In order to train machines to ‘understand ’ natural language, we propose a meaning representation mechanism called E-HowNet to encode lexical senses. In this paper, we take interrogatives as examples to demonstrate the mechanisms of semantic representation and composition of interrogative constructions under the framework of E-HowNet. We classify the interrogative words into five classes according to their query types, and represent each type of interrogatives with fine-grained features and operators. The process of semantic composition and the difficulties of representation, such as word sense disambiguation, are addressed. Finally, machine understanding is tested by showing how machines derive the same deep semantic structure for synonymo...
Word sense disambiguation (WSD) is the ability to identify the meaning of words in context in a comp...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
In this thesis, we try to solve the problem of word sense disambiguation (WSD) in natural language p...
In order to train machines to ‘understand ’ natural language, we proposed a universal concept repres...
Abstract. This paper describes a universal concept representational mechanism called E-HowNet, to ha...
In this paper, we propose an approach for studying the semantic representations of comparison words ...
This work proposes a basic framework for resolving sense disambiguation through the use of Semantic ...
In this paper, we study the semantic representations of comparison words and comparative constructio...
Word Sense Disambiguation (WSD) is traditionally considered an AI-hard problem. A break-through in t...
International audienceIn this paper, we develop a new way of creating sense vectors for any dictiona...
This thesis describes an approach to handle word sense in natural language processing. If we want la...
Understanding the user's intention is crucial for many tasks that involve human-machine interaction....
Knowledge representation is an emerging field of research in Artificial Intelligence, Big data analy...
Word sense disambiguation is a core problem in many tasks related to language processing. In this pa...
Abstract. A large class of unsupervised algorithms for Word Sense Disam-biguation (WSD) is that of d...
Word sense disambiguation (WSD) is the ability to identify the meaning of words in context in a comp...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
In this thesis, we try to solve the problem of word sense disambiguation (WSD) in natural language p...
In order to train machines to ‘understand ’ natural language, we proposed a universal concept repres...
Abstract. This paper describes a universal concept representational mechanism called E-HowNet, to ha...
In this paper, we propose an approach for studying the semantic representations of comparison words ...
This work proposes a basic framework for resolving sense disambiguation through the use of Semantic ...
In this paper, we study the semantic representations of comparison words and comparative constructio...
Word Sense Disambiguation (WSD) is traditionally considered an AI-hard problem. A break-through in t...
International audienceIn this paper, we develop a new way of creating sense vectors for any dictiona...
This thesis describes an approach to handle word sense in natural language processing. If we want la...
Understanding the user's intention is crucial for many tasks that involve human-machine interaction....
Knowledge representation is an emerging field of research in Artificial Intelligence, Big data analy...
Word sense disambiguation is a core problem in many tasks related to language processing. In this pa...
Abstract. A large class of unsupervised algorithms for Word Sense Disam-biguation (WSD) is that of d...
Word sense disambiguation (WSD) is the ability to identify the meaning of words in context in a comp...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
In this thesis, we try to solve the problem of word sense disambiguation (WSD) in natural language p...