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Semi-supervised co-selection: Features and instances by a weighting approach

机译:半监督共选:通过加权方法的特征和实例

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Feature selection, instance selection and semi-supervised clustering are different challenges for machine learning and data mining communities. While other works have addressed each of these problems separately, in this paper we show how they can be addressed together, simultaneously. We propose an unified framework for semi-supervised co-selection of features and instances, based on weighting constrained clustering. In particular, we define a novel objective function by weighting both instances and features; and constraining the associated partitioning. Experiments are carried out on some known datasets, and results are promising, showing that our proposal outperforms other state-of-the-art algorithms.
机译:对于机器学习和数据挖掘社区而言,特征选择,实例选择和半监督群集是不同的挑战。尽管其他著作分别解决了这些问题,但在本文中,我们展示了如何同时解决这些问题。我们基于加权约束聚类为特征和实例的半监督共同选择提出了一个统一的框架。特别是,我们通过权衡实例和特征来定义一个新颖的目标函数。并限制相关的分区。在一些已知的数据集上进行了实验,结果令人鼓舞,表明我们的建议优于其他最新算法。

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