International audienceThe document similarity measure is a key point in textual data processing. It is the main responsible of the performance of a processing system. Since a decade, kernels are used as similarity functions within inner-product based algorithms such as the SVM for NLP problems and especially for text categorization. In this paper, we present a semantic space constructed from latent concepts. The concepts are extracted using the Latent Semantic Analysis (LSA). To take into account of the specificity of each document category, we use the local LSA to define the global semantic space. Furthermore, we propose a weighted semantic kernel for the global space. The experimental results of the kernel, on text categorization tasks, s...
We study and propose in this article several novel solutions to the task of semantic similarity betw...
Web-mediated access to distributed informa-tion is a complex problem. Before any learn-ing can start...
We propose a semantic kernel for Support Vector Machines (SVM) that takes advantage of higher-order ...
Latent Semantic Analysis (LSA) is a technique that analyzes relationships between documents and its ...
Abstract. Improving accuracy in Information Retrieval tasks via se-mantic information is a complex p...
International audienceKernels are widely used in Natural Language Processing as similarity measures ...
In this thesis text categorization is investigated in four dimensions of analysis: theoretically as ...
Ganiz, Murat Can (Dogus Author) -- Conference full title: 2013 10th International Conference on Elec...
In this paper, we investigate the impact of several local and global weighting schemes on Latent Sem...
Latent Semantic Analysis (LSA) is a vector space technique for representing word meaning. Traditiona...
One of the challenges in Latent Semantic Analysis (LSA) is to decide which corpus is best for a spec...
Abstract. Typically, in textual document classification the documents are represented in the vector ...
The use of the latent semantic analysis (LSA) in text mining demands large space and time requiremen...
The work on document similarity has shown that complex representations are not more accurate than th...
Pairwise similarity judgement correlations between humans and Latent Semantic Analysis (LSA) were ex...
We study and propose in this article several novel solutions to the task of semantic similarity betw...
Web-mediated access to distributed informa-tion is a complex problem. Before any learn-ing can start...
We propose a semantic kernel for Support Vector Machines (SVM) that takes advantage of higher-order ...
Latent Semantic Analysis (LSA) is a technique that analyzes relationships between documents and its ...
Abstract. Improving accuracy in Information Retrieval tasks via se-mantic information is a complex p...
International audienceKernels are widely used in Natural Language Processing as similarity measures ...
In this thesis text categorization is investigated in four dimensions of analysis: theoretically as ...
Ganiz, Murat Can (Dogus Author) -- Conference full title: 2013 10th International Conference on Elec...
In this paper, we investigate the impact of several local and global weighting schemes on Latent Sem...
Latent Semantic Analysis (LSA) is a vector space technique for representing word meaning. Traditiona...
One of the challenges in Latent Semantic Analysis (LSA) is to decide which corpus is best for a spec...
Abstract. Typically, in textual document classification the documents are represented in the vector ...
The use of the latent semantic analysis (LSA) in text mining demands large space and time requiremen...
The work on document similarity has shown that complex representations are not more accurate than th...
Pairwise similarity judgement correlations between humans and Latent Semantic Analysis (LSA) were ex...
We study and propose in this article several novel solutions to the task of semantic similarity betw...
Web-mediated access to distributed informa-tion is a complex problem. Before any learn-ing can start...
We propose a semantic kernel for Support Vector Machines (SVM) that takes advantage of higher-order ...