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Semantic Annotation Aggregation with Conditional Crowdsourcing Models and Word Embeddings

机译:有条件众包模型和词嵌入的语义注释聚合

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In modern text annotation projects, crowdsourced annotations are often aggregated using item response models or by majority vote. Recently, item response models enhanced with generative data models have been shown to yield substantial benefits over those with conditional or no data models. However, suitable generative data models do not exist for many tasks, such as semantic labeling tasks. When no generative data model exists, we demonstrate that similar benefits may be derived by conditionally modeling documents that have been previously embedded in a semantic space using recent work in vector space models. We use this approach to show state-of-the-art results on a variety of semantic annotation aggregation tasks.
机译:在现代文本注释项目中,众包注释通常使用项目响应模型或多数表决来汇总。最近,已证明,用生成数据模型增强的项目响应模型比那些有条件或无数据模型的模型产生实质性的好处。但是,对于许多任务(例如语义标记任务)并不存在合适的生成数据模型。当不存在生成数据模型时,我们证明使用向量空间模型中的最新工作,通过对先前已嵌入语义空间中的文档进行条件建模,可以得出类似的好处。我们使用这种方法来显示各种语义注释聚合任务的最新结果。

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