We aim to develop a text mining framework capable ofidentifying and extractingcausal dependenciesamongchanging variables(orevents) from scientific publications in the cross-disciplinary field ofoceanographic climate science. The extracted information can be usedto infer new knowledge or to find out unknown hypotheses throughreasoning, which forms the basis of a knowledge discovery supportsystem. Automatic extraction of causal knowledge from text contentis a challenging task. Generally, the approaches of causal relationidentification proposed in the literature target specific domain such asonline news or biomedicine as the domain has significant influence oncausality expressions ...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
The number of scientific papers published each year is growing exponentially. How can computational ...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Background. Automatic extraction of causal chains is valuable for discovering previously unknown and...
This paper addresses text mining in the cross-disciplinary fields of climate science, marine science...
This paper addresses text mining in the cross-disciplinary fields of climate science, marine science...
This thesis studies the automatic recognition of implicit causal relations between clauses. Previous...
In this paper, we address the problem of extracting causal knowledge from text documents in a weakly...
Abstract Background Recently, research on human disease network has succeeded and has become an aid ...
The aiming of this paper is to automatically extract the causality knowledge from documents for the ...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
Semantic relations between various text units play an important role in natural language understand...
Event causality knowledge is indispensable for intelligent natural language understanding. The prob...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
The number of scientific papers published each year is growing exponentially. How can computational ...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Background. Automatic extraction of causal chains is valuable for discovering previously unknown and...
This paper addresses text mining in the cross-disciplinary fields of climate science, marine science...
This paper addresses text mining in the cross-disciplinary fields of climate science, marine science...
This thesis studies the automatic recognition of implicit causal relations between clauses. Previous...
In this paper, we address the problem of extracting causal knowledge from text documents in a weakly...
Abstract Background Recently, research on human disease network has succeeded and has become an aid ...
The aiming of this paper is to automatically extract the causality knowledge from documents for the ...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
Semantic relations between various text units play an important role in natural language understand...
Event causality knowledge is indispensable for intelligent natural language understanding. The prob...
2011-10-26It has long been the vision of AI researchers to build systems that are able to learn and ...
The number of scientific papers published each year is growing exponentially. How can computational ...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...