Title :
A framework for join pattern indexing in intelligent database systems
Author :
Segev, Arie ; Zhao, J. Leon
Author_Institution :
Walter A. Haas Sch. of Bus., California Univ., Berkeley, CA, USA
fDate :
12/1/1995 12:00:00 AM
Abstract :
In intelligent database systems, knowledge directed inference often derives large amounts of data, and the efficiency of query processing in these systems depends upon how the derived data is maintained. This paper focuses on situations where the rule is conditional on a join of multiple data objects (relations) and the rule-derived data are materialized to reduce the overall query processing costs. We develop an indexing technique based on a unique construct called join pattern relation. Several pattern redundancy reduction methods are also introduced to minimize the overhead cost of join indexing
Keywords :
database theory; deductive databases; indexing; query processing; relational databases; derived data; intelligent database systems; join pattern indexing; join pattern relation; knowledge directed inference; multiple data objects; pattern redundancy reduction methods; query processing; query processing costs; relational database; rule-derived data; Costs; Database systems; Deductive databases; Electronics packaging; Indexing; Iris; Knowledge based systems; Laboratories; Query processing; Technology management;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on