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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Active selection of clustering constraints: a sequential approach
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Active selection of clustering constraints: a sequential approach

机译:主动选择聚类约束:顺序方法

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摘要

This paper examines active selection of clustering constraints, which has become a topic of significant interest in constrained clustering. Active selection of clustering constraints, which is known as minimizing the cost of acquiring constraints, also includes quantifying utility of a given constraint set. A sequential method is proposed in this paper to select the most beneficial set of constraints actively. The proposed method uses information of boundary points and transition regions extracted by data description methods to introduce a utility measure for constraints. Since previously selected constraints affect the utility of remaining candidate constraints, a method is proposed to update the utility of remaining constraints after selection of each constraint. Experiments carried out on synthetic and real datasets show that the proposed method improves the accuracy of clustering while reducing human interaction.
机译:本文研究了聚类约束的主动选择,这已成为约束聚类中的一个重要课题。主动选择聚类约束,这被称为使获取约束的成本最小化,还包括量化给定约束集的效用。本文提出了一种顺序方法来主动选择最有利的约束集。所提出的方法利用通过数据描述方法提取的边界点和过渡区域的信息来引入约束的效用度量。由于先前选择的约束影响剩余候选约束的效用,因此提出了一种在选择每个约束之后更新剩余约束的效用的方法。在合成和真实数据集上进行的实验表明,该方法在减少人机交互的同时,提高了聚类的准确性。

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