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%.
ECONOMIC EVALUATION OF MINERAL RESOURCES FROM THE STANDPOINT OF BUSINESS AND SOCIAL PROFITABILITY
The application of economic criteria of profitability and business operation is not only required but essential in the modern business climate for the proper functioning of a country’s mineral sector, mineral economics a...
DOES FINANCIAL PLAN IMPACT INVESTMENT DECISIONS?
Discipline is the bridge between goals and accomplishments and good financial habits bring discipline in financial decision making and have profound impact on the investment choices. This study proposes to study core fin...
SIMULATION OF HIGHER EDUCATIONAL ESTABLISHMENT COMPETITIVENESS
The success of International Joint Educational Programs of the Educational Establishments based on effective management. This makes a need for predicting the competitiveness indicators in order to analyze different strat...
EMOTIONAL INTELLIGENCE IN ANCIENT SCIENCE WITH SPECIAL REFERENCE TO CHARAK SAMHITA AND SHRIMAD BHAGWAD GITA
The author first introduces emotion, later adding that the essence of the Ancient psychology and psychology of contemporary times are practically similar to a fault disregarding the discrepancies in languages and terms....
USING WATER INDICES (NDWI, MNDWI, NDMI, WRI AND AWEI) TO DETECT PHYSICAL AND CHEMICAL PARAMETERS BY APPLY REMOTE SENSING AND GIS TECHNIQUES
This study was undertaken by analyzing data from satellite image (Landsat-8 OLI) and geographical information system (GIS) to find the relationship between water parameters and water indices of spectral images. The main...