Improving Human-Labeled Data through Dynamic Automatic Conflict Resolution

December 08, 2020 ยท Declared Dead ยท ๐Ÿ› International Conference on Computational Linguistics

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Authors David Q. Sun, Hadas Kotek, Christopher Klein, Mayank Gupta, William Li, Jason D. Williams arXiv ID 2012.04169 Category cs.CL: Computation & Language Citations 11 Venue International Conference on Computational Linguistics Last Checked 4 months ago
Abstract
This paper develops and implements a scalable methodology for (a) estimating the noisiness of labels produced by a typical crowdsourcing semantic annotation task, and (b) reducing the resulting error of the labeling process by as much as 20-30% in comparison to other common labeling strategies. Importantly, this new approach to the labeling process, which we name Dynamic Automatic Conflict Resolution (DACR), does not require a ground truth dataset and is instead based on inter-project annotation inconsistencies. This makes DACR not only more accurate but also available to a broad range of labeling tasks. In what follows we present results from a text classification task performed at scale for a commercial personal assistant, and evaluate the inherent ambiguity uncovered by this annotation strategy as compared to other common labeling strategies.
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