COMPARATIVE STUDY OF MACHINE LEARNING KNN, SVM, AND DECISION TREE ALGORITHM TO PREDICT STUDENT’S PERFORMANCE

Journal Title: International journal of research -GRANTHAALAYAH - Year 2019, Vol 7, Issue 1

Abstract

Students who are not-active will affect the number of students who graduate on time. Prevention of not-active students can be done by predicting student performance. The study was conducted by comparing the KNN, SVM, and Decision Tree algorithms to get the best predictive model. The model making process was carried out by steps; data collecting, pre-processing, model building, comparison of models, and evaluation. The results show that the SVM algorithm has the best accuracy in predicting with a precision value of 95%. The Decision Tree algorithm has a prediction accuracy of 93% and the KNN algorithm has a prediction accuracy value of 92%.

Authors and Affiliations

Keywords

Related Articles

PREPARATION AND CHARACTERIZATION OF CALCIUM FLUORIDE NANO PARTICLES FOR DENTAL APPLICATIONS

The aim of the present study was to prepare a calcium fluoride (CaF2NP) Nano particle which is used in dental composites as dental filling compo glass type. CaF2 Nano powders were prepared using a Co-precipitation method...

SPECIAL EDUCATION PROVISION AND TEACHER PREPARATION IN UNIVERSITIES: A CASE OF KWAME NKRUMAH UNIVERSITY

This manuscript is a study on special education provision and teacher preparation in universities. The study aimed at establishing the special education provisions in universities, establishing how special teachers are p...

VEDIC SCIENCE AND ENVIRONMENT

In the Veda’s natural elements play a pivot role but the international ship of creation was always within the context of its relationship with the creator. The Vedic sages believed that everything in this world stems fro...

DIGITAL ILLITERACY: A CONSTRAINT TO TECHNOLOGY EDUCATION ADVANCEMENT IN SOUTH-SOUTH REGION OF NIGERIA

Technology education is one the programmes designed to provide technical knowledge and skills necessary for economic development in Nigeria. But technology education programme has a constraint to its advancement which th...

DIVERGENCE IN THE VERMICOMPOSTING OF GREEN AND SENESCENCE BLACK PLUM (SYZYGIUM CUMINI) LEAF LITTERS

In the present scenario, generation of organic solid waste is foremost trouble demands healthy and sustainable elucidation. Vermicomposting is an appropriate biotechnological approach to transform organic solid waste int...

Download PDF file
  • EP ID EP447351
  • DOI 10.5281/zenodo.2550651
  • Views 116
  • Downloads 0

How To Cite

(2019). COMPARATIVE STUDY OF MACHINE LEARNING KNN, SVM, AND DECISION TREE ALGORITHM TO PREDICT STUDENT’S PERFORMANCE. International journal of research -GRANTHAALAYAH, 7(1), 190-196. https://europub.co.uk/articles/-A-447351