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Search Algorithms for Automated Hyper-Parameter Tuning (2104.14677v1)

Published 29 Apr 2021 in cs.LG, cs.CY, and cs.PF

Abstract: Machine learning is a powerful method for modeling in different fields such as education. Its capability to accurately predict students' success makes it an ideal tool for decision-making tasks related to higher education. The accuracy of machine learning models depends on selecting the proper hyper-parameters. However, it is not an easy task because it requires time and expertise to tune the hyper-parameters to fit the machine learning model. In this paper, we examine the effectiveness of automated hyper-parameter tuning techniques to the realm of students' success. Therefore, we develop two automated Hyper-Parameter Optimization methods, namely grid search and random search, to assess and improve a previous study's performance. The experiment results show that applying random search and grid search on machine learning algorithms improves accuracy. We empirically show automated methods' superiority on real-world educational data (MIDFIELD) for tuning HPs of conventional machine learning classifiers. This work emphasizes the effectiveness of automated hyper-parameter optimization while applying machine learning in the education field to aid faculties, directors', or non-expert users' decisions to improve students' success.

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Authors (5)
  1. Leila Zahedi (3 papers)
  2. Farid Ghareh Mohammadi (18 papers)
  3. Shabnam Rezapour (3 papers)
  4. Matthew W. Ohland (1 paper)
  5. M. Hadi Amini (42 papers)
Citations (34)