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首页> 外文期刊>International journal of computational intelligence systems >Feature selection for monotonic classification via maximizing monotonic dependency
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Feature selection for monotonic classification via maximizing monotonic dependency

机译:通过最大化单调相关性来进行单调分类的特征选择

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摘要

Monotonic classification is a special task in machine learning and pattern recognition. As to monotonic classification, it is assumed that both features and decision are ordinal and there is the monotonicity constraints between the features and decision. Little work has been focused on feature selection for this type of tasks although a number of feature selection algorithms have been introduced for nominal classification problems. However these techniques can not be applied to monotonic classification as they do not consider the monotonicity constraints. In this work, we present a technique to compute the quality of features for monotonic classification. Using gradient directing search method, this method trains a feature weight vector by maximizing the fuzzy monotonic dependency, which was defined in fuzzy preference rough sets. We conduct some experiments to compare the classification performances of the proposed method with some other techniques. The experimental results show the effectiveness of the proposed algorithm.
机译:单调分类是机器学习和模式识别中的一项特殊任务。对于单调分类,假设特征和决策都是有序的,并且特征和决策之间存在单调性约束。尽管针对标称分类问题引入了许多特征选择算法,但针对此类任务的特征选择工作很少。但是,由于这些技术没有考虑单调性约束,因此无法应用于单调分类。在这项工作中,我们提出了一种计算单调分类特征质量的技术。该方法采用梯度定向搜索方法,通过最大化模糊单调相关性来训练特征权向量,模糊单调相关性是在模糊偏好粗糙集中定义的。我们进行了一些实验,以比较该方法与其他技术的分类性能。实验结果表明了该算法的有效性。

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