Services that rely on the semantic computations of users’ natural linguistic inputs are becoming more frequent. Computing semantic relatedness between texts is problematic due to the inherit ambiguity of natural language. The purpose of this thesis was to show how a sentence could be compared to a predefined semantic Definite Clause Grammar (DCG). Furthermore, it should show how a DCG-based system could benefit from such capabilities. Our approach combines openly available specialized NLP frameworks for statistical parsing, part-of-speech tagging and word-sense disambiguation. We compute the semantic relatedness using a large lexical and conceptual-semantic thesaurus. Also, we extend an existing programming language for multimodal interface...
Adequate representation of natural language se-mantics requires access to vast amounts of common sen...
We introduce a learning semantic parser, SCISSOR, that maps natural-language sentences to a detailed...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
A clear andpowerfulformalism for describing languages, both natural and artificial, follows fiom a m...
Research in semantic parsing has focused on developing computational systems capable of simultaneous...
AbstractWe discuss the mechanical transformation of an unambiguous context-free grammar (CFG) into a...
When people read a text, they rely on a priori knowledge of language, common sense knowledge and kno...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
The standard approach in Natural Language Processing for semantic analysis (Word-Sense Disambiguatio...
We propose a parsing model for natural languages based on the concept of definite clause grammar. Ou...
Today Lexicon-Grammar (LG) remains one of the most consistent Natural Language Processing (NLP) appr...
This note gives some examples on the recommended literature, and gives some examples of grammars and...
As communication between humans and machines in natural language still seems essential, especially f...
This paper presents a grammar and semantic corpus based similarity algorithm for natural language se...
We propose and advocate the use of an advanced declarative programming paradigm – answer set program...
Adequate representation of natural language se-mantics requires access to vast amounts of common sen...
We introduce a learning semantic parser, SCISSOR, that maps natural-language sentences to a detailed...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
A clear andpowerfulformalism for describing languages, both natural and artificial, follows fiom a m...
Research in semantic parsing has focused on developing computational systems capable of simultaneous...
AbstractWe discuss the mechanical transformation of an unambiguous context-free grammar (CFG) into a...
When people read a text, they rely on a priori knowledge of language, common sense knowledge and kno...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
The standard approach in Natural Language Processing for semantic analysis (Word-Sense Disambiguatio...
We propose a parsing model for natural languages based on the concept of definite clause grammar. Ou...
Today Lexicon-Grammar (LG) remains one of the most consistent Natural Language Processing (NLP) appr...
This note gives some examples on the recommended literature, and gives some examples of grammars and...
As communication between humans and machines in natural language still seems essential, especially f...
This paper presents a grammar and semantic corpus based similarity algorithm for natural language se...
We propose and advocate the use of an advanced declarative programming paradigm – answer set program...
Adequate representation of natural language se-mantics requires access to vast amounts of common sen...
We introduce a learning semantic parser, SCISSOR, that maps natural-language sentences to a detailed...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...