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Active Constrained Clustering via non-iterative uncertainty sampling

机译:通过非迭代不确定性样本进行主动约束聚类

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Active Constraint Learning (ACL) is continuously gaining popularity in the area of constrained clustering due to its ability to achieve performance gains via incorporating minimal feedback from a human annotator for selected instances. For constrained clustering algorithms, such instances are integrated in the form of Must-Link (ML) and Cannot-Link (CL) constraints. Existing iterative uncertainty reduction schemes, introduce high computational burden particularly when they process larger datasets that are usually present in computer vision and visual learning applications. For scenarios that multiple agents (i.e., robots) require user feedback for performing recognition tasks, minimizing the interaction between the user and the agents, without compromising performance, is an essential task. In this study, a non-iterative ACL scheme with proven performance benefits is presented. We select to demonstrate the effectiveness of our methodology by building on the well known K-Means algorithm for clustering; one can easily extend it to alternative clustering schemes. The proposed methodology introduces the use of the Silhouette values, conventionally used for measuring clustering performance, in order to rank the degree of information content of the various samples. In addition, an efficient greedy selection scheme was devised for selecting the most informative samples for human annotation. To the best of our knowledge, this is the first active constrained clustering methodology with the ability to process computer vision datasets that this study targets. Performance results are shown on various computer vision benchmarks and support the merits of adopting the proposed scheme.
机译:主动约束学习(ACL)在受约束的聚类领域中不断受到欢迎,这是因为它能够通过合并来自人工注释者对选定实例的最小反馈来实现性能提升。对于约束聚类算法,此类实例以“必须链接”(ML)和“不能链接”(CL)约束的形式集成。现有的迭代不确定性降低方案特别是在它们处理通常在计算机视觉和视觉学习应用程序中存在的较大数据集时引入了高计算负担。对于多个代理程序(即机器人)需要用户反馈来执行识别任务的情况,在不影响性能的情况下最小化用户与代理程序之间的交互是一项必不可少的任务。在这项研究中,提出了一种具有经过验证的性能优势的非迭代ACL方案。我们选择通过建立众所周知的K-Means聚类算法来证明我们方法论的有效性。可以轻松地将其扩展到其他群集方案。所提出的方法引入了通常用于测量聚类性能的Silhouette值的使用,以便对各种样本的信息内容的程度进行排名。另外,设计了一种有效的贪婪选择方案,以选择最有信息的样本进行人类注释。据我们所知,这是第一种具有约束力的主动聚类方法,能够处理本研究针对的计算机视觉数据集。性能结果显示在各种计算机视觉基准上,并支持采用拟议方案的优点。

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