Sangam: A Confluence of Knowledge Streams

Verifiable and reusable conditioning

Show simple item record

dc.contributor Chung-chieh Shan
dc.creator Narayanan, Praveen
dc.date 2019-11-06T18:09:46Z
dc.date 2019-11-06T18:09:46Z
dc.date 2019-09
dc.date.accessioned 2023-02-24T18:21:50Z
dc.date.available 2023-02-24T18:21:50Z
dc.identifier http://hdl.handle.net/2022/24645
dc.identifier.uri http://localhost:8080/xmlui/handle/CUHPOERS/260015
dc.description Dissertation (Ph.D.) - Indiana University, School of Informatics, Computing, and Engineering, 2019
dc.description Bayesian analysis exhibits two kinds of modularity. First, it is composed of conceptually separate steps: modeling and inference. Second, inference is itself composed of two separate steps: conditioning and querying. Probabilistic programming systems help automate Bayesian inference: they realize the first kind of modularity, and provide a modeling language decoupled from a suite of general-purpose inference tools. Most probabilistic programming systems, however, fail to implement inference in a modular fashion. Inference tools in such systems usually combine the conditioning step with querying algorithms (such as Markov Chain Monte Carlo sampling). It is difficult to formally specify such tools, making it hard to verify their correctness. A small change to the modeling language might require a disproportionately large change across the inference suite. In this work we specify, implement, and verify a tool that transforms a large class of probabilistic programs to perform the step of conditioning alone. We provide a formal specification for this tool – based on the measure-theoretic notion of disintegration – and verify the correctness of the implementation with respect to this specification. The hard part lies in designing the tool to be verifiable and reusable across different applications. This work alleviates some of that difficulty by addressing two use cases: scaling conditioning to large arrays of observations, and conditioning mixtures of continuous and discrete distributions. Furthermore, we demonstrate that querying tools based on MCMC samplers can themselves be defined using this conditioning tool, thereby increasing its reusability.
dc.language en
dc.publisher [Bloomington, Ind.] : Indiana University
dc.subject Bayesian inference
dc.subject disintegration
dc.subject measure theory
dc.subject metaprogramming
dc.subject probabilistic programming
dc.title Verifiable and reusable conditioning
dc.type Doctoral Dissertation


Files in this item

Files Size Format View
Narayanan_Verifiable_and_Reusable_Conditioning.pdf 1.115Mb application/pdf View/Open

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse