CernoCAMAL : a probabilistic computational cognitive architecture

This thesis presents one possible way to develop a computational cognitive architecture, dubbed CernoCAMAL, that can be used to govern artificial minds probabilistically. The primary aim of the CernoCAMAL research project is to investigate how its predecessor architecture CAMAL can be extended to re...

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Main Author: Miri, Hossein
Other Authors: Davis, Darryl N., 1955-; Kambhampati, Chandrasekhar; Papadopoulos, Yiannis I.
Published: University of Hull 2012
Subjects:
004
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.572214
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5722142015-12-03T03:18:49ZCernoCAMAL : a probabilistic computational cognitive architectureMiri, HosseinDavis, Darryl N., 1955-; Kambhampati, Chandrasekhar; Papadopoulos, Yiannis I.2012This thesis presents one possible way to develop a computational cognitive architecture, dubbed CernoCAMAL, that can be used to govern artificial minds probabilistically. The primary aim of the CernoCAMAL research project is to investigate how its predecessor architecture CAMAL can be extended to reason probabilistically about domain model objects through perception, and how the probability formalism can be integrated into its BDI (Belief-Desire-Intention) model to coalesce a number of mechanisms and processes. The motivation and impetus for extending CAMAL and developing CernoCAMAL is the considerable evidence that probabilistic thinking and reasoning is linked to cognitive development and plays a role in cognitive functions, such as decision making and learning. This leads us to believe that a probabilistic reasoning capability is an essential part of human intelligence. Thus, it should be a vital part of any system that attempts to emulate human intelligence computationally. The extensions and augmentations to CAMAL, which are the main contributions of the CernoCAMAL research project, are as follows: - The integration of the EBS (Extended Belief Structure) that associates a probability value with every belief statement, in order to represent the degrees of belief numerically. - The inclusion of the CPR (CernoCAMAL Probabilistic Reasoner) that reasons probabilistically over the goal- and task-oriented perceptual feedback generated by reactive sub-systems. - The compatibility of the probabilistic BDI model with the affect and motivational models and affective and motivational valences used throughout CernoCAMAL. A succession of experiments in simulation and robotic testbeds is carried out to demonstrate improvements and increased efficacy in CernoCAMAL’s overall cognitive performance. A discussion and critical appraisal of the experimental results, together with a summary, a number of potential future research directions, and some closing remarks conclude the thesis.004Computer scienceUniversity of Hullhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.572214http://hydra.hull.ac.uk/resources/hull:6887Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 004
Computer science
spellingShingle 004
Computer science
Miri, Hossein
CernoCAMAL : a probabilistic computational cognitive architecture
description This thesis presents one possible way to develop a computational cognitive architecture, dubbed CernoCAMAL, that can be used to govern artificial minds probabilistically. The primary aim of the CernoCAMAL research project is to investigate how its predecessor architecture CAMAL can be extended to reason probabilistically about domain model objects through perception, and how the probability formalism can be integrated into its BDI (Belief-Desire-Intention) model to coalesce a number of mechanisms and processes. The motivation and impetus for extending CAMAL and developing CernoCAMAL is the considerable evidence that probabilistic thinking and reasoning is linked to cognitive development and plays a role in cognitive functions, such as decision making and learning. This leads us to believe that a probabilistic reasoning capability is an essential part of human intelligence. Thus, it should be a vital part of any system that attempts to emulate human intelligence computationally. The extensions and augmentations to CAMAL, which are the main contributions of the CernoCAMAL research project, are as follows: - The integration of the EBS (Extended Belief Structure) that associates a probability value with every belief statement, in order to represent the degrees of belief numerically. - The inclusion of the CPR (CernoCAMAL Probabilistic Reasoner) that reasons probabilistically over the goal- and task-oriented perceptual feedback generated by reactive sub-systems. - The compatibility of the probabilistic BDI model with the affect and motivational models and affective and motivational valences used throughout CernoCAMAL. A succession of experiments in simulation and robotic testbeds is carried out to demonstrate improvements and increased efficacy in CernoCAMAL’s overall cognitive performance. A discussion and critical appraisal of the experimental results, together with a summary, a number of potential future research directions, and some closing remarks conclude the thesis.
author2 Davis, Darryl N., 1955-; Kambhampati, Chandrasekhar; Papadopoulos, Yiannis I.
author_facet Davis, Darryl N., 1955-; Kambhampati, Chandrasekhar; Papadopoulos, Yiannis I.
Miri, Hossein
author Miri, Hossein
author_sort Miri, Hossein
title CernoCAMAL : a probabilistic computational cognitive architecture
title_short CernoCAMAL : a probabilistic computational cognitive architecture
title_full CernoCAMAL : a probabilistic computational cognitive architecture
title_fullStr CernoCAMAL : a probabilistic computational cognitive architecture
title_full_unstemmed CernoCAMAL : a probabilistic computational cognitive architecture
title_sort cernocamal : a probabilistic computational cognitive architecture
publisher University of Hull
publishDate 2012
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.572214
work_keys_str_mv AT mirihossein cernocamalaprobabilisticcomputationalcognitivearchitecture
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