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Mathematics / Heuristics / Edsger W. Dijkstra / Automated planning and scheduling / Mathematical optimization / Shortest path problem / Admissible heuristic / Search algorithm / Methodology / Algorithm / Cognition
Date: 2018-07-07 12:35:35
Mathematics
Heuristics
Edsger W. Dijkstra
Automated planning and scheduling
Mathematical optimization
Shortest path problem
Admissible heuristic
Search algorithm
Methodology
Algorithm
Cognition

Operator Counting Heuristics for Probabilistic Planning Felipe Trevizan, Sylvie Thi´ebaux, Patrik Haslum Data61, CSIRO and Research School of Computer Science, Australian National University Abstr

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