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DART: A Lightweight Quality-Suggestive Data-to-Text Annotation Tool

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 Added by Ernie Chang
 Publication date 2020
and research's language is English




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We present a lightweight annotation tool, the Data AnnotatoR Tool (DART), for the general task of labeling structured data with textual descriptions. The tool is implemented as an interactive application that reduces human efforts in annotating large quantities of structured data, e.g. in the format of a table or tree structure. By using a backend sequence-to-sequence model, our system iteratively analyzes the annotated labels in order to better sample unlabeled data. In a simulation experiment performed on annotating large quantities of structured data, DART has been shown to reduce the total number of annotations needed with active learning and automatically suggesting relevant labels.



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74 - Jie Yang , Yue Zhang , Linwei Li 2017
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