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 compressed differential heuristic


The Compressed Differential Heuristic

Goldenberg, Meir (Ben-Gurion University) | Sturtevant, Nathan (University of Denver) | Felner, Ariel (Ben-Gurion University) | Schaeffer, Jonathan (University of Alberta)

AAAI Conferences

The differential heuristic (DH) is an effective memory-based heuristic for explicit state spaces. In this paper we aim to improve its performance and memory usage. We introduce a compression method for DHs which stores only a portion of the original uncompressed DH, while preserving enough information to enable efficient search. Compressed DHs (CDH) are flexible and can be tuned to fit any size of memory, even smaller than the size of the state space. Furthermore, CDHs can be built without the need to create and store the entire uncompressed DH. Experimental results across different domains show that, for a given amount of memory, a CDH significantly outperforms an uncompressed DH.


The Compressed Differential Heuristic

Goldenberg, Meir (Ben-Gurion University) | Sturtevant, Nathan (University of Denver) | Felner, Ariel (Ben-Gurion University) | Schaeffer, Jonathan (University of Alberta)

AAAI Conferences

The differential heuristic (DH) is an effective memory-based heuristic for explicit state spaces. In this paper, we aim to improve its performance and memory usage. We introduce a compression method for DHs which stores only a portion of the original uncompressed DH, while preserving enough information to enable efficient search. Compressed DHs (CDH) can be tuned to fit any size of memory, even smaller than the size of the state space.Experimental results across different domains show that, for a given amount of memory, a CDH significantly outperforms an uncompress