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    Learning a metric when clustering data points in the presence of constraints

    , Article Advances in Data Analysis and Classification ; Volume 14, Issue 1 , 2020 , Pages 29-56 Abin, A. A ; Bashiri, M. A ; Beigy, H ; Sharif University of Technology
    Springer  2020
    Abstract
    Learning an appropriate distance measure under supervision of side information has become a topic of significant interest within machine learning community. In this paper, we address the problem of metric learning for constrained clustering by considering three important issues: (1) considering importance degree for constraints, (2) preserving the topological structure of data, and (3) preserving some natural distribution properties in the data. This work provides a unified way to handle different issues in constrained clustering by learning an appropriate distance measure. It has modeled the first issue by injecting the importance degree of constraints directly into an objective function.... 

    Low-rank kernel learning for semi-supervised clustering

    , Article Proceedings of the 9th IEEE International Conference on Cognitive Informatics, ICCI 2010, 7 July 2010 through 9 July 2010, Beijing ; 2010 , Pages 567-572 ; 9781424480401 (ISBN) Soleymani Baghshah, M ; Bagheri Shouraki, S ; Sharif University of Technology
    2010
    Abstract
    In the last decade, there has been a growing interest in distance function learning for semi-supervised clustering settings. In addition to the earlier methods that learn Mahalanobis metrics (or equivalently, linear transformations), some nonlinear metric learning methods have also been recently introduced. However, these methods either allow limited choice of distance metrics yielding limited flexibility or learn nonparametric kernel matrices and scale very poorly (prohibiting applicability to medium and large data sets). In this paper, we propose a novel method that learns low-rank kernel matrices from pairwise constraints and unlabeled data. We formulate the proposed method as a trace...