Inductive logic programming, or relational learning, is a powerful paradigm for machine learning or data mining. However, in order for ILP to become practically useful, the eÆciency of ILP systems must improve substantially. To this end, the notion of a query pack is introduced: it structures sets of similar queries. Furthermore, a mechanism is described for executing such query packs. A complexity analysis shows that considerable eÆciency improvements can be achieved through the use of this query pack execution mechanism. This claim is supported by empirical results obtained by incorporating support for query pack execution in two existing learning systems. 1
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Empirical methods for building natural language systems has become an important area of research in ...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
Inductive logic programming, or relational learning, is a powerful paradigm for machine learning or ...
Inductive logic programming systems usually send large numbers of queries to a database. The lattice...
Inductive logic programming systems usually send large numbers of queries to a database. The lattice...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the efficie...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the efficie...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the ecienc...
Query optimization is used frequently in relational database management systems. Most existing techn...
Inductive logic programming (ILP) is a recently emerging subfield of machine learning that aims at o...
Inductive Logic Programming (ILP) provides an effective method of learning logical theories given a ...
When comparing inductive logic programming (ILP) and attribute-value learning techniques, there is a...
textInductive Logic Programming (ILP) is the intersection of Machine Learning and Logic Programming...
Inductive Logic Programming (ILP) is a classic machine learning technique that learns first-order ru...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Empirical methods for building natural language systems has become an important area of research in ...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
Inductive logic programming, or relational learning, is a powerful paradigm for machine learning or ...
Inductive logic programming systems usually send large numbers of queries to a database. The lattice...
Inductive logic programming systems usually send large numbers of queries to a database. The lattice...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the efficie...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the efficie...
In Inductive Logic Programming (ILP), several techniques have been introduced to improve the ecienc...
Query optimization is used frequently in relational database management systems. Most existing techn...
Inductive logic programming (ILP) is a recently emerging subfield of machine learning that aims at o...
Inductive Logic Programming (ILP) provides an effective method of learning logical theories given a ...
When comparing inductive logic programming (ILP) and attribute-value learning techniques, there is a...
textInductive Logic Programming (ILP) is the intersection of Machine Learning and Logic Programming...
Inductive Logic Programming (ILP) is a classic machine learning technique that learns first-order ru...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Empirical methods for building natural language systems has become an important area of research in ...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...