MaxEntropy Pursuit Variational Inference
Egorov, Evgenii, Neklydov, Kirill, Kostoev, Ruslan, Burnaev, Evgeny
One of the core problems in variational inference is a choice of approximate posterior distribution. It is crucial to trade-off between efficient inference with simple families as mean-field models and accuracy of inference. We propose a variant of a greedy approximation of the posterior distribution with tractable base learners. Using Max-Entropy approach, we obtain a well-defined optimization problem. We demonstrate the ability of the method to capture complex multimodal posterior via continual learning setting for neural networks.
May-19-2019