State-Space Abstractions for Probabilistic Inference: A Systematic Review
Stefan L\"udtke, Max Schr\"oder, Frank Kr\"uger, Sebastian Bader,, Thomas Kirste

TL;DR
This systematic review analyzes state space abstraction techniques in probabilistic inference, categorizing 116 papers from over 4,000 to clarify their relationships and identify future research directions.
Contribution
It provides a comprehensive classification of symmetry-exploiting probabilistic inference methods and highlights gaps for future exploration.
Findings
116 relevant papers identified from over 4,000
New high-level categories for classifying approaches
Potential future research directions outlined
Abstract
Tasks such as social network analysis, human behavior recognition, or modeling biochemical reactions, can be solved elegantly by using the probabilistic inference framework. However, standard probabilistic inference algorithms work at a propositional level, and thus cannot capture the symmetries and redundancies that are present in these tasks. Algorithms that exploit those symmetries have been devised in different research fields, for example by the lifted inference-, multiple object tracking-, and modeling and simulation-communities. The common idea, that we call state space abstraction, is to perform inference over compact representations of sets of symmetric states. Although they are concerned with a similar topic, the relationship between these approaches has not been investigated systematically. This survey provides the following contributions. We perform a systematic literature…
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