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Advances in Lifted Importance Sampling

Vibhav Gogate, Abhay K. Jha, Deepak Venugopal

2021Proceedings of the AAAI Conference on Artificial Intelligence33 citationsDOIOpen Access PDF

Abstract

We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm for statistical relational learning (SRL) models. LIS achieves substantial variance reduction over conventional importance sampling by using various lifting rules that take advantage of the symmetry in the relational representation. However, it suffers from two drawbacks. First, it does not take advantage of some important symmetries in the relational representation and may exhibit needlessly high variance on models having these symmetries. Second, it uses an uninformative proposal distribution which adversely affects its accuracy. We propose two improvements to LIS that address these limitations. First, we identify a new symmetry in SRL models and define a lifting rule for taking advantage of this symmetry. The lifting rule reduces the variance of LIS. Second, we propose a new, structured approach for constructing and dynamically updating the proposal distribution via adaptive sampling. We demonstrate experimentally that our new, improved LIS algorithm is substantially more accurate than the LIS algorithm.

Topics & Concepts

Computer scienceVariance (accounting)Sampling (signal processing)Representation (politics)InferenceSymmetry (geometry)Relational databaseHomogeneous spaceStatistical inferenceAlgorithmData miningImportance samplingArtificial intelligenceTheoretical computer scienceMachine learningMathematicsStatisticsMonte Carlo methodComputer visionLawPoliticsAccountingGeometryFilter (signal processing)BusinessPolitical scienceBayesian Modeling and Causal InferenceMachine Learning and AlgorithmsBayesian Methods and Mixture Models