Modelling derivation in defeasible logic programming with perceptron-based neural networks
A solution of problems in multiagent systems involves representing beliefs of agents immersed in dynamic environments. Observation-based Defeasible Logic Programming (ODeLP) is an argument-based logic programming language that is used to represent an agent’s knowledge in the context of a multiagent...
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| Formato: | Objeto de conferencia |
| Lenguaje: | Inglés |
| Publicado: |
2004
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| Acceso en línea: | http://sedici.unlp.edu.ar/handle/10915/22518 |
| Aporte de: |
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I19-R120-10915-22518 |
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| record_format |
dspace |
| institution |
Universidad Nacional de La Plata |
| institution_str |
I-19 |
| repository_str |
R-120 |
| collection |
SEDICI (UNLP) |
| language |
Inglés |
| topic |
Ciencias Informáticas Artificial Intelligence Defeasible Argumentation Intelligent agents Neural nets Observation-based Defeasible Logic Programming Perceptron Neural Networks |
| spellingShingle |
Ciencias Informáticas Artificial Intelligence Defeasible Argumentation Intelligent agents Neural nets Observation-based Defeasible Logic Programming Perceptron Neural Networks Gómez, Sergio Alejandro Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| topic_facet |
Ciencias Informáticas Artificial Intelligence Defeasible Argumentation Intelligent agents Neural nets Observation-based Defeasible Logic Programming Perceptron Neural Networks |
| description |
A solution of problems in multiagent systems involves representing beliefs of agents immersed in dynamic environments. Observation-based Defeasible Logic Programming (ODeLP) is an argument-based logic programming language that is used to represent an agent’s knowledge in the context of a multiagent system. The beliefs of the agent depends on a warrant procedure performed on its knowledge base contents. New perceptions result in changes in the agent’s beliefs. In the context of real time constraints, this belief change procedure should be done efficiently.
This paper introduces an algorithm for translating an agent’s knowledge base, expressed as an ODeLP rule base, into a Perceptron-based neural network. Observations in an ODeLP program can then be codified as an input pattern. The input pattern is then fed to the neural network whose propagation results in an output pattern. This output pattern contains information regarding which beliefs can be hold by the agent as well as if there exists contradiction among them. The proposal is attractive as the massivelly parallel processing intrinsic to neural networks make them appropiate for implementing parts of the aforementioned warrant procedure. |
| format |
Objeto de conferencia Objeto de conferencia |
| author |
Gómez, Sergio Alejandro |
| author_facet |
Gómez, Sergio Alejandro |
| author_sort |
Gómez, Sergio Alejandro |
| title |
Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| title_short |
Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| title_full |
Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| title_fullStr |
Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| title_full_unstemmed |
Modelling derivation in defeasible logic programming with perceptron-based neural networks |
| title_sort |
modelling derivation in defeasible logic programming with perceptron-based neural networks |
| publishDate |
2004 |
| url |
http://sedici.unlp.edu.ar/handle/10915/22518 |
| work_keys_str_mv |
AT gomezsergioalejandro modellingderivationindefeasiblelogicprogrammingwithperceptronbasedneuralnetworks |
| bdutipo_str |
Repositorios |
| _version_ |
1764820465892720641 |