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Uncertain One-Class Learning and Concept Summarization Learning on Uncertain Data Streams

机译:不确定数据流上的不确定一类学习和概念总结学习

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摘要

This paper presents a novel framework to uncertain one-class learning and concept summarization learning on uncertain data streams. Our proposed framework consists of two parts. First, we put forward uncertain one-class learning to cope with data of uncertainty. We first propose a local kernel-density-based method to generate a bound score for each instance, which refines the location of the corresponding instance, and then construct an uncertain one-class classifier (UOCC) by incorporating the generated bound score into a one-class SVM-based learning phase. Second, we propose a support vectors (SVs)-based clustering technique to summarize the concept of the user from the history chunks by representing the chunk data using support vectors of the uncertain one-class classifier developed on each chunk, and then extend k-mean clustering method to cluster history chunks into clusters so that we can summarize concept from the history chunks. Our proposed framework explicitly addresses the problem of one-class learning and concept summarization learning on uncertain one-class data streams. Extensive experiments on uncertain data streams demonstrate that our proposed uncertain one-class learning method performs better than others, and our concept summarization method can summarize the evolving interests of the user from the history chunks.
机译:本文为不确定的数据流提供了一种新颖的框架,用于不确定的一类学习和概念总结学习。我们提出的框架包括两个部分。首先,我们提出了不确定性的一类学习方法来处理不确定性数据。我们首先提出一种基于局部核密度的方法来为每个实例生成一个边界分数,从而精炼相应实例的位置,然后通过将生成的边界分数合并到一个实例中来构造不确定的一类分类器(UOCC)一流的基于SVM的学习阶段。其次,我们提出了一种基于支持向量(SV)的聚类技术,通过使用在每个块上开发的不确定一类分类器的支持向量表示块数据,从历史块中总结出用户的概念,然后扩展k-将历史数据块聚类为聚类的平均聚类方法,以便我们可以从历史数据块中总结概念。我们提出的框架明确解决了在不确定的一类数据流上的一类学习和概念总结学习的问题。在不确定的数据流上进行的大量实验表明,我们提出的不确定的一类学习方法比其他方法具有更好的性能,而我们的概念总结方法可以从历史数据块中总结出用户不断发展的兴趣。

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