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Patent Response System Optimised for Faithfulness: Procedural Knowledge Embodiment with Knowledge Graph and Retrieval Augmented Generation

A proposed system for generating faithful and unbiased patent responses using a knowledge graph and retrieval augmented generation.

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Patent Response System Optimised for Faithfulness: Procedural Knowledge Embodiment with Knowledge Graph and Retrieval Augmented Generation

By Jung-Mei Chu, Hao-Cheng Lo, Jieh Hsiang, Chun-Chieh Cho
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The authors propose the Patent Response System Optimised for Faithfulness (PRO), which incorporates procedural knowledge and uses a tailored large language model to generate patent responses. PRO outperforms GPT-4 in terms of faithfulness, reducing unfaithfulness across six error types.

The system's effectiveness is demonstrated through experimental results.

Abstract

The authors propose the Patent Response System Optimised for Faithfulness (PRO), which incorporates procedural knowledge and uses a tailored large language model to generate patent responses. PRO outperforms GPT-4 in terms of faithfulness, reducing unfaithfulness across six error types. The system's effectiveness is demonstrated through experimental results.

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patent-response-systemfaithfulness-in-patent-responsesprocedural-knowledge-embodimentknowledge-graph-based-generationaugmented-generationKnowledge GraphsLarge Language ModelsRetrieval & RAGSemantic Interoperability
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