Tractable Bounding of Counterfactual Queries by Knowledge Compilation

Published on ● Video Link: https://www.youtube.com/watch?v=4Vsj303LNs4



Duration: 34:25
260 views
11


Alessandro Antonucci (IDSIA)
https://simons.berkeley.edu/talks/alessandro-antonucci-idsia-2023-10-17
Probabilistic Circuits and Logic

We discuss the problem of bounding partially identifiable queries, such as counterfactuals, in Pearlian structural causal models. A recently proposed iterated EM scheme yields an inner approximation of those bounds by sampling the initialisation parameters. Such a method requires multiple (Bayesian network) queries over models sharing the same structural equations and topology, but different exogenous probabilities. This setup makes a compilation of the underlying model to an arithmetic circuit advantageous, thus inducing a sizeable inferential speed-up. We show how a single symbolic knowledge compilation allows us to obtain the circuit structure with symbolic parameters to be replaced by their actual values when computing the different queries. We also discuss parallelisation techniques to further speed up the bound computation. Experiments against standard Bayesian network inference show clear computational advantages with up to an order of magnitude of speed-up.




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Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
Probabilistic Circuits and Logic
Alessandro Antonucci