Context-Aware Pragmatic Metacognitive Prompting for Sarcasm Detection
Michael Iskandardinata, William Christian, and Derwin Suhartono

TL;DR
This paper enhances sarcasm detection in NLP by integrating retrieval-aware contextual information into a prompting framework, significantly improving performance across multiple datasets with culturally specific language.
Contribution
It introduces a retrieval-aware extension to Pragmatic Metacognitive Prompting, leveraging web-based and self-knowledge retrieval to improve sarcasm detection in LLMs.
Findings
9.87% macro-F1 improvement on Twitter Indonesia Sarcastic dataset
3.29% macro-F1 increase on SemEval-2018 dataset
4.08% macro-F1 increase on MUStARD dataset
Abstract
Detecting sarcasm remains a challenging task in the areas of Natural Language Processing (NLP) despite recent advances in neural network approaches. Currently, Pre-trained Language Models (PLMs) and Large Language Models (LLMs) are the preferred approach for sarcasm detection. However, the complexity of sarcastic text, combined with linguistic diversity and cultural variation across communities, has made the task more difficult even for PLMs and LLMs. Beyond that, those models also exhibit unreliable detection of words or tokens that require extra grounding for analysis. Building on a state-of-the-art prompting method in LLMs for sarcasm detection called Pragmatic Metacognitive Prompting (PMP), we introduce a retrieval-aware approach that incorporates retrieved contextual information for each target text. Our pipeline explores two complementary ways to provide context: adding…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Language, Metaphor, and Cognition · Topic Modeling
