The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarded as state-of-the-art semantic relatedness measure in the recent years. We provide an analysis of the important parameters of ESA using datasets in five different languages. Additionally, we propose the use of ESA with multiple lexical semantic resources thus exploiting multiple evidence of term cooccurrence to improve over the Wikipedia-based measure. Exploiting the improved robustness and coverage of the proposed combination, we report improved performance over single resources in word semantic relatedness, solving word choice problems, classification of semantic relations between nominals, and text similarity
Abstract—Semantic relatedness measures are used in many applications in natural language processing ...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
This paper introduces a collection of freely available Latent Semantic Analysis models built on the ...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Computing semantic relatedness of natural language texts requires access to vast amounts of common-s...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
Semantic association computation is the process of automatically quantifying the strength of a seman...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
Adequate representation of natural language se-mantics requires access to vast amounts of common sen...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
Abstract—Semantic relatedness measures are used in many applications in natural language processing ...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
This paper introduces a collection of freely available Latent Semantic Analysis models built on the ...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
Computing semantic relatedness of natural language texts requires access to vast amounts of common-s...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
Semantic association computation is the process of automatically quantifying the strength of a seman...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
International audienceWe describe a new semantic relatedness measure combining the Wikipedia-based E...
Adequate representation of natural language se-mantics requires access to vast amounts of common sen...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
Abstract—Semantic relatedness measures are used in many applications in natural language processing ...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
This paper introduces a collection of freely available Latent Semantic Analysis models built on the ...