AI RESEARCH
Layer-wise Derivative Controlled Networks
arXiv CS.LG
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ArXi:2605.15463v1 Announce Type: new As machine learning models grow in complexity, they increasingly struggle with three conflicting demands: the need for high accuracy, the requirement for hardware efficiency, and the necessity of functional stability. Traditional architectures often achieve performance at the expense of spiky or unpredictable behavior, where small changes in input lead to massive swings in output -- a critical flaw for real-world deployment in sensitive environments. This paper.