BriefGPT.xyz
May, 2023
点对点表征相似度
Pointwise Representational Similarity
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Camila Kolling, Till Speicher, Vedant Nanda, Mariya Toneva, Krishna P. Gummadi
TL;DR
本文提出了一种Pointwise Normalized Kernel Alignment(PNKA)量化方法,用于分析个体输入在不同表征空间中的相似度,以更细粒度地理解深度神经网络的表征特征,并展示了PNKA在分析误分类输入示例、神经元概念编码和公平干预对表征特征的影响等方面的应用。
Abstract
With the increasing reliance on deep
neural networks
, it is important to develop ways to better understand their learned representations.
representation similarity measures
have emerged as a popular tool for exam
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