This paper presents a novel approach for inducing causal rules by using deverbal nouns as a clue for finding causal relations. We collect verbs and their deverbal forms from FrameNet, and extract pairs of sentences in which event verbs and their corresponding deverbal forms co-occur in documents. The most challenging part of this work is to generalize an instance of causal relation into a rule. This paper proposes a method to generalize and constrain causal rules so that the obtained rules have the high chance of applicability and reusability. In order to find a suitable constraint for a causal rule, we utilize relation instances extracted by an open-information extractor, and build a classifier to choose the most suitable constraint. We de...
EcoLexicon is a multilingual terminological knowledge base (TKB) that represents environmental conce...
Attempts to characterize people's causal knowledge of a domain in terms of causal network struc...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...
This paper presents a novel approach for inducing causal rules by using deverbal nouns as a clue for...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Event causality knowledge is indispensable for intelligent natural language understanding. The prob...
Recognition of causality is important to achieve natural language discourse under-standing. Previous...
Several supervised approaches have been proposed for causality identification by re-lying on shallow...
This study entails the understanding of and the development of a computational method for automatica...
This thesis studies the automatic recognition of implicit causal relations between clauses. Previous...
This paper proposes a method that extracts causal knowledge from news paper articles via clue expres...
Background. Automatic extraction of causal chains is valuable for discovering previously unknown and...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Causation relations are a pervasive feature of human language. Despite this, the automatic acquisi...
EcoLexicon is a multilingual terminological knowledge base (TKB) that represents environmental conce...
Attempts to characterize people's causal knowledge of a domain in terms of causal network struc...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...
This paper presents a novel approach for inducing causal rules by using deverbal nouns as a clue for...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Event causality knowledge is indispensable for intelligent natural language understanding. The prob...
Recognition of causality is important to achieve natural language discourse under-standing. Previous...
Several supervised approaches have been proposed for causality identification by re-lying on shallow...
This study entails the understanding of and the development of a computational method for automatica...
This thesis studies the automatic recognition of implicit causal relations between clauses. Previous...
This paper proposes a method that extracts causal knowledge from news paper articles via clue expres...
Background. Automatic extraction of causal chains is valuable for discovering previously unknown and...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Causation relations are a pervasive feature of human language. Despite this, the automatic acquisi...
EcoLexicon is a multilingual terminological knowledge base (TKB) that represents environmental conce...
Attempts to characterize people's causal knowledge of a domain in terms of causal network struc...
One aspect of ontology learning methods is the discovery of relations in textual data. One kind of s...