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Published:2025/12/26 13:24:20

DLモデル修正、ついに本気出す!✨

1. DLモデル修正の最強攻略本!📖 2. ギャルも安心!安全&高品質なAIサービス爆誕!🎉 3. IT業界の未来をアゲる、夢の技術♡

● 深層学習(DL)モデルの「修正」方法を16個も比較検討した研究だよ!🧐 ● 正確さだけでなく、安全・安心度もチェック!完璧主義な研究💅 ● AIの信頼性(安全性)がアップして、ビジネスチャンスも広がる予感💖

詳細解説いくよー!

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A Comprehensive Study of Deep Learning Model Fixing Approaches

Hanmo You / Zan Wang / Zishuo Dong / Luanqi Mo / Jianjun Zhao / Junjie Chen

Deep Learning (DL) has been widely adopted in diverse industrial domains, including autonomous driving, intelligent healthcare, and aided programming. Like traditional software, DL systems are also prone to faults, whose malfunctioning may expose users to significant risks. Consequently, numerous approaches have been proposed to address these issues. In this paper, we conduct a large-scale empirical study on 16 state-of-the-art DL model fixing approaches, spanning model-level, layer-level, and neuron-level categories, to comprehensively evaluate their performance. We assess not only their fixing effectiveness (their primary purpose) but also their impact on other critical properties, such as robustness, fairness, and backward compatibility. To ensure comprehensive and fair evaluation, we employ a diverse set of datasets, model architectures, and application domains within a uniform experimental setup for experimentation. We summarize several key findings with implications for both industry and academia. For example, model-level approaches demonstrate superior fixing effectiveness compared to others. No single approach can achieve the best fixing performance while improving accuracy and maintaining all other properties. Thus, academia should prioritize research on mitigating these side effects. These insights highlight promising directions for future exploration in this field.

cs / cs.LG / cs.SE