A Novel Literary Translation Text Classification Method Based on Distributed Incremental Sequence Data Mining Algorithm

Author:

Sun Ji1ORCID

Affiliation:

1. Zhejiang International Studies University, Hangzhou 310023, China

Abstract

With the rapid development of electronic information technology and Internet technology, people's ability to generate and collect data is also increasing. With the rapid development of international exchanges, the number of literary translation texts has also increased dramatically. The information contained in the huge data of literary translation texts is huge, but these data are disorganized at this stage. Therefore, the classification of literary translation texts has become the key to efficient management of translated text information. Literary translation text classification is the process of classifying a given text as one or several of several predetermined text categories according to the content of the text. As one of the key steps in processing huge amounts of text data, text classification is generally regarded as the orderly organization of text sets, that is, grouping similar and related texts together. In this way, the problem of information clutter can be solved to a greater extent, and the efficiency of users' discovery, filtering, and analysis of text information resources can be effectively improved. At present, the basis of text classification is mainly based on the characteristics of words in the article, to analyze the correlation between words and categories. This approach ignores information such as word order and collocations in literary translation texts. To solve this problem, this paper introduces the distributed incremental sequence data mining algorithm into the classification of literary translation texts. This method can fully mine the features of syntactic order and other features based on considering the words and phrasing characteristics of articles in different application fields. The text classification effect is strengthened by discovering more effective information. The experimental results show that the method can improve the classification performance of literary translation texts.

Funder

Zhejiang International Studies University

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Information Systems

Reference26 articles.

1. Spam filtering based on the analysis of text information embedded into images;G. Fumera;Journal of Machine Learning Research,2006

2. Web page classification

3. Personalized news categorization through scalable text classification;I. Anotonellis;Front. WWW Res. Dev-APWEB Lect. Notes. Comput. Sci.,,2006

4. A Bayesian Classification Approach Using Class-Specific Features for Text Categorization

5. Pattern-based Topics for Document Modelling in Information Filtering

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