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Study of Models Clustering and its Application to Ensemble Learning

机译:模型聚类研究及其在集成学习中的应用

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Clustering technique is an important tool for data analysis and has a promising prospect in data mining, pattern recognition, etc. Usually, objects in clustering analysis are of vectors, which consist of some features. They may be represented as points in Euclidean space. However, in some tasks, objects in clustering analysis may be some abstract models other than data points, for example neural networks, decision trees, support vector machines, etc. By defining the extended distance (in real tasks, there are some different definition forms about distance), clustering method is studied for the abstract data objects. Framework of clustering algorithm for objects of models is presented. As its application, a method for improving diversity of ensemble learning with neural networks is investigated. The relations between the number of clusters in clustering analysis, the size of ensemble learning, and performance of ensemble learning are studied by experiments.
机译:聚类技术是数据分析的重要工具,在数据挖掘,模式识别等方面具有广阔的前景。聚类分析中的对象通常是矢量,具有某些特征。它们可以表示为欧几里得空间中的点。但是,在某些任务中,聚类分析中的对象可能是数据点以外的某些抽象模型,例如神经网络,决策树,支持向量机等。通过定义扩展距离(在实际任务中,存在一些不同的定义形式关于距离),研究了抽象数据对象的聚类方法。提出了一种用于模型对象的聚类算法框架。作为其应用,研究了一种利用神经网络改善集成学习多样性的方法。通过实验研究了聚类分析中的簇数,集合学习的大小和集合学习的性能之间的关系。

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    《》||P.363-367|共5页
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    Li Kai; Cui Lijuan;

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  • 中图分类 工业技术;
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