@misc{moreno2016automatic, author = {Moreno, Alexander and Adel, Tameem and Meeds, Ted and Rehg, James M. and Welling, Max}, title = {Automatic Variational ABC}, year = {2016}, month = {June}, abstract = {Approximate Bayesian Computation (ABC) is a framework for performing likelihood-free posterior inference for simulation models. Stochastic Variational inference (SVI) is an appealing alternative to the inefficient sampling approaches commonly used in ABC. However, SVI is highly sensitive to the variance of the gradient estimators, and this problem is exacerbated by approximating the likelihood. We draw upon recent advances in variance reduction for SVI [6][13] and likelihood-free inference using deterministic simulations [12] to produce low variance gradient estimators of the variational lower-bound. By then exploiting automatic differentiation libraries [8] we can avoid nearly all model-specific derivations. We demonstrate performance on three problems and compare to existing SVI algorithms. Our results demonstrate the correctness and efficiency of our algorithm.}, publisher = {arXiv}, url = {http://approjects.co.za/?big=en-us/research/publication/automatic-variational-abc/}, edition = {arXiv}, }