MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  Scaling up explanation generation: Large-scale knowledge bases and empirical studies (1996) [11 citations — 5 self]

Download:
pdf | ps
by James C. Lester, Bruce W. Porter
In Proceedings of the Thirteenth National Conference on Artificial Intelligence
http://www.cs.utexas.edu/users/mfkb/papers/knight-aaai96.ps
Add To MetaCart

Abstract:

To explain complex phenomena, an explanation system must be able to select information from a formal representation of domain knowledge, organize the selected information into multisentential discourse plans, and realize the discourse plans in text. Although recent years have witnessed significant progress in the development of sophisticated computational mechanisms for explanation, empirical results have been limited. This paper reports on a seven year effort to empirically study explanation generation from semantically rich, large-scale knowledge bases. We first describe Knight, a robust explanation system that constructs multi-sentential and multi-paragraph explanations from the Biology Knowledge Base, a large-scale knowledge base in the domain of botanical anatomy, physiology, and development. We then introduce the Two Panel evaluation methodology and describe how Knight's performance was assessed with this methodology in the most extensive empirical evaluation conducted on an explanation system. In this evaluation, Knight scored within "half a grade " of domain experts, and its performance exceeded that of one of the domain experts.

Citations

249 Text Generation: Using Discourse Strategy and Focus Constraints to Generate Natural Language Texts – McKeown - 1985
148 Automated discourse generation using discourse structure relations – Hovy - 1993
127 Pragmatics and Natural Language Generation – Hovy - 1990
103 Tailoring object descriptions to a user's level of expertise – Paris - 1988
100 Participating in Explanatory Dialogues – Moore - 1995
98 Revision-Based Generation of Natural Language Summaries Providing Historical Background: Corpus-Based Analysis, Design, Implementation and Evaluation – Robin - 1994
80 Explanation and Interaction: The Computer Generation of Explanatory Dialogues – Cawsey - 1993
74 FUF: The universal unifier user manual version 5.0 – Elhadad - 1991
49 Generating context-sensitive responses to object-related misconceptions – McCoy - 1989
31 AI Research in the Context of A Multifunctional Knowledge Base: The Botany Knowledge Base Project – Porter, Lester, et al. - 1988
30 Knowledge-Based Report Generation: A Knowledge Engineering Approach to Natural Language Report Generation – Kukich - 1983
25 Communicative Acts for Generating Natural Language Arguments – Maybury - 1993
19 Generating Natural Language Explanations from Large-Scale Knowledge Bases – Lester - 1994
16 Generating Natural Language Descriptions with Integrated Text and Examples – Mittal - 1993
7 Generating coherent explanations to answer students' questions – Acker, Lester, et al. - 1991
7 A student-sensitive discourse generator for intelligent tutoring systems – Lester, Porter - 1991
5 Robust natural language generation from large-scale knowledge bases – Callaway, Lester - 1995