Partition function estimation: A quantitative study

D Agrawal, Y Pote, KS Meel - arXiv preprint arXiv:2105.11132, 2021 - arxiv.org
Probabilistic graphical models have emerged as a powerful modeling tool for several real-
world scenarios where one needs to reason under uncertainty. A graphical model's partition …

Control as hybrid inference

A Tschantz, B Millidge, AK Seth, CL Buckley - arXiv preprint arXiv …, 2020 - arxiv.org
The field of reinforcement learning can be split into model-based and model-free methods.
Here, we unify these approaches by casting model-free policy optimisation as amortised …

Differentiable antithetic sampling for variance reduction in stochastic variational inference

M Wu, N Goodman, S Ermon - The 22nd International …, 2019 - proceedings.mlr.press
Stochastic optimization techniques are standard in variational inference algorithms. These
methods estimate gradients by approximating expectations with independent Monte Carlo …

From Bayesian principles to Bayesian processes

A Tschantz - 2023 - sussex.figshare.com
This thesis considers the free energy principle (FEP) and its corollary, active inference,
which form an explanatory framework that prescribes a Bayesian interpretation of self …

[图书][B] Extensions and Applications of Deep Probabilistic Inference for Generative Models

MH Wu - 2022 - search.proquest.com
Despite the growth of data size, many applications for which we would like to apply learning
algorithms to are limited by data quantity and quality. Generative models propose a …