Carefully Choose the Baseline: Lessons Learned from Applying XAI Attribution Methods for Regression Tasks in Geoscience

Antonios Mamalakis, Elizabeth A. Barnes, Imme Ebert-Uphoff
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引用次数: 4

Abstract

Abstract Methods of explainable artificial intelligence (XAI) are used in geoscientific applications to gain insights into the decision-making strategy of neural networks (NNs), highlighting which features in the input contribute the most to a NN prediction. Here, we discuss our “lesson learned” that the task of attributing a prediction to the input does not have a single solution. Instead, the attribution results depend greatly on the considered baseline that the XAI method utilizes—a fact that has been overlooked in the geoscientific literature. The baseline is a reference point to which the prediction is compared so that the prediction can be understood. This baseline can be chosen by the user or is set by construction in the method’s algorithm—often without the user being aware of that choice. We highlight that different baselines can lead to different insights for different science questions and, thus, should be chosen accordingly. To illustrate the impact of the baseline, we use a large ensemble of historical and future climate simulations forced with the shared socioeconomic pathway 3-7.0 (SSP3-7.0) scenario and train a fully connected NN to predict the ensemble- and global-mean temperature (i.e., the forced global warming signal) given an annual temperature map from an individual ensemble member. We then use various XAI methods and different baselines to attribute the network predictions to the input. We show that attributions differ substantially when considering different baselines, because they correspond to answering different science questions. We conclude by discussing important implications and considerations about the use of baselines in XAI research. Significance Statement In recent years, methods of explainable artificial intelligence (XAI) have found great application in geoscientific applications, because they can be used to attribute the predictions of neural networks (NNs) to the input and interpret them physically. Here, we highlight that the attributions—and the physical interpretation—depend greatly on the choice of the baseline—a fact that has been overlooked in the geoscientific literature. We illustrate this dependence for a specific climate task, in which a NN is trained to predict the ensemble- and global-mean temperature (i.e., the forced global warming signal) given an annual temperature map from an individual ensemble member. We show that attributions differ substantially when considering different baselines, because they correspond to answering different science questions.
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谨慎选择基线:应用XAI归因方法进行地球科学回归任务的经验教训
可解释人工智能(XAI)方法用于地球科学应用,以深入了解神经网络(NN)的决策策略,突出输入中的哪些特征对神经网络预测贡献最大。在这里,我们讨论我们的“经验教训”,即将预测归因于输入的任务没有单一的解决方案。相反,归因结果在很大程度上取决于XAI方法所使用的考虑基线——这是地球科学文献中被忽视的一个事实。基线是对预测进行比较的参考点,以便可以理解预测。这个基线可以由用户选择,也可以由方法算法中的构造来设置——通常用户不会意识到这个选择。我们强调,不同的基线可以导致对不同科学问题的不同见解,因此应该相应地选择。为了说明基线的影响,我们使用了共享社会经济路径3-7.0 (SSP3-7.0)情景强制的历史和未来气候模拟的大型集合,并训练了一个完全连接的神经网络来预测集合和全球平均温度(即强制的全球变暖信号),给出了来自单个集合成员的年温度图。然后,我们使用各种XAI方法和不同的基线将网络预测归因于输入。我们表明,当考虑不同的基线时,归因有很大的不同,因为它们对应于回答不同的科学问题。最后,我们讨论了在XAI研究中使用基线的重要含义和注意事项。近年来,可解释人工智能(XAI)的方法在地球科学应用中得到了很大的应用,因为它们可以用来将神经网络(nn)的预测归因于输入并对其进行物理解释。在这里,我们强调归因和物理解释在很大程度上取决于基线的选择,这是一个在地球科学文献中被忽视的事实。我们在一个特定的气候任务中说明了这种依赖性,在这个任务中,一个神经网络被训练来预测总体和全球平均温度(即,给定单个总体成员的年温度图的强迫全球变暖信号)。我们表明,当考虑不同的基线时,归因有很大的不同,因为它们对应于回答不同的科学问题。
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