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Poster

Flattening a Hierarchical Clustering through Active Learning

Fabio Vitale · Anand Rajagopalan · Claudio Gentile

East Exhibition Hall B + C #5

Keywords: [ Algorithms -> Clustering; Algorithms -> Semi-Supervised Learning; Theory ] [ Learning Theory ] [ Active Learning ] [ Algorithms ]


Abstract:

We investigate active learning by pairwise similarity over the leaves of trees originating from hierarchical clustering procedures. In the realizable setting, we provide a full characterization of the number of queries needed to achieve perfect reconstruction of the tree cut. In the non-realizable setting, we rely on known important-sampling procedures to obtain regret and query complexity bounds. Our algorithms come with theoretical guarantees on the statistical error and, more importantly, lend themselves to {\em linear-time} implementations in the relevant parameters of the problem. We discuss such implementations, prove running time guarantees for them, and present preliminary experiments on real-world datasets showing the compelling practical performance of our algorithms as compared to both passive learning and simple active learning baselines.

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