从人群注释中聚合和预测序列标签。

An T Nguyen, Byron C Wallace, Junyi Jessy Li, Ani Nenkova, Matthew Lease
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引用次数: 75

摘要

尽管序列是NLP的核心,但很少有人考虑如何处理来自同一文本的多个注释器的噪声序列标签。给定这样的注释,我们考虑两个互补的任务:(1)聚合连续的人群标签以推断出最佳的单一共识注释集;(2)使用群体注释作为模型的训练数据,该模型可以在未注释的文本中预测序列。对于聚合,我们提出了一种新的隐马尔可夫模型变体。为了预测未注释文本中的序列,我们提出了一种使用长短期记忆的神经方法。我们评估了两种不同应用和文本类型的一套方法:新闻文章中的命名实体识别和生物医学摘要的信息提取。结果显示较强基线有所改善。我们的源代码和数据可以在网上找到。
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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Aggregating and Predicting Sequence Labels from Crowd Annotations.

Despite sequences being core to NLP, scant work has considered how to handle noisy sequence labels from multiple annotators for the same text. Given such annotations, we consider two complementary tasks: (1) aggregating sequential crowd labels to infer a best single set of consensus annotations; and (2) using crowd annotations as training data for a model that can predict sequences in unannotated text. For aggregation, we propose a novel Hidden Markov Model variant. To predict sequences in unannotated text, we propose a neural approach using Long Short Term Memory. We evaluate a suite of methods across two different applications and text genres: Named-Entity Recognition in news articles and Information Extraction from biomedical abstracts. Results show improvement over strong baselines. Our source code and data are available online.

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