Boosting of Classification Models with Human-in-the-Loop Computational Visual Knowledge Discovery
Alice Williams, Boris Kovalerchuk

TL;DR
This paper introduces a human-in-the-loop visual learning approach that enhances classification accuracy and interpretability by focusing on class overlap areas and integrating human expertise with lossless visualizations.
Contribution
It proposes a novel boosting methodology that moves beyond misclassified cases to include all class overlap cases using visual and computational analysis with human input.
Findings
Achieved perfect accuracy on the Iris dataset.
Improved model interpretability through lossless visualizations.
Enhanced end-user confidence in model discovery.
Abstract
High-risk artificial intelligence and machine learning classification tasks, such as healthcare diagnosis, require accurate and interpretable prediction models. However, classifier algorithms typically sacrifice individual case-accuracy for overall model accuracy, limiting analysis of class overlap areas regardless of task significance. The Adaptive Boosting meta-algorithm, which won the 2003 G\"odel Prize, analytically assigns higher weights to misclassified cases to reclassify. However, it relies on weaker base classifiers that are iteratively strengthened, limiting improvements from base classifiers. Combining visual and computational approaches enables selecting stronger base classifiers before boosting. This paper proposes moving boosting methodology from focusing on only misclassified cases to all cases in the class overlap areas using Computational and Interactive Visual Learning…
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Taxonomy
TopicsMachine Learning and Data Classification · Data Stream Mining Techniques · Anomaly Detection Techniques and Applications
MethodsBalanced Selection
