Sarcasm Suite: A Browser-Based Engine for Sarcasm Detection and Generation
نویسندگان
چکیده
Sarcasm Suite is a browser-based engine that deploys five of our past papers in sarcasm detection and generation. The sarcasm detection modules use four kinds of incongruity: sentiment incongruity, semantic incongruity, historical context incongruity and conversational context incongruity. The sarcasm generation module is a chatbot that responds sarcastically to user input. With a visually appealing interface that indicates predictions using ‘faces’ of our co-authors from our past papers, Sarcasm Suite is our first demonstration of our work in computational sarcasm.
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