INK-USC/RiddleSense
RiddleSense: Reasoning about Riddle Questions Featuring Linguistic Creativity and Commonsense Knowledge
This project helps researchers in natural language understanding (NLU) evaluate how well their AI models can solve riddle-style questions. You provide a multiple-choice riddle question, and the system assesses the model's ability to reason about figurative language and commonsense knowledge. It's designed for AI researchers and computational linguists studying advanced NLU.
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Use this if you are an AI researcher developing and testing models that need to understand complex language, figurative speech, and commonsense reasoning to answer challenging questions.
Not ideal if you are looking for a ready-to-use application to solve riddles for entertainment or a general-purpose question-answering system.
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13
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Language
Python
License
MIT
Category
Last pushed
Oct 20, 2021
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