A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining

In order to improve the application of teaching resources and reduce delays in the integration process of multimedia network, a rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining is proposed. Bayesian partition is used to preprocess the...

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Main Authors: Juan Li, Geng Sun
Format: Article
Language:English
Published: AIMS Press 2023-09-01
Series:Electronic Research Archive
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/era.2023303?viewType=HTML
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author Juan Li
Geng Sun
author_facet Juan Li
Geng Sun
author_sort Juan Li
collection DOAJ
description In order to improve the application of teaching resources and reduce delays in the integration process of multimedia network, a rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining is proposed. Bayesian partition is used to preprocess the multimedia network teaching resources (MNTR), adjusting the recognition probability of MNTR in each partition based on its attributes. By performing Bayesian quantitative classification using samples of MNTR, the prior probability is adjusted through maximization analysis. The partitioned resources undergo sample data mining to obtain the data category collection of all MNTR. A prediction model is then built to forecast the demand for teaching resources at specific times in the future. MNTR can be rationally allocated based on the prediction results. Experimental results demonstrate that this method reduces delays in MNTR application and improves the accuracy and utilization of teaching resources.
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spelling doaj.art-2c232be7cdf84e8989ad372b7b63bdc02023-11-16T01:23:45ZengAIMS PressElectronic Research Archive2688-15942023-09-0131105959597510.3934/era.2023303A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data miningJuan Li 0Geng Sun11. School of Computer Engineering, Jinling Institute of Technology, Nanjing 211169, China2. School of Computer Engineering, Chongqing College of Humanities, Science and Technology, Chongqing 401524, China 3. Vermilion Cloud, Sydney 2000, AustraliaIn order to improve the application of teaching resources and reduce delays in the integration process of multimedia network, a rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining is proposed. Bayesian partition is used to preprocess the multimedia network teaching resources (MNTR), adjusting the recognition probability of MNTR in each partition based on its attributes. By performing Bayesian quantitative classification using samples of MNTR, the prior probability is adjusted through maximization analysis. The partitioned resources undergo sample data mining to obtain the data category collection of all MNTR. A prediction model is then built to forecast the demand for teaching resources at specific times in the future. MNTR can be rationally allocated based on the prediction results. Experimental results demonstrate that this method reduces delays in MNTR application and improves the accuracy and utilization of teaching resources.https://www.aimspress.com/article/doi/10.3934/era.2023303?viewType=HTMLbayesianpartition data miningmultimedia networkteaching reform resourcesrational allocationresource forecast
spellingShingle Juan Li
Geng Sun
A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
Electronic Research Archive
bayesian
partition data mining
multimedia network
teaching reform resources
rational allocation
resource forecast
title A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
title_full A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
title_fullStr A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
title_full_unstemmed A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
title_short A rational resource allocation method for multimedia network teaching reform based on Bayesian partition data mining
title_sort rational resource allocation method for multimedia network teaching reform based on bayesian partition data mining
topic bayesian
partition data mining
multimedia network
teaching reform resources
rational allocation
resource forecast
url https://www.aimspress.com/article/doi/10.3934/era.2023303?viewType=HTML
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