kernel (MK) - in order to boost the classification accuracy by adapting better to the characteristics of the data. Our purpose is to automatically design a complex multiple kernel by evolutionary means. In order to achieve this purpose we propose a hybrid model that combines a Genetic Programming (GP) algorithm and a kernel- based Support Vector Machine (SVM) classifier. In our model, each GP chromosome is a tree that encodes the mathematical expression of a multiple kernel. The evolutionary search process of the optimal MK is guided by the fitness function (or efficiency) of each possible MK. The complex multiple kernels which are evolved in this manner (eCMKs) are compared to several classic simple kernels (SKs), to a convex linear multiple kernel (cLMK) and to an evolutionary linear multiple kernel (eLMK) on several real-world data sets from UCI repository. The numerical experiments show that the SVM involving the evolutionary complex multiple kernels perform better than the classic simple kernels. Moreover, on the considered data sets, the new multiple kernels outperform both the cLMK and eLMK - linear multiple kernels. These results emphasize the fact that the SVM algorithm requires a combination of kernels more complex than a linear one in order to boost its performance.
机译:基于经典内核的分类器仅使用单个内核,但是实际应用中已强调需要考虑内核的组合(也称为多内核(MK)),以便通过更好地适应分类来提高分类准确性。数据的特征。我们的目的是通过进化手段自动设计一个复杂的多核。为了实现此目的,我们提出了一种混合模型,该模型结合了遗传编程(GP)算法和基于内核的支持向量机(SVM)分类器。在我们的模型中,每个GP染色体都是一棵树,该树编码多核的数学表达式。最佳MK的进化搜索过程由每个可能MK的适应度函数(或效率)指导。将以这种方式演化的复杂多核(eCMK)与几个经典的简单核(SK),凸线性多重核(cLMK)和演化线性多重核(eLMK)在多个实际数据集上进行比较从UCI存储库中。数值实验表明,涉及进化复杂多核的支持向量机的性能优于经典简单核。此外,在考虑的数据集上,新的多个内核优于线性cLMK和eLMK。这些结果强调了这样一个事实,即SVM算法需要比线性算法更复杂的内核组合才能提高其性能。

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