上下文可靠性:当不同的特征在不同的上下文中起作用时

Gaurav R. Ghosal, Amrith Rajagopal Setlur, Daniel S. Brown, A. Dragan, Aditi Raghunathan
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引用次数: 1

摘要

深度神经网络常常因为依赖于虚假的相关性而导致灾难性的失败。大多数先前的工作假设了虚假和可靠特征的明确二分法;然而,这通常是不现实的。例如,大多数时候,我们不希望一辆自动驾驶汽车简单地模仿周围汽车的速度——我们不希望我们的汽车在邻近汽车闯红灯的情况下也闯红灯。然而,我们不能简单地强制下一车道速度的不变性,因为它可以提供有关人行横道上不可观察的行人的有价值的信息。因此,普遍忽略有时(但不总是)可靠的特性可能导致性能不健壮。我们形式化了一种称为上下文可靠性的新设置,它说明了使用“正确”的功能可能因上下文而异的事实。我们提出并分析了一个称为显式非伪特征预测(ENP)的两阶段框架,该框架首先识别用于给定上下文的相关特征,然后训练模型完全依赖这些特征。我们的工作从理论上和经验上证明了ENP相对于现有方法的优势,并为上下文可靠性提供了新的基准。
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Contextual Reliability: When Different Features Matter in Different Contexts
Deep neural networks often fail catastrophically by relying on spurious correlations. Most prior work assumes a clear dichotomy into spurious and reliable features; however, this is often unrealistic. For example, most of the time we do not want an autonomous car to simply copy the speed of surrounding cars -- we don't want our car to run a red light if a neighboring car does so. However, we cannot simply enforce invariance to next-lane speed, since it could provide valuable information about an unobservable pedestrian at a crosswalk. Thus, universally ignoring features that are sometimes (but not always) reliable can lead to non-robust performance. We formalize a new setting called contextual reliability which accounts for the fact that the"right"features to use may vary depending on the context. We propose and analyze a two-stage framework called Explicit Non-spurious feature Prediction (ENP) which first identifies the relevant features to use for a given context, then trains a model to rely exclusively on these features. Our work theoretically and empirically demonstrates the advantages of ENP over existing methods and provides new benchmarks for contextual reliability.
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