Prediction of Student Employability through Internship based on Big Data Analysis

被引:0
|
作者
Wang, Yubin [1 ]
机构
[1] Wuhan Business Univ, Acad Affairs Off, Wuhan 430056, Hubei, Peoples R China
关键词
Savitzky Golay (SG) filtering; Siberian Tiger Optimization; using Density Clustering and Graph Neural Network; Employed; Unemployed; Training of Data;
D O I
暂无
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The internship course is among the most important because it gives students a hands-on opportunity to apply their knowledge and get ready to launch a professional career. Internships, yet, don't ensure employability, particularly in cases where a graduate's performance is subpar and internship requirements are not fulfilled. Researchers in the field of higher education face a significant challenge in predicting employability due to the multitude of factors that contribute to this issue. This research presented the methodology for more accurately classifying student data in order to overcome this drawback. Online surveys were used to collect data graduates (PNU). The Switching Hierarchical Gaussian Filter (SHGF) is used to preprocess the data at the pre-processing stage. The outcome from the pre-processing is transferred to the feature selection method, which uses Siberian Tiger Optimization (STO) to select the student features. The employed, continuing studies, unemployed, and training are successfully classified using the Multi Fidelity Deep Neural Network. The proposed MFDNN -STO applied to the MATLAB/Simulink platform. To calculate the proposed approach, performance metrics including recall, ROC, computation time, accuracy, precision, sensitivity, and F-score were examined. Higher accuracy of 16.65%, 18.85%, and 17.89%, as well as higher sensitivity of 16.34%, 12.23%, and 18.54%, are achieved by the suggested MFDNN-STO method. The computation time was reduced by 14.89%, 16.89%, and 18.23% as well as 82.37%, 94.47%, and 87.76% in comparison to the existing method.
引用
收藏
页码:2749 / 2761
页数:13
相关论文
共 50 条
  • [1] Predicting Student Employability Through the Internship Context Using Gradient Boosting Models
    Saidani, Oumaima
    Menzli, Leila Jamel
    Ksibi, Amel
    Alturki, Nazik
    Alluhaidan, Ala Saleh
    IEEE ACCESS, 2022, 10 : 46472 - 46489
  • [2] Predicting Student Employability Through the Internship Context Using Gradient Boosting Models
    Saidani, Oumaima
    Menzli, Leila Jamel
    Ksibi, Amel
    Alturki, Nazik
    Alluhaidan, Ala Saleh
    IEEE Access, 2022, 10 : 46472 - 46489
  • [3] Analysis and Prediction Method of Student Behavior Mining Based on Campus Big Data
    Tu, Liyan
    ADVANCED HYBRID INFORMATION PROCESSING, ADHIP 2019, PT II, 2019, 302 : 363 - 371
  • [4] Internship and employability prospects: assessing student's work readiness
    Kapareliotis, Ilias
    Voutsina, Katerina
    Patsiotis, Athanasios
    HIGHER EDUCATION SKILLS AND WORK-BASED LEARNING, 2019, 9 (04) : 538 - 549
  • [5] Research on High-Risk Student Prediction Based on Big Data
    Yu Xiaogao
    Peng Ruiqing
    2017 IEEE 2ND INTERNATIONAL CONFERENCE ON BIG DATA ANALYSIS (ICBDA), 2017, : 645 - 648
  • [6] Click-through rate prediction based on mobile computing and big data analysis
    Liu Y.
    Pang L.
    Lu X.
    Ingenierie des Systemes d'Information, 2019, 24 (03): : 313 - 319
  • [7] A Study on Prediction Model of Equipment Failure Through Analysis of Big Data Based on RHadoop
    Jin-Hee Ku
    Wireless Personal Communications, 2018, 98 : 3163 - 3176
  • [8] A Study on Prediction Model of Equipment Failure Through Analysis of Big Data Based on RHadoop
    Ku, Jin-Hee
    WIRELESS PERSONAL COMMUNICATIONS, 2018, 98 (04) : 3163 - 3176
  • [9] Proposition of an employability prediction system using data mining techniques in a big data environment
    Saouabi, Mohamed
    Ezzati, Abdellah
    INTERNATIONAL JOURNAL OF MATHEMATICS AND COMPUTER SCIENCE, 2019, 14 (02): : 411 - 424
  • [10] Research and Analysis of Student Portrait Based on Campus Big Data
    Li, Xiaoying
    He, Shouwu
    2021 IEEE 6TH INTERNATIONAL CONFERENCE ON BIG DATA ANALYTICS (ICBDA 2021), 2021, : 23 - 27