The paper introduces a framework to automatically enhance the performance of pre-trained Deep Learning (DL) classifiers using eXplainable Artificial Intelligence (XAI) methods. It aims to bridge the gap between XAI and model performance enhancement by integrating explanations with classifier outputs. Two learning strategies, auto-encoder-based and encoder-decoder-based, are outlined for this purpose. The proposed approach focuses on improving already trained ML models without extensive retraining, leveraging XAI techniques effectively.
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