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A novel hybrid Genetic Algorithm and Simulated Annealing for feature selection and kernel optimization in support vector regression

机译:支持向量回归的特征选择和核优化的新型混合遗传算法和模拟退火

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In this paper, an effective hybrid optimization strategy by incorporating the metropolis acceptance criterion of Simulated Annealing (SA) into crossover operator of Genetic Algorithm (GA), is used to simultaneously optimize the input feature subset selection, the type of kernel function and the kernel parameter setting of SVR, namely GASA-SVR. The developed GASA-SVR model is being applied for monthly rainfall forecasting and flood management in Liuzhou, Guangxi. The GASA-SVR can increase the diversity of the individuals, accelerate the evolution process and avoid sinking into the local optimal solution early that compared with pure GA-SVR. Results show that the new GASA-SVR model can correctly select the discriminating input features, also successfully identify the optimal type of kernel function and all the optimal values of the parameters of SVR with the lowest prediction error values in rainfall forecasting.
机译:本文采用一种有效的混合优化策略,通过将模拟退火(SA)的都市接受标准纳入遗传算法(GA)的交叉算子中,来同时优化输入特征子集选择,核函数类型和核SVR的参数设置,即GASA-SVR。已开发的GASA-SVR模型正用于广西柳州的月度降雨预报和洪水管理。与纯GA-SVR相比,GASA-SVR可以增加个体的多样性,加快进化过程,并避免早日陷入局部最优解决方案。结果表明,新的GASA-SVR模型可以正确选择区分输入特征,并成功地确定了最优的核函数类型和SVR参数的所有最优值,降雨预报中的预测误差值最低。

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