论文标题

部分可观测时空混沌系统的无模型预测

New Definitions and Evaluations for Saliency Methods: Staying Intrinsic, Complete and Sound

论文作者

Gupta, Arushi, Saunshi, Nikunj, Yu, Dingli, Lyu, Kaifeng, Arora, Sanjeev

论文摘要

显着方法计算热图,该热图突出了输入的部分,这些输入是通过深网分配给它的标签的最{\ em extimest}。显着方法的评估通过保留原始输入的$ k $最高像素,并用\ textquotedblleft nodyformative \ texquotedBlight \像素来将其替换为新的{\ em掩盖输入},并通过\ textquotedblleft \ pixels进行替换。这通常被视为输出的{\ em解释},但是当前的论文突出了可能可疑这种因果关系的原因。受{\ em完整性\&Soundness}的逻辑概念的启发,它观察到上述评估类型的重点是解释的完整性,但忽略了声音。引入了新的评估指标来捕获这两个概念,同时留在{\ em内在}框架中 - 即使用数据集和网络,但没有单独训练的网络,人类评估等单独训练的网络等。描述了一种简单的显着性方法,该方法与评估中的先前方法相匹配。实验还提出了基于合理性的新固有理由,用于流行的启发式技巧,例如电视正则化和提升采样。

Saliency methods compute heat maps that highlight portions of an input that were most {\em important} for the label assigned to it by a deep net. Evaluations of saliency methods convert this heat map into a new {\em masked input} by retaining the $k$ highest-ranked pixels of the original input and replacing the rest with \textquotedblleft uninformative\textquotedblright\ pixels, and checking if the net's output is mostly unchanged. This is usually seen as an {\em explanation} of the output, but the current paper highlights reasons why this inference of causality may be suspect. Inspired by logic concepts of {\em completeness \& soundness}, it observes that the above type of evaluation focuses on completeness of the explanation, but ignores soundness. New evaluation metrics are introduced to capture both notions, while staying in an {\em intrinsic} framework -- i.e., using the dataset and the net, but no separately trained nets, human evaluations, etc. A simple saliency method is described that matches or outperforms prior methods in the evaluations. Experiments also suggest new intrinsic justifications, based on soundness, for popular heuristic tricks such as TV regularization and upsampling.

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