基于2-加性测度的非线性多元回归问题的伪梯度搜索

P. Mahasukhon, H. Sharif, Zhenyuan Wang
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引用次数: 2

摘要

在目标函数不微分的优化问题中,如基于广义Choquet积分的非线性多元回归问题,传统的梯度搜索方法无法实现。在这种情况下,我们可以用伪梯度代替梯度来确定最优搜索方向。然而,该算法的复杂度非常高。当在多元回归中使用关于有符号模糊测度的非线性积分时,人们会遇到这样的问题:与变量的数量相比,模型中未知参数的数量呈指数级增长。然而,在现实问题中,变量之间的高阶相互作用可以省略,然后只有二阶相互作用,结果误差小得可以接受。因此,基于Mobius变换及其逆的2加性测度可以用来代替有符号模糊测度。这样,计算的复杂性将大大降低
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Pseudo Gradient Search for Solving Nonlinear Multiregression Based on 2-Additive Measures
In an optimization problem, when the objective function is not differentiate, such as nonlinear multiregressions based on the generalized Choquet integral, the traditional gradient search fails. In this case, we may replace gradient with a pseudo gradient to determine the optimal search direction. Nonetheless, the complexity of the algorithm is very high. When a nonlinear integral with respect to signed fuzzy measure is used in multiregression, people encounter the problem that, comparing to the number of variables, there are exponentially many unknown parameters in the model. However, in real-world problems, the higher-order interactions among the variables can be omitted, and then only second-order one with an acceptable small error in the results. Thus, a 2-additive measure based on the Mobius transformation and its inverse can be used to replace the signed fuzzy measure. In such a way, the complexity of the computation will be significantly reduced
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