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The Diffusion Encoder

We construct a new kind of encoder, leveraging the expressive power of diffusion models. In a traditional variational autoencoder, the encoder and decoder jointly negotiate a latent representation of the input. This is made possible by the reparameterization trick, which simplifies training at the cost of restricting the encoder to a simple family of distributions. Replacing this encoder with a diffusion model requires rethinking how the decoder pressure can be transmitted back to the encoder, given that they tend to update their internal estimates of the latent in opposing directions. We solve this problem with an alternating training scheme, inspired by the expectation-maximization algorithm. Our method enables more reliable synchronization between encoder and decoder, while preserving the simple and efficient training objective of standard diffusion models.

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Related contextCo-authorshipAuthorshipWorks onWorks onWorks onWorks onAuthorshipTopic signalTopic signalWThe Diffusion Encoderpreprint / 2026AAkhil PremkumarResearcherASarah LucioniResearcherTMachine Learning49008 worksTInformation Theory6710 works
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The Diffusion Encoder

preprint / 2026

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