AI RESEARCH
Unsupervised Representation Learning from Sparse Transformation Analysis
arXiv CS.LG
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ArXi:2410.05564v3 Announce Type: replace There is a vast literature on representation learning based on principles such as coding efficiency, statistical independence, causality, controllability, or symmetry. In this paper we propose to learn representations from sequence data by factorizing the transformations of the latent variables into sparse components. Input data are first encoded as distributions of latent activations and subsequently transformed using a probability flow model, before being decoded to predict a future input state.