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Prediction-based model for student dropouts using modified mutated firefly algorithm

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PUB-JAR-M-2019-GamaoAO-FLT.pdf (274.2Kb)
Date
2019
Author
Gamao, Ariel O.
Gerardo, Bobby D. ORCID
Geographic name
Davao TGN
Davao
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Abstract
Academic database is considered as the heart and soul of every higher education institutions. This database contains a vast amount of useful information that is useful for analysis. Algorithms for machine learning play a significant role in mining academic databases and have been proven to be effective when applied in the academic field. Prediction models are made using relevant classification algorithms for dropout analysis. The success of the prediction model depends on the performance of the feature selection algorithm used for dimensionality reduction. The study utilized the Modified Mutated Firefly Algorithm (MMFA) as a dimensionality reduction strategy to enhance the accuracy of the prediction model for dropout analysis. The results of the simulation revealed that the Decision Tree (DT) classifier outperformed the Naïve Bayesian using the three UCI datasets. After the test of benchmark datasets, a students' cumulative dataset was used to come up with a predictive model for dropout analysis of Davao del Norte State College, Davao del Norte, Philippines. The results of the experiment confirmed that the MMFA+DT obtained an accuracy rate of 95.82%, while MMFA+NB only has 92.85% using 10-fold cross-validation.
URI
http://repository.wvsu.edu.ph/handle/123456789/92
Recommended Citation
Gamao, A. O., & Gerardo, B. D. (2019). Prediction-based model for student dropouts using modified mutated firefly algorithm. International Journal of Advanced Trends in Computer Science and Engineering, 8(6), 3461-3469.
DOI
https://doi.org/10.30534/ijatcse/2019/122862019
Type
Article
ISSN
2278-3091; 2278 - 3091
Keywords
Dropout analysis Firefly algorithm Mutation process Stochastic approach Prediction model
Subject
Algorithms OCLC - FAST (Faceted Application of Subject Terminology) Databases OCLC - FAST (Faceted Application of Subject Terminology) Stochastic approximation--Data processing OCLC - FAST (Faceted Application of Subject Terminology) Data mining OCLC - FAST (Faceted Application of Subject Terminology) Classification--Data processing OCLC - FAST (Faceted Application of Subject Terminology) Stochastic analysis--Computer programs OCLC - FAST (Faceted Application of Subject Terminology) Mutation testing of computer programs OCLC - FAST (Faceted Application of Subject Terminology) Dropouts OCLC - FAST (Faceted Application of Subject Terminology) College dropouts OCLC - FAST (Faceted Application of Subject Terminology) Dropouts--Prevention OCLC - FAST (Faceted Application of Subject Terminology) Dropout behavior, Prediction of OCLC - FAST (Faceted Application of Subject Terminology)
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  • Journal articles published externally [123]
  • Scholarly and Creative Works of Faculty Members and Researchers [26]

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