2012
DOI: 10.48550/arxiv.1201.6462
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Active Learning of Custering with Side Information Using $\eps$-Smooth Relative Regret Approximations

Abstract: Clustering is considered a non-supervised learning setting, in which the goal is to partition a collection of data points into disjoint clusters. Often a bound k on the number of clusters is given or assumed by the practitioner. Many versions of this problem have been defined, most notably k-means and k-median.An underlying problem with the unsupervised nature of clustering it that of determining a similarity function. One approach for alleviating this difficulty is known as clustering with side information, a… Show more

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“…Requirements (R2) and (R3) were achieved very recently by Ailon et. al in [2] for k-CC and by Ailon in [1] of MFAST. In this work we obtain (R1)+ (R2)+(R3) for both problems.…”
Section: Introductionmentioning
confidence: 99%
“…Requirements (R2) and (R3) were achieved very recently by Ailon et. al in [2] for k-CC and by Ailon in [1] of MFAST. In this work we obtain (R1)+ (R2)+(R3) for both problems.…”
Section: Introductionmentioning
confidence: 99%