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Evaluating Textual Representations through Image Generation

机译:通过图像生成评估文本表示

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摘要

We present a methodology for determining the quality of textual representations through the ability to generate images from them. Continuous representations of textual input are ubiquitous in modern Natural Language Processing techniques either at the core of machine learning algorithms or as the by-product at any given layer of a neural network. While current techniques to evaluate such representations focus on their performance on particular tasks, they don't provide a clear understanding of the level of informational detail that is stored within them, especially their ability to represent spatial information. The central premise of this paper is that visual inspection or analysis is the most convenient method to quickly and accurately determine information content. Through the use of text-to-image neural networks, we propose a new technique to compare the quality of textual representations by visualizing their information content. The method is illustrated on a medical dataset where the correct representation of spatial information and shorthands are of particular importance. For four different well-known textual representations, we show with a quantitative analysis that some representations are consistently able to deliver higher quality visualizations of the information content. Additionally, we show that the quantitative analysis technique correlates with the judgment of a human expert evaluator in terms of alignment.
机译:我们提出了一种通过从文本生成图像的能力来确定文本表示质量的方法。文本输入的连续表示在现代自然语言处理技术中无处不在,它既是机器学习算法的核心,又是神经网络任何给定层的副产品。虽然当前评估此类表示的技术着重于它们在特定任务上的性能,但它们并未提供对存储在其中的信息详细程度的清晰理解,尤其是它们表示空间信息的能力。本文的中心前提是视觉检查或分析是快速准确确定信息内容的最便捷方法。通过使用文本到图像的神经网络,我们提出了一种通过可视化其信息内容来比较文本表示质量的新技术。该方法在医学数据集上进行了说明,其中空间信息和速记的正确表示特别重要。对于四种不同的知名文本表示形式,我们通过定量分析表明,某些表示形式始终能够提供更高质量的可视化信息内容。此外,我们证明了定量分析技术与人类专家评估人员的判断能力在一致性方面相关。

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