Memory-based hypothesis formation: Heuristic Learning of Commonsense Causal Relations from Text (1992)
| Citations: | 3 - 0 self |
BibTeX
@MISC{Bozsahin92memory-basedhypothesis,
author = {H. Cem Bozsahin and Nicholas V. Findler},
title = {Memory-based hypothesis formation: Heuristic Learning of Commonsense Causal Relations from Text},
year = {1992}
}
OpenURL
Abstract
We present a memory-based approach to learning commonsense causal relations from episodic text. The method relies on dynamic memory which consists of events, event schemata, episodes, causal heuristics, and causal hypotheses. The learning algorithms are based on applying causal heuristics to precedents of new information. The heuristics are derived from principles of causation, and, to a limited extent, from domain-related causal reasoning. Learning is defined as finding---and later augmenting---inter-episodal and intra-episodal causal connections. The learning algorithms enable inductive generalization of causal associations into AND/OR graphs. The methodology has been implemented and tested in the program NEXUS. Memory-based hypothesis Error! Unknown switch argument. INTRODUCTION In this paper, we examine the mechanisms by which causal relations expressed in natural language can be learned. Natural languages provide ample means to describe physical and mental events, marked relati...







