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README.md
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<a href="https://github.com/SapienzaNLP/zebra"><img src="https://img.shields.io/badge/GitHub-Repo-121013?logo=github&logoColor=white"></a>
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A retrieval augmentation framework for zero-shot commonsense question answering with LLMs.
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## ๐ ๏ธ Installation
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## ๐ Quick Start
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ZEBRA is a plug-and-play retrieval augmentation framework for **Commonsense Question Answering**. \
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It is composed of
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The knowledge generation step is responsible for:
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- given a question, retrieving relevant examples of question-knowledge pairs from a large collection
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- prompting a LLM to generate useful explanations for the given input question by leveraging the relationships between the retrieved question-knowledge pairs.
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Here is an example of how to use ZEBRA for question answering:
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<a href="https://github.com/SapienzaNLP/zebra"><img src="https://img.shields.io/badge/GitHub-Repo-121013?logo=github&logoColor=white"></a>
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<div align="center"> A retrieval augmentation framework for zero-shot commonsense question answering with LLMs. </div>
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## ๐ ๏ธ Installation
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## ๐ Quick Start
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ZEBRA is a plug-and-play retrieval augmentation framework for **Commonsense Question Answering**. \
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It is composed of three pipeline stages: *example retrieval*, *knowledge generation* and *informed reasoning*.
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- Example retrieval: given a question, we retrieve relevant examples of question-knowledge pairs from a large collection
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- Knowledge generation: we prompt an LLM to generate useful explanations for the given input question by leveraging the relationships in the retrieved question-knowledge pairs.
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- Informed reasoning: we prompt the same LLM for the question answering task by taking advantage of the previously generated explanations.
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Here is an example of how to use ZEBRA for question answering:
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