语言转换器译码层显著性研究

Elizabeth M. Hou, Greg Castañón
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引用次数: 0

摘要

本文介绍了一种用于分类任务的大规模语言模型中的文本显著性识别策略。在显著性研究更深入的视觉网络中,显著性通过网络的卷积层自然定位;然而,在用于处理自然语言的现代变压器堆栈网络中,情况并非如此。我们对这些网络采用了基于梯度的显著性方法,提出了一种评估每层语义连贯程度的方法,并在多个基准分类数据集上证明了在文本显著性方面优于许多其他方法的一致性改进。我们的方法不需要额外的训练或访问标记数据,并且相对来说计算效率很高。
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Decoding Layer Saliency in Language Transformers
In this paper, we introduce a strategy for identifying textual saliency in large-scale language models applied to classification tasks. In visual networks where saliency is more well-studied, saliency is naturally localized through the convolutional layers of the network; however, the same is not true in modern transformer-stack networks used to process natural language. We adapt gradient-based saliency methods for these networks, propose a method for evaluating the degree of semantic coherence of each layer, and demonstrate consistent improvement over numerous other methods for textual saliency on multiple benchmark classification datasets. Our approach requires no additional training or access to labelled data, and is comparatively very computationally efficient.
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