Abstract

As of late, with the progression of AI and man-made brainpower, there has been a developing spotlight on versatile e-learning. As all ways to deal with e-learning lose their allure and the level of online courses builds, they move towards more customized versatile learning so as to collaborate with students and achieve better learning results. The schools focus on the examination, mindfulness, and arranging techniques that infuse innovation into the vision and educational program. E-learning issues are a standard examination issue for us all. The motivation behind this research analysis is to separate the potential outcomes of assessing e-learning models utilizing AI strategies such as Supervised, Semi Supervised, Reinforced Learning advances by investigating upsides and downsides of various methods organization. The literature review methodology is to review the cross sectional impacts of e-learning and Machine learning algorithms from existing literatures from the year 1993 to 2020 and to assess the essentialness of e-learning features to optimize the e-learning models with available Machine learning techniques from peer-inspected journals, capable destinations, and books. Second, it legitimizes the chances of e-learning structures introduction, and changes demonstrated through AI and Machine Learning algorithms. This examination assists in providing helpful new highlights to analysts, researchers and academicians. It gives an exhaustive structure of existing e-learning frameworks for the most recent innovations identified with learning framework capacities and learning tasks to envision ML research openings in appropriate spaces. The survey paper identifies and demonstrates the important role of different types of e-learning features such as Individual pertinent feature, Course pertinent feature, Context pertinent feature and Technology pertinent feature in framework performance tuning. The performance of Machine Learning algorithms to optimize the features of E-Learning models were reviewed in previous literatures and Support Vector Machine technique was found to be the one of the best to predict the input and output parameters of e-learning models and it is found that Fuzzy C Means, Deep Learning algorithms are producing better results for Big Data sets.

Highlights

  • The Learning styles can play an important role in adapting e-learning methods that indicate the path that students prefer

  • What is the contribution of Machine Learning methods in solving research challenges related to labeled and unlabeled datasets over a period of years?

  • This study offers different surveys utilizing the e-learning system remembered for the development exercises

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Summary

INTRODUCTION

The Learning styles can play an important role in adapting e-learning methods that indicate the path that students prefer. An e-gradient system that allows a computerized, statistical algorithm opens up the possibility of overcoming the shortcomings of the traditional detection methods mainly used in the questionnaire [1]–[5] These persuasive factors lead to a lot of research on the combination of learning designs and adaptive learning methods. The paper presents data and evidence from existing journal paper findings of optimization, prediction accuracy rates by different Machine Learning techniques. The topic of the study is survey the existing literatures related to evaluating E-Learning parameters using Machine Learning systems. There is no specific research hypothesis set to study and review of the e-learning models but the focus of the present research on the survey following research questions aimed at solving the research challenges towards designing models and predicting and optimizing parameters

How do we predict the feature variables of the e-learning datasets?
SUPERVISED LEARNING TECHNIQUES
2) BAYESIAN METHODS
UNSUPERVISED LEARNING
Findings
CONCLUSION

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