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arxiv: 2310.01430 · v1 · pith:NTUSWJ35 · submitted 2023-09-29 · cs.CL · cs.AI

Sarcasm in Sight and Sound: Benchmarking and Expansion to Improve Multimodal Sarcasm Detection

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classification cs.CL cs.AI
keywords mustardsarcasmbenchmarkingdatasetextensionachievingbenchmarklanguage
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The introduction of the MUStARD dataset, and its emotion recognition extension MUStARD++, have identified sarcasm to be a multi-modal phenomenon -- expressed not only in natural language text, but also through manners of speech (like tonality and intonation) and visual cues (facial expression). With this work, we aim to perform a rigorous benchmarking of the MUStARD++ dataset by considering state-of-the-art language, speech, and visual encoders, for fully utilizing the totality of the multi-modal richness that it has to offer, achieving a 2\% improvement in macro-F1 over the existing benchmark. Additionally, to cure the imbalance in the `sarcasm type' category in MUStARD++, we propose an extension, which we call \emph{MUStARD++ Balanced}, benchmarking the same with instances from the extension split across both train and test sets, achieving a further 2.4\% macro-F1 boost. The new clips were taken from a novel source -- the TV show, House MD, which adds to the diversity of the dataset, and were manually annotated by multiple annotators with substantial inter-annotator agreement in terms of Cohen's kappa and Krippendorf's alpha. Our code, extended data, and SOTA benchmark models are made public.

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  1. ProSarc: Prosody-Aware Sarcasm Recognition Framework via Temporal Prosodic Incongruity

    cs.AI 2026-06 unverdicted novelty 5.0

    ProSarc detects sarcasm via temporal prosodic incongruity using dual encoders (Global Emotion and Temporal Prosody with BiLSTM+attention) and an incongruity analyzer, reporting F1=75.3 on MUStARD++, 62.9 on PodSarc, a...