Document details

ILP: Compute Once, Reuse Often

Author(s): Nuno A Fonseca cv logo 1 ; Ricardo Rocha cv logo 2 ; Rui Camacho cv logo 3 ; Vítor Santos Costa cv logo 4

Date: 2007

Persistent ID: http://hdl.handle.net/10216/67388

Origin: Repositório Aberto da Universidade do Porto

Subject(s): Ciências Tecnológicas; Engenharia; Engenharia do conhecimento


Description
Inductive Logic Programming (ILP) is a powerful and welldeveloped abstraction for multi-relational data mining techniques. However, ILP systems are not particularly fast, most of their execution time is spent evaluating the hypotheses they construct. The evaluation time needed to assess the quality of each hypothesis depends mainly on the number of examples and the theorem proving effort required to determine if an example is entailed by the hypothesis. We propose a technique that reduces the theorem proving effort to a bare minimum and stores valuable information to compute the number of examples entailed by each hypothesis (using a tree data structure). The information is computed only once (pre-compiled) per example. Evaluation of hypotheses requires only basic and efficient operations on trees. This proposal avoids re-computation of hypothesis’ value in theory-level search and cross-validation algorithms, whenever the same data set is used with different parameters. In an empirical evaluation the technique yielded considerable speedups.
Document Type Conference Object
Language English
delicious logo  facebook logo  linkedin logo  twitter logo 
degois logo
mendeley logo

Related documents



    Financiadores do RCAAP

Fundação para a Ciência e a Tecnologia Universidade do Minho   Governo Português Ministério da Educação e Ciência Programa Operacional da Sociedade do Conhecimento EU