Traditional bag-of-words model and recent word-sequence kernel are two well-known techniques in the field of text categorization. Bag-of-words representation neglects the word order, which could result in less computation accuracy for some types of documents. Word-sequence kernel takes into account word order, but does not include all information of the word frequency. A weighted kernel model that combines these two models was proposed by the authors. This paper is focused on the optimization of the weighting parameters, which are functions of word frequency. Experiments have been conducted with Reuter’s database and show that the new weighted kernel achieves better classification accuracy
We propose a novel approach for categorizing text documents based on the use of a special kernel. Th...
Text categorization plays a crucial role in both academic and commercial platforms due to the growin...
Ganiz, Murat Can (Dogus Author) -- Conference full title: 2013 10th International Conference on Elec...
Traditional bag-of-words model and recent wordsequence kernel are two well-known techniques in the f...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
We propose a novel approach for categorizing text documents based on the use of a special kernel. Th...
In this paper we propose a novel kernel for text categorization. This kernel is an inner product def...
This paper introduces a convolutional sen-tence kernel based on word embeddings. Our kernel overcome...
Altınel, Berna (Dogus Author), Diri, Banu (Dogus Author), Ganiz, Murat Can (Dogus Author) -- #articl...
The expanding popularity of the Internet in recent years has lead to a corresponding increase in the...
In text categorization, a document is usually represented by a vector space model which can accompli...
In this thesis text categorization is investigated in four dimensions of analysis: theoretically as ...
Text categorization is a task of automatically assigning documents to a set of predefined categories...
We propose a semantic kernel for Support Vector Machines (SVM) that takes advantage of higher-order ...
This paper introduces a term weighting method for text categorization based on smoothing ideas borro...
We propose a novel approach for categorizing text documents based on the use of a special kernel. Th...
Text categorization plays a crucial role in both academic and commercial platforms due to the growin...
Ganiz, Murat Can (Dogus Author) -- Conference full title: 2013 10th International Conference on Elec...
Traditional bag-of-words model and recent wordsequence kernel are two well-known techniques in the f...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
We propose a novel approach for categorizing text documents based on the use of a special kernel. Th...
In this paper we propose a novel kernel for text categorization. This kernel is an inner product def...
This paper introduces a convolutional sen-tence kernel based on word embeddings. Our kernel overcome...
Altınel, Berna (Dogus Author), Diri, Banu (Dogus Author), Ganiz, Murat Can (Dogus Author) -- #articl...
The expanding popularity of the Internet in recent years has lead to a corresponding increase in the...
In text categorization, a document is usually represented by a vector space model which can accompli...
In this thesis text categorization is investigated in four dimensions of analysis: theoretically as ...
Text categorization is a task of automatically assigning documents to a set of predefined categories...
We propose a semantic kernel for Support Vector Machines (SVM) that takes advantage of higher-order ...
This paper introduces a term weighting method for text categorization based on smoothing ideas borro...
We propose a novel approach for categorizing text documents based on the use of a special kernel. Th...
Text categorization plays a crucial role in both academic and commercial platforms due to the growin...
Ganiz, Murat Can (Dogus Author) -- Conference full title: 2013 10th International Conference on Elec...