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Differentiable Random Partition Models

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arxiv 2305.16841 v2 pith:IY4LKN4O submitted 2023-05-26 cs.LG cs.AI

Differentiable Random Partition Models

classification cs.LG cs.AI
keywords elementsnumbersubsetsapproachinferenceinferringlearningmethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Partitioning a set of elements into an unknown number of mutually exclusive subsets is essential in many machine learning problems. However, assigning elements, such as samples in a dataset or neurons in a network layer, to an unknown and discrete number of subsets is inherently non-differentiable, prohibiting end-to-end gradient-based optimization of parameters. We overcome this limitation by proposing a novel two-step method for inferring partitions, which allows its usage in variational inference tasks. This new approach enables reparameterized gradients with respect to the parameters of the new random partition model. Our method works by inferring the number of elements per subset and, second, by filling these subsets in a learned order. We highlight the versatility of our general-purpose approach on three different challenging experiments: variational clustering, inference of shared and independent generative factors under weak supervision, and multitask learning.

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