评估具有 RAG 功能的大型语言模型:机器人行为规划与执行视角

Jin Yamanaka, Takashi Kido
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摘要

大语言模型(LLM)的显著性能被揭示出来后,其功能通过检索增强生成(RAG)等技术得到了迅速扩展。鉴于其广泛的适用性和快速的发展,考虑其对社会系统的影响至关重要。在本研究中,我们关注了社会系统中的 LLM 与开放环境中的仿人机器人之间的相似性。我们列举了在解决问题过程中控制仿人机器人所需的基本组件,这有助于我们探索 LLM 的核心能力,并评估这些组件中任何不足之处的影响。这种方法是合理的,因为仿人系统的有效性已得到充分证明和认可。为了确定仿人机器人在解决问题任务中所需的组件,我们创建了一个广泛的组件框架,用于在开放环境中规划和控制仿人机器人。然后,参考最新基准评估每个组件的 LLM 影响和风险,以评估其当前的优缺点。在我们的框架指导下进行评估后,我们确定了 LLMs 所缺乏的某些能力以及社会系统中存在的问题。
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Evaluating Large Language Models with RAG Capability: A Perspective from Robot Behavior Planning and Execution
After the significant performance of Large Language Models (LLMs) was revealed, their capabilities were rapidly expanded with techniques such as Retrieval Augmented Generation (RAG). Given their broad applicability and fast development, it's crucial to consider their impact on social systems. On the other hand, assessing these advanced LLMs poses challenges due to their extensive capabilities and the complex nature of social systems. In this study, we pay attention to the similarity between LLMs in social systems and humanoid robots in open environments. We enumerate the essential components required for controlling humanoids in problem solving which help us explore the core capabilities of LLMs and assess the effects of any deficiencies within these components. This approach is justified because the effectiveness of humanoid systems has been thoroughly proven and acknowledged. To identify needed components for humanoids in problem-solving tasks, we create an extensive component framework for planning and controlling humanoid robots in an open environment. Then assess the impacts and risks of LLMs for each component, referencing the latest benchmarks to evaluate their current strengths and weaknesses. Following the assessment guided by our framework, we identified certain capabilities that LLMs lack and concerns in social systems.
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