M²VAE - Derivation of a Multi-Modal Variational Autoencoder Objective from the Marginal Joint Log-Likelihood
classification
💻 cs.LG
stat.ML
keywords
autoencoderderivationjointlog-likelihoodmarginalmulti-modalvariationalbound
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This work gives an in-depth derivation of the trainable evidence lower bound obtained from the marginal joint log-Likelihood with the goal of training a Multi-Modal Variational Autoencoder (M$^2$VAE).
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