Semantic Space models, which provide a numerical representation of words’ meaning extracted from corpus of documents, have been formalized in terms of Hermitian operators over real valued Hilbert spaces by Bruza et al. [1]. The collapse of a word into a particular meaning has been investigated applying the notion of quantum collapse of superpositional states [2]. While the semantic association between words in a Semantic Space can be computed by means of the Minkowski distance [3] or the cosine of the angle between the vector representation of each pair of words, a new procedure is needed in order to establish relations between two or more Semantic Spaces. We address the question: how can the distance between different Semantic Spaces be co...
We make a deep study of the distance between frames and between subspaces of a Hilbert space. There ...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
Word space models, in the sense of vector space models built on distributional data taken from texts...
Semantic Space models, which provide a numerical representation of words’ meaning extracted from cor...
Semantic Space models, which provide a numerical representation of words’ meaning extracted from cor...
Abstract. Semantic Space models, which provide a numerical repre-sentation of words ’ meaning extrac...
Semantic space models of word meaning derived from co-occurrence statistics within a corpus of docum...
An emerging topic in Quantuam Interaction is the use of lexical semantic spaces, as Hilbert spaces, ...
Semantic distance is a measure of how close or distant in meaning two units of language are. A large...
One of thechallenges in Latent Semantic Analysis (LSA) is deciding which corpus is best for a speci ...
Although semantic distance measures are applied to words in textual tasks such as building lexical c...
An emerging topic in Quantuam Interaction is the use of lexical semantic spaces, as Hilbert spaces, ...
The current paper is devoted to a formal analysis of the space category and, especially, to question...
Word Space Models (WSMs) are a statistical-computational technique to compare the collocational beha...
This study examines the relationship between two kinds of semantic spaces — i.e., spaces based on te...
We make a deep study of the distance between frames and between subspaces of a Hilbert space. There ...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
Word space models, in the sense of vector space models built on distributional data taken from texts...
Semantic Space models, which provide a numerical representation of words’ meaning extracted from cor...
Semantic Space models, which provide a numerical representation of words’ meaning extracted from cor...
Abstract. Semantic Space models, which provide a numerical repre-sentation of words ’ meaning extrac...
Semantic space models of word meaning derived from co-occurrence statistics within a corpus of docum...
An emerging topic in Quantuam Interaction is the use of lexical semantic spaces, as Hilbert spaces, ...
Semantic distance is a measure of how close or distant in meaning two units of language are. A large...
One of thechallenges in Latent Semantic Analysis (LSA) is deciding which corpus is best for a speci ...
Although semantic distance measures are applied to words in textual tasks such as building lexical c...
An emerging topic in Quantuam Interaction is the use of lexical semantic spaces, as Hilbert spaces, ...
The current paper is devoted to a formal analysis of the space category and, especially, to question...
Word Space Models (WSMs) are a statistical-computational technique to compare the collocational beha...
This study examines the relationship between two kinds of semantic spaces — i.e., spaces based on te...
We make a deep study of the distance between frames and between subspaces of a Hilbert space. There ...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
Word space models, in the sense of vector space models built on distributional data taken from texts...