Abstract
Artificial intelligence, particularly machine learning, is the fastest-growing research trend in educational fields. Machine learning shows an impressive performance in many prediction models, including psychosocial education. The capability of machine learning to discover hidden patterns in large datasets encourages researchers to invent data with high-dimensional features. In contrast, not all features are needed by machine learning, and in many cases, high-dimensional features decrease the performance of machine learning. The feature selection method is one of the appropriate approaches to reducing the features to ensure machine learning works efficiently. Various selection methods have been proposed, but research to determine the essential subset feature in psychosocial education has not been established thus far. This research investigated and proposed methods to determine the best feature selection method in the domain of psychosocial education. We used a multi-criteria decision system (MCDM) approach with Additive Ratio Assessment (ARAS) to rank seven feature selection methods. The proposed model evaluated the best feature selection method using nine criteria from the performance metrics provided by machine learning. The experimental results showed that the ARAS is promising for evaluating and recommending the best feature selection method for psychosocial education data using the teacher’s psychosocial risk levels dataset.
Highlights
Psychosocial education is multidisciplinary and covers a vast field of study
We actualized the discussion in two parts: the performance of each feature selection method on the psychosocial education dataset and the implementation of Additive Ratio Assessment (ARAS) in selecting the best feature selection method
If the baseline used all 118 features, the other methods only performed the subset features according to the algorithm
Summary
Psychosocial education is multidisciplinary and covers a vast field of study. it is not surprising that research in psychosocial education encompasses an abundance of environments and features that are logically expected to be linked to the problem-solving of educational quality improvements. Artificial intelligence, especially machine learning, significantly improves the quality of decision models [6,7]. These two factors encourage researchers to collect more data with massive features. There have been various methods of selecting a feature that has been proposed and proven to impact machine learning performance. With many feature selection methodologies and different approaches in each method, it is relatively easy to raise a question about which method can give the optimum and effective results in machine learning, especially regarding the psychosocial education problem. This paper proposed a methodology to evaluate the best feature selection method in the domain of psychosocial education. The evaluation and ranking used the metrics from the machine learning classification performance on the teacher’s psychosocial risk level dataset
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