How ClassBD Helps Machine Learning Models Detect Faults More Accurately | HackerNoon
Briefly

In comparison of deep learning models, classical machine learning (ML) classifiers offer distinct advantages such as robust interpretability and lightweight models, but are limited by their reliance on human-engineered features.
By employing ClassBD as a feature extractor, we observed significant performance improvements in traditional ML classifiers, demonstrating its value in enhancing the capabilities of these shallower models.
Read at Hackernoon
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