文本简化中的真实性评价。

Ashwin Devaraj, William Sheffield, Byron C Wallace, Junyi Jessy Li
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引用次数: 0

摘要

自动简化模型旨在使输入文本更具可读性。这种方法有可能使更广泛的受众能够获得复杂的信息,例如,提供获取最近医学文献的途径,否则这些文献对于外行读者来说可能难以理解。然而,这样的模型可能会在自动简化的文本中引入错误,例如插入相应的原始文本不支持的语句,或者省略关键信息。在许多情况下,提供可读性更强但不准确的文本版本可能比完全不提供这种访问更糟糕。摘要模型中事实准确性(及其缺乏)的问题已受到高度关注,但自动简化文本的事实性尚未得到调查。我们引入了一个错误分类,我们使用它来分析从标准简化数据集和最先进的模型输出中提取的参考。我们发现,错误经常出现在现有的评估指标中,这促使人们需要研究确保自动化简化模型的事实准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Evaluating Factuality in Text Simplification.

Automated simplification models aim to make input texts more readable. Such methods have the potential to make complex information accessible to a wider audience, e.g., providing access to recent medical literature which might otherwise be impenetrable for a lay reader. However, such models risk introducing errors into automatically simplified texts, for instance by inserting statements unsupported by the corresponding original text, or by omitting key information. Providing more readable but inaccurate versions of texts may in many cases be worse than providing no such access at all. The problem of factual accuracy (and the lack thereof) has received heightened attention in the context of summarization models, but the factuality of automatically simplified texts has not been investigated. We introduce a taxonomy of errors that we use to analyze both references drawn from standard simplification datasets and state-of-the-art model outputs. We find that errors often appear in both that are not captured by existing evaluation metrics, motivating a need for research into ensuring the factual accuracy of automated simplification models.

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