Semi-supervised Clustering: Incorporating User Feedback to Improve
نویسنده
چکیده
منابع مشابه
Vers une approche utilisant l'apprentissage de métrique pour du clustering semi-supervisé interactif d'images
The problem of unsupervised and semi-supervised clustering is extensively studied in machine learning. In order to involve user in image data clustering, (Lai et al., 2014) proposed a new approache for interactive semi-supervised clustering that translates the feedback of user (expressed at the level of individual images) into pairwise constraints between groups of images, these groupes being c...
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