Predicate Logic as a Modeling Language: Modeling and Solving some Machine Learning and Data Mining Problems with IDP3
This paper provides a gentle introduction to problem solving with the IDP3 system. The core of IDP3 is a finite model generator that supports first order logic enriched with types, inductive definitions, aggregates and partial functions. It offers its users a modeling language that is a slight exten...
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creator | Bruynooghe, Maurice Blockeel, Hendrik Bogaerts, Bart Broes De Cat De Pooter, Stef Jansen, Joachim Labarre, Anthony Ramon, Jan Denecker, Marc Verwer, Sicco |
description | This paper provides a gentle introduction to problem solving with the IDP3 system. The core of IDP3 is a finite model generator that supports first order logic enriched with types, inductive definitions, aggregates and partial functions. It offers its users a modeling language that is a slight extension of predicate logic and allows them to solve a wide range of search problems. Apart from a small introductory example, applications are selected from problems that arose within machine learning and data mining research. These research areas have recently shown a strong interest in declarative modeling and constraint solving as opposed to algorithmic approaches. The paper illustrates that the IDP3 system can be a valuable tool for researchers with such an interest. The first problem is in the domain of stemmatology, a domain of philology concerned with the relationship between surviving variant versions of text. The second problem is about a somewhat related problem within biology where phylogenetic trees are used to represent the evolution of species. The third and final problem concerns the classical problem of learning a minimal automaton consistent with a given set of strings. For this last problem, we show that the performance of our solution comes very close to that of a state-of-the art solution. For each of these applications, we analyze the problem, illustrate the development of a logic-based model and explore how alternatives can affect the performance. |
doi_str_mv | 10.48550/arxiv.1309.6883 |
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The third and final problem concerns the classical problem of learning a minimal automaton consistent with a given set of strings. For this last problem, we show that the performance of our solution comes very close to that of a state-of-the art solution. For each of these applications, we analyze the problem, illustrate the development of a logic-based model and explore how alternatives can affect the performance.</description><identifier>EISSN: 2331-8422</identifier><identifier>DOI: 10.48550/arxiv.1309.6883</identifier><language>eng</language><publisher>Ithaca: Cornell University Library, arXiv.org</publisher><subject>Artificial intelligence ; Biological evolution ; Computer Science - Artificial Intelligence ; Computer Science - Logic in Computer Science ; Constraint modelling ; Data mining ; Machine learning ; Predicate logic ; Problem solving ; Strings</subject><ispartof>arXiv.org, 2014-03</ispartof><rights>2014. 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subjects | Artificial intelligence Biological evolution Computer Science - Artificial Intelligence Computer Science - Logic in Computer Science Constraint modelling Data mining Machine learning Predicate logic Problem solving Strings |
title | Predicate Logic as a Modeling Language: Modeling and Solving some Machine Learning and Data Mining Problems with IDP3 |
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