Abstract. The feature selection is an important part in automatic text classification. In this paper, we use a Chinese semantic dictionary-- Hownet to extract the concepts from the word as the feature set, because it can better reflect the meaning of the text. We construct a combined feature set that consists of both sememes and the Chinese words, propose a CHI-MCOR weighing method according to the weighing theories and classification precision. The effectiveness of the competitive network and the Radial Basis Function (RBF) network in text classification are examined. Experimental result shows that if the words are extracted properly, not only the feature dimension is smaller but also the classification precision is higher, the RBF network...
Text classification (TC) is the task of assigning predefined categories (or labels) to texts for inf...
Text classification is one of the principal tasks of machine learning. It aims to design proper algo...
This paper reports an unsupervised approach we adopted for Wordnet construction. We combine ways of ...
With the development of modern information science and technology, the number of Internet users cont...
Text classification has always been a concern in area of natural language processing, especially now...
In this paper the effectiveness of three neural networks, the Competitive, the Backpropagation (BP) ...
Text classification is of importance in natural language processing, as the massive text information...
This paper focuses on the high dimensional text problems encountered in text classification.Document...
The feature selection is an important part in automatic classification. In this paper, we use the Ho...
The feature selection is an important part in automatic classification. In this paper, we use the Ho...
The Chinese classification methods based on LSTM can correctly identify the category oftext, but suc...
Text classification is an important task of data mining. Existing algorithms, which based on vector ...
Text categorization task always suffers from a high dimension problem, which leads the learning syst...
Text classification is an essential task in many Natural Language Processing (NLP) applications, we ...
三重大学大学院工学研究科博士前期課程情報工学専攻Automatic text classification (ATC) is the task to automatically assign one ...
Text classification (TC) is the task of assigning predefined categories (or labels) to texts for inf...
Text classification is one of the principal tasks of machine learning. It aims to design proper algo...
This paper reports an unsupervised approach we adopted for Wordnet construction. We combine ways of ...
With the development of modern information science and technology, the number of Internet users cont...
Text classification has always been a concern in area of natural language processing, especially now...
In this paper the effectiveness of three neural networks, the Competitive, the Backpropagation (BP) ...
Text classification is of importance in natural language processing, as the massive text information...
This paper focuses on the high dimensional text problems encountered in text classification.Document...
The feature selection is an important part in automatic classification. In this paper, we use the Ho...
The feature selection is an important part in automatic classification. In this paper, we use the Ho...
The Chinese classification methods based on LSTM can correctly identify the category oftext, but suc...
Text classification is an important task of data mining. Existing algorithms, which based on vector ...
Text categorization task always suffers from a high dimension problem, which leads the learning syst...
Text classification is an essential task in many Natural Language Processing (NLP) applications, we ...
三重大学大学院工学研究科博士前期課程情報工学専攻Automatic text classification (ATC) is the task to automatically assign one ...
Text classification (TC) is the task of assigning predefined categories (or labels) to texts for inf...
Text classification is one of the principal tasks of machine learning. It aims to design proper algo...
This paper reports an unsupervised approach we adopted for Wordnet construction. We combine ways of ...