基于自编码器和凸集投影的嵌入聚类

Le-Anh Tran, T. Nguyen, Truong-Dong Do, Chung-Nguyen Tran, Daehyun Kwon, Dong-Chul Park
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引用次数: 0

摘要

凸集投影(POCS)是解决各种凸优化问题的一种强大的信号处理工具。对于非相交凸集,同时POCS方法可以得到最小均方误差解。POCS的这一特性已经被应用到聚类分析中,基于POCS的聚类算法已经被提出。在基于pocs的聚类算法中,将每个数据点视为一个凸集,并对每个聚类原型与其对应的数据成员进行并行投影运算,以最小化目标函数并更新隶属度和原型。该算法在一般聚类任务的执行速度和聚类误差方面与传统聚类方法具有竞争力。本文研究了基于pocs的聚类算法在更复杂的任务——嵌入聚类上的性能,以进一步证明其在其他高级任务中的潜力。为此,采用现成的FaceNet模型和自编码器网络,分别从五张名人脸和MNIST数据集合成两组特征嵌入,进行实验和分析。经验评价表明,在嵌入聚类问题中,与K-Means和模糊C-Means算法等现有聚类方案相比,基于pocs的聚类算法具有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedding Clustering via Autoencoder and Projection onto Convex Set
Projection onto Convex Set (POCS) is a powerful signal processing tool for various convex optimization problems. For non-intersecting convex sets, the simultaneous POCS method can result in a minimum mean square error solution. This property of POCS has been applied to clustering analysis and the POCS-based clustering algorithm was proposed earlier. In the POCS-based clustering algorithm, each data point is treated as a convex set, and a parallel projection operation from every cluster prototype to its corresponding data members is carried out in order to minimize the objective function and to update the memberships and prototypes. The algorithm works competitively against conventional clustering methods in terms of execution speed and clustering error on general clustering tasks. In this paper, the performance of the POCS-based clustering algorithm on a more complex task, embedding clustering, is investigated in order to further demonstrate its potential in benefiting other high-level tasks. To this end, an off-the-shelf FaceNet model and an autoencoder network are adopted to synthesize two sets of feature embeddings from the Five Celebrity Faces and MNIST datasets, respectively, for experiments and analyses. The empirical evaluations show that the POCS-based clustering algorithm can yield favorable results when compared with other prevailing clustering schemes such as the K-Means and Fuzzy C-Means algorithms in embedding clustering problems.
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