On using human nonmonotonic reasoning to inform artificial systems

<span>People seem adept at drawing tentative conclusions when premises do not lead to a necessary conclusion. In contrast, the artificial nonmonotonic reasoning systems that have been developed are complex and do not function with ease. This apparent difference between human and artificial com...

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Main Author: Marilyn Ford
Format: Article
Language:English
Published: Ubiquity Press 2005-03-01
Series:Psychologica Belgica
Online Access:http://www.psychologicabelgica.com/articles/160
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spelling doaj-dffb5652d6b24faa83347ad34e4348142020-11-25T00:33:47ZengUbiquity PressPsychologica Belgica0033-28792054-670X2005-03-01451577010.5334/pb-45-1-57160On using human nonmonotonic reasoning to inform artificial systemsMarilyn Ford0Griffith University<span>People seem adept at drawing tentative conclusions when premises do not lead to a necessary conclusion. In contrast, the artificial nonmonotonic reasoning systems that have been developed are complex and do not function with ease. This apparent difference between human and artificial computational reasoning is sometimes considered puzzling and frustrating - if people can do it so easily, why can't we get computers to do it easily? The present paper explores the ways in which people attempt to solve nonmonotonic problems which contain conflict and shows that people do not in fact reason about these nonmonotonic problems so easily; they jump to conclusions easily, but they do not reason so well. However, some people do manage to sometimes reason quite well, in that their reasoning is based on ideas that are (classically) logically justifiable. This paper explores differences between these reasoners and others who cope less well. It also explores how the identification of the way in which these people reason can be used to inform artificial nonmonotonic reasoning systems.</span>http://www.psychologicabelgica.com/articles/160
collection DOAJ
language English
format Article
sources DOAJ
author Marilyn Ford
spellingShingle Marilyn Ford
On using human nonmonotonic reasoning to inform artificial systems
Psychologica Belgica
author_facet Marilyn Ford
author_sort Marilyn Ford
title On using human nonmonotonic reasoning to inform artificial systems
title_short On using human nonmonotonic reasoning to inform artificial systems
title_full On using human nonmonotonic reasoning to inform artificial systems
title_fullStr On using human nonmonotonic reasoning to inform artificial systems
title_full_unstemmed On using human nonmonotonic reasoning to inform artificial systems
title_sort on using human nonmonotonic reasoning to inform artificial systems
publisher Ubiquity Press
series Psychologica Belgica
issn 0033-2879
2054-670X
publishDate 2005-03-01
description <span>People seem adept at drawing tentative conclusions when premises do not lead to a necessary conclusion. In contrast, the artificial nonmonotonic reasoning systems that have been developed are complex and do not function with ease. This apparent difference between human and artificial computational reasoning is sometimes considered puzzling and frustrating - if people can do it so easily, why can't we get computers to do it easily? The present paper explores the ways in which people attempt to solve nonmonotonic problems which contain conflict and shows that people do not in fact reason about these nonmonotonic problems so easily; they jump to conclusions easily, but they do not reason so well. However, some people do manage to sometimes reason quite well, in that their reasoning is based on ideas that are (classically) logically justifiable. This paper explores differences between these reasoners and others who cope less well. It also explores how the identification of the way in which these people reason can be used to inform artificial nonmonotonic reasoning systems.</span>
url http://www.psychologicabelgica.com/articles/160
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