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Discovering Interpretable Representations for Both Deep Generative and Discriminative Models

机译:发现深度生成模型和判别模型的可解释表示

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Interpretability of representations in both deep generative and discriminative models is highly desirable. Current methods jointly optimize an objective combining accuracy and interpretability. However, this may reduce accuracy, and is not applicable to already trained models. We propose two interpretability frameworks. First, we provide an interpretable lens for an existing model. We use a generative model which takes as input the representation in an existing (generative or discriminative) model, weakly supervised by limited side information. Applying a flexible and invertible transformation to the input leads to an interpretable representation with no loss in accuracy. We extend the approach using an active learning strategy to choose the most useful side information to obtain, allowing a human to guide what "interpretable" means. Our second framework relies on joint optimization for a representation which is both maximally informative about the side information and maximally compressive about the non-interpretable data factors. This leads to a novel perspective on the relationship between compression and regularization. We also propose a new interpretability evaluation metric based on our framework. Empirically, we achieve state-of-the-art results on three datasets using the two proposed algorithms.
机译:在深度生成模型和判别模型中,表示的可解释性都是非常需要的。当前的方法共同优化了结合了准确性和可解释性的目标。但是,这可能会降低准确性,并且不适用于已经训练的模型。我们提出了两个可解释性框架。首先,我们为现有模型提供一个可解释的镜头。我们使用一个生成模型,该模型将现有(生成或判别)模型中的表示作为输入,并由有限的辅助信息弱地监督。对输入应用灵活且可逆的转换会导致可解释的表示形式,而不会损失准确性。我们使用主动学习策略扩展该方法,以选择最有用的辅助信息,以使人可以指导“可解释”的含义。我们的第二个框架依赖于联合优化的表示形式,这种形式既可以最大程度地提供有关边信息的信息,又可以最大程度地压缩不可解释的数据因素。这导致了关于压缩和正则化之间关系的新颖观点。我们还根据我们的框架提出了一种新的可解释性评估指标。从经验上讲,我们使用两个提出的算法在三个数据集上获得了最新的结果。

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