AbstractObjective: This paper introduces latent semantic analysis (LSA), a machine learning method for representing the meaning of words, sentences, and texts. LSA induces a high-dimensional semantic space from reading a very large amount of texts. The meaning of words and texts can be represented as vectors in this space and hence can be compared automatically and objectively. Psychological theory: A generative theory of the mental lexicon based on LSA is described. The word vectors LSA constructs are context free, and each word, irrespective of how many meanings or senses it has, is represented by a single vector. However, when a word is used in different contexts, context appropriate word senses emerge. Current applications: Several appl...
Cognitive studies reveal that less-than-expert clinicians are less able to recognize meaningful patt...
Copyright © 2002 Swets & ZeitlingerThe aim of this study was to compare traditional methods of scori...
International audienceMost e-learning systems engage successively students in reading, writing and a...
This article describes the use of latent semantic analysis (LSA), a machine-learning technique which...
Over the past two decades, researchers have made great advances in the area of computational methods...
Latent Semantic Analysis (LSA) is a statisti-cal, corpus-based text comparison mechanism that was or...
Natural-language based knowledge representations borrow their expressiveness from the semantics of l...
Latent Semantic Analysis (LSA) is a vector space technique for representing word meaning. Traditiona...
This paper investigates how Latent Semantic Analysis (LSA), a model created by Landauer and Dumais [...
[[abstract]]The proposal aims to develop an evaluation system for summarization. LSA (Latent Semanti...
[[abstract]]The proposal aims to develop an evaluation system for summarization. LSA (Latent Semanti...
Latent semantic analysis (LSA) is an automated, statistical technique for comparing the semantic sim...
The problems of automatic analysis and representation of human language have been clear since the in...
Discourse research has provided an increasingly pre-cise understanding of the factors that influence...
Latent semantic analysis (LSA) is a statistical, corpus-based technique of representing knowledge. I...
Cognitive studies reveal that less-than-expert clinicians are less able to recognize meaningful patt...
Copyright © 2002 Swets & ZeitlingerThe aim of this study was to compare traditional methods of scori...
International audienceMost e-learning systems engage successively students in reading, writing and a...
This article describes the use of latent semantic analysis (LSA), a machine-learning technique which...
Over the past two decades, researchers have made great advances in the area of computational methods...
Latent Semantic Analysis (LSA) is a statisti-cal, corpus-based text comparison mechanism that was or...
Natural-language based knowledge representations borrow their expressiveness from the semantics of l...
Latent Semantic Analysis (LSA) is a vector space technique for representing word meaning. Traditiona...
This paper investigates how Latent Semantic Analysis (LSA), a model created by Landauer and Dumais [...
[[abstract]]The proposal aims to develop an evaluation system for summarization. LSA (Latent Semanti...
[[abstract]]The proposal aims to develop an evaluation system for summarization. LSA (Latent Semanti...
Latent semantic analysis (LSA) is an automated, statistical technique for comparing the semantic sim...
The problems of automatic analysis and representation of human language have been clear since the in...
Discourse research has provided an increasingly pre-cise understanding of the factors that influence...
Latent semantic analysis (LSA) is a statistical, corpus-based technique of representing knowledge. I...
Cognitive studies reveal that less-than-expert clinicians are less able to recognize meaningful patt...
Copyright © 2002 Swets & ZeitlingerThe aim of this study was to compare traditional methods of scori...
International audienceMost e-learning systems engage successively students in reading, writing and a...