Feature Engineering for Predicting MOOC Performance

Author:

Mohamad Nadirah,Ahmad Nor Bahiah,Jawawi Dayang Norhayati Abang,Hashim Siti Zaiton Mohd

Abstract

Abstract Increasing data recorded in massive open online course (MOOC) requires more automated analysis. The analysis, which includes making student’s prediction requires better strategy to produce good features and reduces prediction error. This paper presents the process of feature engineering for predicting MOOC student’s performance utilizing deep feature synthesis (DFS) method. The experiment produces features which all the top features selected using principal component analysis (PCA) are the features that are generated from method. In terms of prediction comparing both based features and generated features, the result shows better accuracy for generated features proposed using k-nearest neighbours technique which shows the method potential to be used for future prediction model.

Publisher

IOP Publishing

Subject

General Medicine

Reference17 articles.

1. Grade prediction in MOOCs;Li,2016

2. Accessing online learning material: Quantitative behavior patterns and their effects on motivation and learning performance;Li;Comput Educ,2017

3. Who are the top contributors in a MOOC? Relating participants’ performance and contributions;Alario-Hoyos;J Comput Assist Lear,2016

4. Recommending self-regulated learning strategies does not improve performance in a MOOC;Kizilcec,2016

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1. Impact of Deep Feature Synthesis on Deep Learning in Electronic Transaction Fraud Detection;2023 IEEE 3rd International Conference on Software Engineering and Artificial Intelligence (SEAI);2023-06-16

2. MOOC dropout prediction using a fusion deep model based on behaviour features;Computers and Electrical Engineering;2022-12

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