2 research outputs found

    How Good is the Model in Model-in-the-loop Event Coreference Resolution Annotation?

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    Annotating cross-document event coreference links is a time-consuming and cognitively demanding task that can compromise annotation quality and efficiency. To address this, we propose a model-in-the-loop annotation approach for event coreference resolution, where a machine learning model suggests likely corefering event pairs only. We evaluate the effectiveness of this approach by first simulating the annotation process and then, using a novel annotator-centric Recall-Annotation effort trade-off metric, we compare the results of various underlying models and datasets. We finally present a method for obtaining 97\% recall while substantially reducing the workload required by a fully manual annotation process. Code and data can be found at https://github.com/ahmeshaf/model_in_corefComment: The 17th Liguistics Annotation Workshop, 2023 (LAW-XVII) short paper. 10 pages, 6 figures, 1 tabl
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