众包地面真相的问题回答使用CrowdTruth

Benjamin Timmermans, Lora Aroyo, Chris Welty
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引用次数: 4

摘要

为开放领域任务(如一般问答)收集训练和评估数据是一项具有挑战性的任务。通常,基础真值数据是由人类专家注释者提供的,然而,在开放领域中,专家很难定义。此外,注释示例的整个过程可能很长且代价高昂。自然,众包已经成为填补这一空白的主流方法,即收集人工口译数据。然而,与传统的专家注释任务类似,大多数方法使用多数投票来衡量注释的质量,从而旨在为每个示例确定一个正确答案,尽管许多注释任务可以有多个解释,这导致同一问题有多个正确答案。我们提出了一种基于众包的方法来有效地收集地面真相数据,称为CrowdTruth,其中基于分歧的指标被用来利用大量的人类解释和测量所得地面真相的质量。我们在回答问题的两个语义解释用例中举例说明了我们的方法。
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Crowdsourcing ground truth for Question Answering using CrowdTruth
Gathering training and evaluation data for open domain tasks, such as general question answering, is a challenging task. Typically, ground truth data is provided by human expert annotators, however, in an open domain experts are difficult to define. Moreover, the overall process for annotating examples can be lengthy and expensive. Naturally, crowdsourcing has become a mainstream approach for filling this gap, i.e. gathering human interpretation data. However, similar to the traditional expert annotation tasks, most of those methods use majority voting to measure the quality of the annotations and thus aim at identifying a single right answer for each example, despite the fact that many annotation tasks can have multiple interpretations, which results in multiple correct answers to the same question. We present a crowdsourcing-based approach for efficiently gathering ground truth data called CrowdTruth, where disagreement-based metrics are used to harness the multitude of human interpretation and measure the quality of the resulting ground truth. We exemplify our approach in two semantic interpretation use cases for answering questions.
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