通过整合 LLM 和特定领域生成模型推进通用传感器数据合成

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Xiaomao Zhou;Qingmin Jia;Yujiao Hu
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引用次数: 0

摘要

合成数据在机器学习和数据科学中已变得至关重要,它能解决现实世界中的数据限制,如稀缺性、隐私性和成本。虽然现有的生成模型在合成各种传感器数据方面很有效,但在性能和泛化方面却举步维艰。本文介绍了一种大型语言模型(LLM)驱动的框架,该框架利用 LLM 和特定领域生成模型(DGM)进行通用传感器数据合成。具体来说,我们的方法以 LLM 为核心,分析数据生成任务,将复杂任务分解为易于管理的子任务,并将每个子任务委托给最合适的 DGM,从而自动构建定制的数据生成管道。同时,强化学习(RL)的集成有望增强该框架优化利用 DGM 的能力,从而使数据生成具有更高的质量和控制灵活性。实验结果证明了 LLM 在理解不同任务方面的有效性,以及通过与不同 DGM 的协作互动促进通用传感器数据合成的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing General Sensor Data Synthesis by Integrating LLMs and Domain-Specific Generative Models
Synthetic data has become essential in machine learning and data science, addressing real-world data limitations such as scarcity, privacy, and cost. While existing generative models are effective in synthesizing various sensor data, they struggle with performance and generalization. This letter introduces a large language model (LLM)-driven framework that leverages LLMs and domain-specific generative models (DGMs) for general sensor data synthesis. Specifically, our method employs LLMs as the core to analyze data generation tasks, decompose complex tasks into manageable subtasks, and delegate each to the most suitable DGM, thereby automatically constructing customized data generation pipelines. Meanwhile, the integration of reinforcement learning (RL) is promising to enhance the framework's ability to optimally utilize DGMs, resulting in data generation with superior quality and control flexibility. Experimental results demonstrate the effectiveness of LLMs in understanding diverse tasks and in facilitating general sensor data synthesis through collaborative interactions with diverse DGMs.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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