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Feature group partitioning: an approach for depression severity prediction with class balancing using machine

Tumpa Rani Shaha1,2, Momotaz Begum3, Jia Uddin4

  • 1Department of Computer Science and Engineering, Dhaka University of Engineering & Technology, Gazipur, 1707, Bangladesh.

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|June 3, 2024
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Summary
This summary is machine-generated.

This study introduces Feature Group Partitioning (FGP) to improve depression severity prediction, effectively handling class imbalance with SMOTE and achieving 92.81% balanced accuracy.

Keywords:
ADASYNBurn depression checklistClass balancingDepression predictionFeature group partitioningMachine learningOversamplingSMOTEStratified cross validation

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Area of Science:

  • Medical Informatics
  • Machine Learning
  • Mental Health

Background:

  • Depression is a growing global health concern with significant mortality impact.
  • Machine learning models are increasingly used for depression prediction, but often struggle with multiclass imbalance.
  • Addressing class imbalance in multiclass depression severity prediction remains a critical challenge.

Purpose of the Study:

  • To introduce and evaluate a novel Feature Group Partitioning (FGP) approach for preprocessing data in depression severity prediction.
  • To investigate the effectiveness of synthetic oversampling techniques (SMOTE, ADASYN) in mitigating class imbalance.
  • To compare the performance of various machine learning algorithms and ensemble methods on a multiclass depression dataset.

Main Methods:

  • Implemented Feature Group Partitioning (FGP) to reduce feature dimensionality.
  • Applied Synthetic Minority Over-sampling Technique (SMOTE) and Adaptive Synthetic (ADASYN) for class balancing.
  • Utilized heterogeneous ensemble stacking, homogeneous ensemble bagging, and five supervised algorithms, evaluating on training, validation, and testing sets.

Main Results:

  • The Feature Group Partitioning (FGP) approach significantly reduced feature dimensionality.
  • The stacking classifier combined with FGP and SMOTE achieved the highest balanced accuracy of 92.81%.
  • The FGP approach demonstrated improved performance in predicting depression severity and optimized training time.

Conclusions:

  • The Feature Group Partitioning (FGP) approach, coupled with SMOTE, is highly effective for multiclass depression severity prediction.
  • This method successfully addresses class imbalance and enhances prediction accuracy.
  • The optimized training time represents a significant practical advantage for clinical applications.