首页> 外文会议>International conference on electronic measurement instruments;ICEMI' 2009 >Fast Optimizing Parameters Algorithm for Least Squares Support Vector Machine Based on Artificial Immune Algorithm
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Fast Optimizing Parameters Algorithm for Least Squares Support Vector Machine Based on Artificial Immune Algorithm

机译:基于人工免疫算法的最小二乘支持向量机参数快速优化算法

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When Least Squares Support Vector Machine (LS-SVM) is used to classify on large datasets,training samples to get the optimal model parameters is a timeconsuming and memory consumption process. To reduce training time and computational complexity,we develop a novel algorithm for selecting LS-SVM meta-parameter values based on ideas from principle of artificial immune. By analyzing LS-SVM parameters on the classification accuracy,we find there are many parameters combinations that make the same classification accuracy;What's more,once one of the parameters fixed and the other changes in a certain range,their combinations do not affect the classification accuracy. We regard LS-SVM parameters as antibody genes and design reasonable coding scheme for them. Then we employ artificial immune algorithm to search the optimal model parameters of LS-SVM. We provide experiments to demonstrate the performance of LS-SVM. Results show that the proposed algorithm greatly enhances parameters optimizing efficiency while keeping the approximately same classification accuracy with the some other existent methods such as multi-fold cross-validation and grid-search.
机译:当使用最小二乘支持向量机(LS-SVM)对大型数据集进行分类时,训练样本以获取最佳模型参数是一个既耗时又耗费内存的过程。为了减少训练时间和计算复杂度,我们根据人工免疫原理提出了一种新的算法,用于选择LS-SVM元参数值。通过对LS-SVM参数的分类精度进行分析,发现有很多参数组合具有相同的分类精度;而且,一旦其中一个参数固定且另一参数在一定范围内发生变化,它们的组合就不会影响分类准确性。我们将LS-SVM参数作为抗体基因,并为其设计合理的编码方案。然后,采用人工免疫算法搜索LS-SVM的最优模型参数。我们提供实验来证明LS-SVM的性能。结果表明,与多重交叉验证和网格搜索等其他现有方法相比,该算法大大提高了参数优化效率,同时保持了大致相同的分类精度。

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