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arxiv: 1807.04001 · v1 · pith:J2ZT5MLOnew · submitted 2018-07-11 · 💻 cs.LG · cs.AI· cs.CV· stat.ML

Learning Neural Models for End-to-End Clustering

classification 💻 cs.LG cs.AIcs.CVstat.ML
keywords clusteringdatadifferentend-to-endlearningclusterdistributionnetwork
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We propose a novel end-to-end neural network architecture that, once trained, directly outputs a probabilistic clustering of a batch of input examples in one pass. It estimates a distribution over the number of clusters $k$, and for each $1 \leq k \leq k_\mathrm{max}$, a distribution over the individual cluster assignment for each data point. The network is trained in advance in a supervised fashion on separate data to learn grouping by any perceptual similarity criterion based on pairwise labels (same/different group). It can then be applied to different data containing different groups. We demonstrate promising performance on high-dimensional data like images (COIL-100) and speech (TIMIT). We call this ``learning to cluster'' and show its conceptual difference to deep metric learning, semi-supervise clustering and other related approaches while having the advantage of performing learnable clustering fully end-to-end.

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