Deep amortized clustering

Published: Sep 25, 2019
Abstract
We propose a deep amortized clustering (DAC), a neural architecture which learns to cluster datasets efficiently using a few forward passes. DAC implicitly learns what makes a cluster, how to group data points into clusters, and how to count the number of clusters in datasets. DAC is meta-learned using labelled datasets for training, a process distinct from traditional clustering algorithms which usually require hand-specified prior knowledge...
Paper Details
Title
Deep amortized clustering
Published Date
Sep 25, 2019
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