Abstract

Educators seek to harness knowledge from educational corpora to improve student performance outcomes. Although prior studies have compared the efficacy of data mining methods (DMMs) in pipelines for forecasting student success, less work has focused on identifying a set of relevant features prior to model development and quantifying the stability of feature selection techniques. Pinpointing a subset of pertinent features can (1) reduce the number of variables that need to be managed by stakeholders, (2) make “black-box” algorithms more interpretable, and (3) provide greater guidance for faculty to implement targeted interventions. To that end, we introduce a methodology integrating feature selection with cross-validation and rank each feature on subsets of the training corpus. This modified pipeline was applied to forecast the performance of 3225 students in a baccalaureate science course using a set of 57 features, four DMMs, and four filter feature selection techniques. Correlation Attribute Evaluation (CAE) and Fisher’s Scoring Algorithm (FSA) achieved significantly higher Area Under the Curve (AUC) values for logistic regression (LR) and elastic net regression (GLMNET), compared to when this pipeline step was omitted. Relief Attribute Evaluation (RAE) was highly unstable and produced models with the poorest prediction performance. Borda’s method identified grade point average, number of credits taken, and performance on concept inventory assessments as the primary factors impacting predictions of student performance. We discuss the benefits of this approach when developing data pipelines for predictive modeling in undergraduate settings that are more interpretable and actionable for faculty and stakeholders.

Highlights

  • Educational data mining (EDM) focuses on developing mathematical frameworks for analyzing large educational corpora (Baker, 2010, 2014)

  • We examined a collection of four filter feature selection techniques: Correlation Attribute Evaluation (CAE), Fisher’s scoring algorithm (FSA), information gain attribute evaluation (IG), and relief attribute evaluation (RAE) to remove irrelevant features during preprocessing

  • Results (RQ 1) Do preprocessing feature selection techniques enhance the predictive efficacy of Data mining method (DMM) compared to when this step is omitted from the EDM pipeline? To examine the impact of the preprocessing feature selection techniques on the Area Under the Curve (AUC) metric, we tabulated the percent difference in the mean AUC when feature selection techniques were applied and when these methods were omitted for each training and testing corpus (Fig. 6)

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Summary

Introduction

Educational data mining (EDM) focuses on developing mathematical frameworks for analyzing large educational corpora (Baker, 2010, 2014). We review EDM research applying feature selection as a preprocessing step in pipelines below and address how integrating feature selection with cross-validation to rank features by their association with the target outcome can address the limitations in these studies. There are several limitations to these prior EDM studies They do not provide a mathematical framework to compare the performance of the preprocessing feature selection techniques across independent corpora and assess whether the features identified are similar across different methods. None of the prior studies noted above discuss developing a systematic consensus ranking scheme to assess the merit of each feature prior to model training Consideration of all these factors may allow for the development of more robust and interpretable pipelines that incorporate preprocessing feature selection techniques.

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