One common pattern database compression technique is to merge adjacent database entries and store the minimum of merged entries to maintain heuristic admissibility. In this paper we propose a compression technique that preserves every entry, but reduces the number of bits used to store each entry, therefore limiting the values that can be represented. Even when this technique throws away low values in the heuristic, it can still have better performance than the traditional approach. We develop a theoretical basis for selecting which values to keep and show improved performance in both unidirectional and bidirectional search
Abstract. Most modern lossless data compression techniques used today, are based in dictionaries. If...
Growing user expectations of anywhere, anytime access to information require new types of data repre...
In this paper we describe novel representations for precomputed heuristics based on Level-Ordered Ed...
A pattern database (PDB) is a heuristic function implemented as a lookup table that stores the lengt...
We present a new technique to compress pattern databases to provide consistent heuristics without lo...
We present an algorithm for compressing pattern databases (PDBs) and a method for fast random access...
AbstractA pattern database (PDB) is a heuristic function stored as a lookup table. This paper consid...
Abstract. A pattern database (PDB) is a heuristic function implemented as a lookup table. It stores ...
A pattern database (PDB) is a heuristic function stored as a lookup table. This paper considers how ...
Efficient query processing in statistical databases is constrained by the I/O bottleneck problem bec...
In this paper we present hardware algorithms and their software implementation to search a compresse...
A compression technique is presented that allows a high degree of compression but requires only loga...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
The heuristics used for planning and search often take the form of pattern databases generated from ...
In modern column-oriented databases, compression is important for improving I/O throughput and overa...
Abstract. Most modern lossless data compression techniques used today, are based in dictionaries. If...
Growing user expectations of anywhere, anytime access to information require new types of data repre...
In this paper we describe novel representations for precomputed heuristics based on Level-Ordered Ed...
A pattern database (PDB) is a heuristic function implemented as a lookup table that stores the lengt...
We present a new technique to compress pattern databases to provide consistent heuristics without lo...
We present an algorithm for compressing pattern databases (PDBs) and a method for fast random access...
AbstractA pattern database (PDB) is a heuristic function stored as a lookup table. This paper consid...
Abstract. A pattern database (PDB) is a heuristic function implemented as a lookup table. It stores ...
A pattern database (PDB) is a heuristic function stored as a lookup table. This paper considers how ...
Efficient query processing in statistical databases is constrained by the I/O bottleneck problem bec...
In this paper we present hardware algorithms and their software implementation to search a compresse...
A compression technique is presented that allows a high degree of compression but requires only loga...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
The heuristics used for planning and search often take the form of pattern databases generated from ...
In modern column-oriented databases, compression is important for improving I/O throughput and overa...
Abstract. Most modern lossless data compression techniques used today, are based in dictionaries. If...
Growing user expectations of anywhere, anytime access to information require new types of data repre...
In this paper we describe novel representations for precomputed heuristics based on Level-Ordered Ed...