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Matching Qualitative Constraint Networks with Online Reinforcement Learning

14 pagesPublished: September 29, 2016

Abstract

Local Compatibility Matrices (LCMs) are mechanisms for computing heuristics for graph matching that are particularly suited for matching qualitative constraint networks enabling the transfer of qualitative spatial knowledge between qualitative reasoning systems or agents. A system of LCMs can be used during matching to compute a pre-move evaluation, which acts as a prior optimistic estimate of the value of matching a pair of nodes, and a post-move evaluation which adjusts the prior estimate in the direction of the true value upon completing the move. We present a metaheuristic method that uses reinforcement learning to improve the prior estimates based on the posterior evaluation. The learned values implicitly identify unprofitable regions of the search space. We also present data structures that allow a more compact implementation, limiting the space and time complexity of our algorithm.

Keyphrases: local compatibility matrix, metaheuristic, qcn matching, qualitative constraint network, reinforcement learning, sarsa

In: Christoph Benzmüller, Geoff Sutcliffe and Raul Rojas (editors). GCAI 2016. 2nd Global Conference on Artificial Intelligence, vol 41, pages 266-279.

BibTeX entry
@inproceedings{GCAI2016:Matching_Qualitative_Constraint_Networks,
  author    = {Malumbo Chipofya},
  title     = {Matching Qualitative Constraint Networks with Online Reinforcement Learning},
  booktitle = {GCAI 2016. 2nd Global Conference on Artificial Intelligence},
  editor    = {Christoph Benzmüller and Geoff Sutcliffe and Raul Rojas},
  series    = {EPiC Series in Computing},
  volume    = {41},
  publisher = {EasyChair},
  bibsource = {EasyChair, https://easychair.org},
  issn      = {2398-7340},
  url       = {/publications/paper/TJF},
  doi       = {10.29007/1g5q},
  pages     = {266-279},
  year      = {2016}}
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