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Reactive Supervision: A New Method for Collecting Sarcasm Data

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arxiv 2009.13080 v1 pith:JWM2MMMU submitted 2020-09-28 cs.CL cs.SI

Reactive Supervision: A New Method for Collecting Sarcasm Data

classification cs.CL cs.SI
keywords datamethodsarcasmaffectivecollectioncomputingdatasetdetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sarcasm detection is an important task in affective computing, requiring large amounts of labeled data. We introduce reactive supervision, a novel data collection method that utilizes the dynamics of online conversations to overcome the limitations of existing data collection techniques. We use the new method to create and release a first-of-its-kind large dataset of tweets with sarcasm perspective labels and new contextual features. The dataset is expected to advance sarcasm detection research. Our method can be adapted to other affective computing domains, thus opening up new research opportunities.

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