Transfer Learning Based Recurrent Neural Network Algorithm for Linguistic Analysis

Author:

Jiang Peipei1,Chen Liailun2,Wang Min-Feng3

Affiliation:

1. An Hui Province. Faculty of foreign languages of West Anhui University, Lu’an, China

2. School of Public Teaching and Practice, Wuhan Technical College of Communications, Wuhan City, China

3. School of Arts and Law, Zheng Zhou Sheng Da University of Economics Business & Management, Zhengzhou, China

Abstract

Each language is a system of understanding and skills that allows language users to interact, express thoughts, hypotheses, feelings, wishes, and all that needs to be expressed. Linguistics is the research of these structures in all respects: the composition, usage, and sociology of language, in particular, are the core of linguistics. Machine Learning is the research area that allows machines to learn without being specifically scheduled. In linguistics, the design of writing is understood to be a foundation for many distinct company apps and probably the most useful if incorporated with machine learning methods. Research shows that besides text tagging and algorithm training, there are major problems in the field of Big Data. This article provides a collaborative effort (transfer learning integrated into Recurrent Neural Network) to analyze the distinct kinds of writing between the language's linear and non-computational sides, and to enhance granularity. The outcome demonstrates stronger incorporation of granularity into the language from both sides. Comparative results of machine learning algorithms are used to determine the best way to analyze and interpret the structure of the language.

Funder

Construction and Application of Public English Flipped Classroom Teaching Mode Based on Cloud Platform

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference30 articles.

1. Machine learning-based multi-documents sentiment-oriented summarization using linguistic treatment;Abdi A.;Expert Systems with Applications,2018

2. QMOS: Query-based multi-documents opinion-oriented summarization;Abdi A.;Information Processing and Management,2018

3. Significance of machine learning algorithms in professional blogger's classification;Asim Y.;Computers and Electrical Engineering,2018

4. A gradient-descent-based approach for transparent linguistic interface generation in fuzzy models;Chen L.;IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics),2009

5. Feeling anxious? Perceiving anxiety in tweets using machine learning;Gruda D.;Computers in Human Behavior,2019

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