Construction of applied talents training system based on machine learning under the background of new liberal arts

The development of the new liberal arts field places emphasis on the integration of disciplines such as humanities, engineering, medicine, and agriculture. It specifically highlights the incorporation of new technologies into the education and training of liberal arts majors like economics, law, lit...

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Main Author: Fei Tang
Format: Article
Language:English
Published: PeerJ Inc. 2023-07-01
Series:PeerJ Computer Science
Subjects:
Online Access:https://peerj.com/articles/cs-1461.pdf
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author Fei Tang
author_facet Fei Tang
author_sort Fei Tang
collection DOAJ
description The development of the new liberal arts field places emphasis on the integration of disciplines such as humanities, engineering, medicine, and agriculture. It specifically highlights the incorporation of new technologies into the education and training of liberal arts majors like economics, law, literature, history, and philosophy. However, when dealing with complex talent data, shallow machine learning algorithms may not provide sufficiently accurate evaluations of the relationship between input and output. To address this challenge, this article introduces a comprehensive evaluation model for applied talents based on an improved Deep Belief Network (DBN). In this model, the GAAHS algorithm iteratively generates optimal values that are utilized as connection weights and biases for the restricted Boltzmann machines (RBM) in the pre-training stage of the DBN. This approach ensures that the weights and biases have favorable initial values. Moreover, the paper constructs a quality evaluation index system for creative talents, which consists of four components: knowledge level, innovation practice ability, adaptability to the environment, and psychological quality. The training results demonstrate that the optimized DBN exhibits improved convergence speed and precision, thereby achieving higher accuracy in the classification of applied talent evaluations.
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spelling doaj.art-15c168aa80704b2fabc08ffeb234934b2023-07-30T15:05:06ZengPeerJ Inc.PeerJ Computer Science2376-59922023-07-019e146110.7717/peerj-cs.1461Construction of applied talents training system based on machine learning under the background of new liberal artsFei TangThe development of the new liberal arts field places emphasis on the integration of disciplines such as humanities, engineering, medicine, and agriculture. It specifically highlights the incorporation of new technologies into the education and training of liberal arts majors like economics, law, literature, history, and philosophy. However, when dealing with complex talent data, shallow machine learning algorithms may not provide sufficiently accurate evaluations of the relationship between input and output. To address this challenge, this article introduces a comprehensive evaluation model for applied talents based on an improved Deep Belief Network (DBN). In this model, the GAAHS algorithm iteratively generates optimal values that are utilized as connection weights and biases for the restricted Boltzmann machines (RBM) in the pre-training stage of the DBN. This approach ensures that the weights and biases have favorable initial values. Moreover, the paper constructs a quality evaluation index system for creative talents, which consists of four components: knowledge level, innovation practice ability, adaptability to the environment, and psychological quality. The training results demonstrate that the optimized DBN exhibits improved convergence speed and precision, thereby achieving higher accuracy in the classification of applied talent evaluations.https://peerj.com/articles/cs-1461.pdfNew liberal arts applied talentsEvaluation systemGAAHSDBN
spellingShingle Fei Tang
Construction of applied talents training system based on machine learning under the background of new liberal arts
PeerJ Computer Science
New liberal arts applied talents
Evaluation system
GAAHS
DBN
title Construction of applied talents training system based on machine learning under the background of new liberal arts
title_full Construction of applied talents training system based on machine learning under the background of new liberal arts
title_fullStr Construction of applied talents training system based on machine learning under the background of new liberal arts
title_full_unstemmed Construction of applied talents training system based on machine learning under the background of new liberal arts
title_short Construction of applied talents training system based on machine learning under the background of new liberal arts
title_sort construction of applied talents training system based on machine learning under the background of new liberal arts
topic New liberal arts applied talents
Evaluation system
GAAHS
DBN
url https://peerj.com/articles/cs-1461.pdf
work_keys_str_mv AT feitang constructionofappliedtalentstrainingsystembasedonmachinelearningunderthebackgroundofnewliberalarts