Belief-evidence fusion through successive rule refinement in a hybrid intelligent system

A hybrid intelligent system that is able to sucessively refine knowledge stored in its rulebase is developed. The existing knowledge (referred to as belief rules), which may initially be defined by experts in a particular domain, is stored in the form of rules in the rulebase and is refined by compa...

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Main Author: Marcos, Nelson
Format: text
Language:English
Published: Animo Repository 2002
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Online Access:https://animorepository.dlsu.edu.ph/etd_doctoral/947
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_doctoral-19462021-05-19T08:56:34Z Belief-evidence fusion through successive rule refinement in a hybrid intelligent system Marcos, Nelson A hybrid intelligent system that is able to sucessively refine knowledge stored in its rulebase is developed. The existing knowledge (referred to as belief rules), which may initially be defined by experts in a particular domain, is stored in the form of rules in the rulebase and is refined by comparing it with new knowledge (referred to as evidence rules) extracted from data sets trained under a neural network. Based on measurement, assessment and interpretation of rule similarity, belief rules existing in the rulebase may be found to be confirmed, contradicted or left unsupported by the new training data. New evidence rules may also be discovered from a training data set. This rule comparison is unique in the sense that rules are viewed and compared in geometric manner. As rules evolve in existence in the rulebase during the belief-evidence fusion process, their bounds, strengths and certainties are also revised. The hybrid intelligent system is tested with different data sets, including hypothetical data sets and actual data sets. the system outperforms conventional backpropagation neural learning systems in terms of accuracy and predictability especially when the data is sparse or arrives in bursts, or when the initial knowledge is incorrect. Ordering effects inherent in incremental systems, however, is difficult to address as neural network learning can be unpredictable. The performance of the system increases if predictive classification of unclassified test data is performed. 2002-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_doctoral/947 Dissertations English Animo Repository Hybrid systems Neural networks (Computer science) Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Hybrid systems
Neural networks (Computer science)
Computer Sciences
spellingShingle Hybrid systems
Neural networks (Computer science)
Computer Sciences
Marcos, Nelson
Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
description A hybrid intelligent system that is able to sucessively refine knowledge stored in its rulebase is developed. The existing knowledge (referred to as belief rules), which may initially be defined by experts in a particular domain, is stored in the form of rules in the rulebase and is refined by comparing it with new knowledge (referred to as evidence rules) extracted from data sets trained under a neural network. Based on measurement, assessment and interpretation of rule similarity, belief rules existing in the rulebase may be found to be confirmed, contradicted or left unsupported by the new training data. New evidence rules may also be discovered from a training data set. This rule comparison is unique in the sense that rules are viewed and compared in geometric manner. As rules evolve in existence in the rulebase during the belief-evidence fusion process, their bounds, strengths and certainties are also revised. The hybrid intelligent system is tested with different data sets, including hypothetical data sets and actual data sets. the system outperforms conventional backpropagation neural learning systems in terms of accuracy and predictability especially when the data is sparse or arrives in bursts, or when the initial knowledge is incorrect. Ordering effects inherent in incremental systems, however, is difficult to address as neural network learning can be unpredictable. The performance of the system increases if predictive classification of unclassified test data is performed.
format text
author Marcos, Nelson
author_facet Marcos, Nelson
author_sort Marcos, Nelson
title Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
title_short Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
title_full Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
title_fullStr Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
title_full_unstemmed Belief-evidence fusion through successive rule refinement in a hybrid intelligent system
title_sort belief-evidence fusion through successive rule refinement in a hybrid intelligent system
publisher Animo Repository
publishDate 2002
url https://animorepository.dlsu.edu.ph/etd_doctoral/947
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