Large language models(LLMs) have shown excellent text generation capabilities, but there is still much space for improvement in accuracy, sometimes with grammatical errors, semantic inaccuracies, and contextual incoherence, which seriously affect the reliability of the models. These problems may originate from the difficulties and limitations encountered in the pattern extraction stage of large language models. How to utilize the generative power of large language models to generate as many possible patterns that help solve problems and find the optimal patterns from them, so as to use patterns to guide large language models to generate good content, has become a current research hotspot. In this paper, we propose a pattern extraction and selection framework, PatternGPT, which generates rich patterns through the extraction ability of large language models and draws on the idea of federation learning, where multiple agents collaborate with each other to generate diverse patterns. High-quality patterns are selected by defining criteria and optimization algorithms to personalize the guidance of the model generation process. PatternGPT has the advantages of generating diverse and useful patterns, extending relevant knowledge, facilitating efficient pattern use and transfer, and optimizing the quality of generated results and user experience, which provides an effective method for optimizing the text generation capability of large language models and is expected to drive further development in the field of intelligent dialogue and content generation. It is expected to promote further development in the field of intelligent dialogue and content generation.
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