Research on centralised matching method of teaching knowledge categories based on intelligent language recognition.

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Author: Lei Liu
Date: Feb. 10, 2021
Publisher: Inderscience Publishers Ltd.
Document Type: Brief article
Length: 153 words

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Abstract :

In order to improve the accuracy and efficiency of teaching knowledge classification matching, a method of teaching knowledge classification matching based on intelligent language recognition is proposed. The deep learning network was constructed, the language files were pre-processed, and the extracted language feature vectors were used to train the network and optimise the deep learning network. The intelligent language recognition network model is established and the k-means clustering algorithm is used to acquire the model. Classification of teaching knowledge is processed centrally and the classification system of teaching knowledge is obtained. Matching problem of teaching knowledge classification system is modelled, and the corresponding undirected graph is constructed, which is converted into the matching problem with the greatest weight, and the optimal matching scheme under the category of teaching knowledge concentration is obtained. Experimental results show that the matching results based on intelligent language recognition are more accurate and more efficient. Byline: Lei Liu

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Gale Document Number: GALE|A659126078