查理来了在法律硕士时代实现代理的语义网愿景

Jesse Wright
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摘要

本文介绍了我们的研究,在不久的将来,个人和组织等法人可以委托半自主人工智能驱动的代理代表他们进行在线互动。作者的研究涉及半自主网络代理的开发,只有当系统没有足够的背景或信心来自主工作时,才会咨询用户。这样就形成了用户与代理的对话,用户可以向代理了解他们信任的信息来源、他们的数据共享偏好以及他们的决策偏好。最终,用户可以最大限度地控制自己的数据和决策,同时保持使用代理(包括由 LLM 驱动的代理)的便利性。为了开发近期解决方案,本研究试图回答以下问题:"我们如何在网络上建立一个代表个人和组织的可信、可靠的半自主代理网络?在确定了关键需求之后,本文介绍了一个通用个人助理用例的演示。它是通过使用(Notation3)规则来实现的,以强制执行有关信念、数据共享和数据使用的安全保证,并使用 LLMs 来实现与用户的自然语言交互以及软件代理之间的泛在对话。
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Here's Charlie! Realising the Semantic Web vision of Agents in the age of LLMs
This paper presents our research towards a near-term future in which legal entities, such as individuals and organisations can entrust semi-autonomous AI-driven agents to carry out online interactions on their behalf. The author's research concerns the development of semi-autonomous Web agents, which consult users if and only if the system does not have sufficient context or confidence to proceed working autonomously. This creates a user-agent dialogue that allows the user to teach the agent about the information sources they trust, their data-sharing preferences, and their decision-making preferences. Ultimately, this enables the user to maximise control over their data and decisions while retaining the convenience of using agents, including those driven by LLMs. In view of developing near-term solutions, the research seeks to answer the question: "How do we build a trustworthy and reliable network of semi-autonomous agents which represent individuals and organisations on the Web?". After identifying key requirements, the paper presents a demo for a sample use case of a generic personal assistant. This is implemented using (Notation3) rules to enforce safety guarantees around belief, data sharing and data usage and LLMs to allow natural language interaction with users and serendipitous dialogues between software agents.
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