Irene-Anna Diakidoy

This paper develops a Reasoning about Actions and Change framework integrated with Default Reasoning, suitable as a Knowledge Representation and Reasoning framework for Story Comprehension. The proposed framework, which is guided strongly by existing knowhow from the Psychology of Reading and Comprehension, is based on the theory of argumentation from AI. It uses argumentation to capture appropriate solutions to the frame, ramification and qualifica tion problems and generalizations of these problems required for text comprehension. In this first part of the study the wor k concentrates on the central problem of integration (or elaboration) of the explicit information from the narrative in th e text with the implicit (in the reader’s mind) common sense world knowledge pertaining to the topic(s) of the story given in the text. We also report on our empirical efforts to gather background common sense world knowledge used by humans when reading a story and to evaluate, through a prototype system, the ability of our approach to capture both the majority and the variability of understanding of a story by the human readers in the experiments.

[1]  Loizos Michael,et al.  Reading between the lines , 2009, Nature.

[2]  Leslie G. Valiant,et al.  A First Experimental Demonstration of Massive Knowledge Infusion , 2008, KR.

[3]  Phan Minh Dung,et al.  On the Acceptability of Arguments and its Fundamental Role in Nonmonotonic Reasoning, Logic Programming and n-Person Games , 1995, Artif. Intell..

[4]  Paolo Mancarella,et al.  Argumentation for Propositional Logic and Nonmonotonic Reasoning , 2014, CILC.

[5]  Paolo Mancarella,et al.  On the semantics of abstract argumentation , 2013, J. Log. Comput..

[6]  John B. Lowe,et al.  The Berkeley FrameNet Project , 1998, ACL.

[7]  Daniel Gildea,et al.  The Proposition Bank: An Annotated Corpus of Semantic Roles , 2005, CL.

[8]  William F. Brewer,et al.  Stories Are to Entertain: A Structural-Affect Theory of Stories. Technical Report No. 265. , 1982 .

[9]  Robert Michael Young,et al.  A Computational Model of Inferencing in Narrative , 2009, AAAI Spring Symposium: Intelligent Narrative Technologies II.

[10]  Ashwin Ram,et al.  Understanding language understanding: computational models of reading , 1999 .

[11]  Christine A. Montgomery,et al.  Knowledge representation for automated understanding of natural language discourse , 1977 .

[12]  Michael Thielscher,et al.  The Qualification Problem: A solution to the problem of anomalous models , 2001, Artif. Intell..

[13]  Roger C. Schank,et al.  Scripts, plans, goals and understanding: an inquiry into human knowledge structures , 1978 .

[14]  Ellen Riloff,et al.  Information extraction as a stepping stone toward story understanding , 1999 .

[15]  Antonis C. Kakas,et al.  Knowledge Qualification through Argumentation , 2009, LPNMR.

[16]  David N. Rapp,et al.  Dynamic Text Comprehension , 2005 .

[17]  J. Dessalles,et al.  Arguing, reasoning, and the interpersonal (cultural) functions of human consciousness , 2011, Behavioral and Brain Sciences.

[18]  Floris Bex,et al.  Legal stories and the process of proof , 2012, Artificial Intelligence and Law.

[19]  Frank van Harmelen,et al.  Handbook of Knowledge Representation , 2008, Handbook of Knowledge Representation.

[20]  Rolf A. Zwaan Effect of genre expectations on text comprehension. , 1994 .

[21]  Hector J. Levesque,et al.  The Winograd Schema Challenge , 2011, AAAI Spring Symposium: Logical Formalizations of Commonsense Reasoning.

[22]  Edward P. Stabler,et al.  Knowledge Representation for Commonsense Reasoning with Text , 1989, CL.

[23]  Henry Prakken,et al.  A general account of argumentation with preferences , 2013, Artif. Intell..

[24]  Kathleen McKeown,et al.  Extending and Evaluating a Platform for Story Understanding , 2009, AAAI Spring Symposium: Intelligent Narrative Technologies II.

[25]  Erik T. Mueller,et al.  Understanding script-based stories using commonsense reasoning , 2004, Cognitive Systems Research.

[26]  N. Y. Foo,et al.  Reasoning about Action: An Argumentation - Theoretic Approach , 2005, J. Artif. Intell. Res..

[27]  Loizos Michael Computability of Narrative , 2010, AAAI Fall Symposium: Computational Models of Narrative.

[28]  Douglas B. Lenat,et al.  CYC: a large-scale investment in knowledge infrastructure , 1995, CACM.

[29]  Joseph P. Magliano,et al.  Chapter 9 Toward a Comprehensive Model of Comprehension , 2009 .

[30]  Philip N. Johnson-Laird,et al.  The Cambridge Handbook of Computational Psychology: Mental Logic, Mental Models, and Simulations of Human Deductive Reasoning , 2008 .