Title :
A model-forest based horizontal fragmentation approach for disjunctive deductive databases
Author :
Seetharaman, Aparna ; Ng, Yiu-Kai
Author_Institution :
Dept. of Comput. Sci., Brigham Young Univ., Provo, UT, USA
Abstract :
Disjunctive deductive databases (DDDBs) can capture indefinite information, i.e., imprecise or partial knowledge, of the real world. In this paper we present a method for horizontally fragmenting a DDDB based on the minimal-model forest approach. A minimal-model forest of a DDDB D is a collection of minimal-model trees of D such that each tree represents a set of facts that is disjoint from the set of facts represented in any other tree of D (All these facts are given in D.). Eventually, each tree T in the forest is assigned to a fragment along with the rules that utilize the facts represented in T to infer new facts. This approach minimizes the amount of data in D that needs to be processed for any query of D by taking the advantage of the natural partition of data that may appear in D
Keywords :
deductive databases; inference mechanisms; query processing; uncertainty handling; disjunctive deductive databases; imprecise knowledge; indefinite information; minimal-model forest approach; minimal-model trees; model-forest based horizontal fragmentation approach; natural partition; partial knowledge; Application software; Availability; Computer network management; Computer science; Costs; Deductive databases; Information management; Read only memory; Relational databases; Tellurium;
Conference_Titel :
Database Engineering and Applications Symposium, 1998. Proceedings. IDEAS'98. International
Conference_Location :
Cardiff
Print_ISBN :
0-8186-8307-4
DOI :
10.1109/IDEAS.1998.694380