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Kernel discrimination and explicative features: an operative approach

机译:内核歧视和解析特征:操作方法

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Kernel-based methods such as SVMs and LS-SVMs have been successfully used for solving various supervised classification and pattern recognition problems in machine learning. Unfortunately, they are heavily dependent on the choice of the optimal kernel function and from tuning parameters. Their solutions, in fact, suffer of complete lack of interpretation in terms of input variables. That is not a banal problem, especially when the learning task is related with a critical asset of a business, like credit scoring, where deriving a classification rule has to respect an international regulation. The following strategy is proposed for solving problems using categorical predictors: replace the predictors by components issued from MCA, choice of the best kernel among several ones (linear,RBF, Laplace, Cauchy, etc.), approximation of the classifier through a linear model. The loss of performance due to such approximation is balanced by better interpretability for the end user, employed in order to understand and to rank the influence of each category of the variables set in the prediction. This strategy has been applied to real risk-credit data of small enterprises. Cauchy kernel was found the best and leads to a score much more efficient than classical ones, even after approximation.
机译:基于内核的方法,如支持向量机和LS-支持向量机已成功用于在机器学习解决各种监督分类和模式识别问题。不幸的是,它们严重依赖于最优的核函数的选择和调整参数。他们的解决方案,事实上,遭受的输入变量方面完全缺乏解释。这不是一个平庸的问题,尤其是当学习任务与企业的关键资产相关的,如信用评分,其中导出分类规则必须遵守国际法规。下面的策略,提出了解决在使用分类预测的问题:由MCA,数种类(线性,RBF,拉普拉斯,柯西等),通过线性模型的分类逼近名列前茅内核选择发行组件更换预测。的性能,因为这种近似的损失是由最终用户更好解释性,为了理解和排名在预测设置的变量的每个类别的影响采用平衡。这种策略已经被应用到小企业的实际风险信贷数据。柯西内核被发现的最好的,并导致比传统的要更有效的得分,甚至逼近了。

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