%X Student performance prediction helps the educational stakeholders to take proactive decisions and make interventions, for the improvement of quality of education and to meet the dynamic needs of society. The selection of features for student's performance prediction not only plays significant role in increasing prediction accuracy, but also helps in building the strategic plans for the improvement of students' academic performance. There are different feature selection algorithms for predicting the performance of students, however the studies reported in the literature claim that there are different pros and cons of existing feature selection algorithms in selection of optimal features. In this paper, a hybrid feature selection framework (using feature-fusion) is designed to identify the significant features and associated features with target class, to predict the performance of students. The main goal of the proposed hybrid feature selection is not only to improve the prediction accuracy, but also to identify optimal features for building productive strategies for the improvement in students' academic performance. The key difference between proposed hybrid feature selection framework and existing hybrid feature selection framework, is two level feature fusion technique, with the utilization of cosine-based fusion. Whereas, according to the results reported in existing literature, cosine similarity is considered as the best similarity measure among existing similarity measures. The proposed hybrid feature selection is validated on four benchmark datasets with variations in number of features and number of instances. The validated results confirm that the proposed hybrid feature selection framework performs better than the existing hybrid feature selection framework, existing feature selection algorithms in terms of accuracy, f-measure, recall, and precision. Results reported in presented paper show that the proposed approach gives more than 90 accuracy on benchmark dataset that is better than the results of existing approach. © 2021 Tech Science Press. All rights reserved. %K Forecasting; Students, Academic performance; Feature selection algorithm; Hybrid feature selections; Prediction accuracy; Quality of education; Similarity measure; Student performance; Student's performance, Feature extraction %N 1 %R 10.32604/cmc.2022.018295 %D 2021 %L scholars15666 %J Computers, Materials and Continua %O cited By 8 %I Tech Science Press %A M. Zaffar %A M.A. Hashmani %A R. Habib %A K.S. Quraishi %A M. Irfan %A S. Alqhtani %A M. Hamdi %V 70 %T A hybrid feature selection framework for predicting students performance %P 1893-1920