利用主动推理在 POMDP 中收集信息

IF 2 3区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Erwin Walraven, Joris Sijs, Gertjan J. Burghouts
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引用次数: 0

摘要

收集有关环境状态的信息是自主代理若干规划任务(如监视、检查和跟踪物体)的主要目标。此类规划任务通常使用部分可观测马尔可夫决策过程(POMDP)建模,文献中出现了几种考虑在规划和执行过程中收集信息的方法。主动推理领域也有类似的发展,该领域侧重于主动收集信息,以便实现目标。这两个领域都使用 POMDP 对环境进行建模,但行动选择的基本原则却有所不同。在本文中,我们将讨论这两个研究领域之间的关系,以及如何将它们用于信息收集,从而在这两个研究领域之间架起一座桥梁。我们的贡献在于直接在主动推理框架中为信息收集任务建模的定制方法。一系列实验证明,我们的方法能让代理收集到有关环境状态的信息。因此,主动推理成为信息收集常用 POMDP 方法的替代方法,这为在这两个领域的交叉点开展更多交叉研究打开了大门。这是有好处的,因为 POMDP 求解器的最新进展可以用来加速主动推理,而有原则的主动推理框架则可以用来模拟以神经生物学合理方式运行的 POMDP 代理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Information gathering in POMDPs using active inference

Information gathering in POMDPs using active inference

Gathering information about the environment state is the main goal in several planning tasks for autonomous agents, such as surveillance, inspection and tracking of objects. Such planning tasks are typically modeled using a Partially Observable Markov Decision Process (POMDP), and in the literature several approaches have emerged to consider information gathering during planning and execution. Similar developments can be seen in the field of active inference, which focuses on active information collection in order to be able to reach a goal. Both fields use POMDPs to model the environment, but the underlying principles for action selection are different. In this paper we create a bridge between both research fields by discussing how they relate to each other and how they can be used for information gathering. Our contribution is a tailored approach to model information gathering tasks directly in the active inference framework. A series of experiments demonstrates that our approach enables agents to gather information about the environment state. As a result, active inference becomes an alternative to common POMDP approaches for information gathering, which opens the door towards more cross cutting research at the intersection of both fields. This is advantageous, because recent advancements in POMDP solvers may be used to accelerate active inference, and the principled active inference framework may be used to model POMDP agents that operate in a neurobiologically plausible fashion.

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来源期刊
Autonomous Agents and Multi-Agent Systems
Autonomous Agents and Multi-Agent Systems 工程技术-计算机:人工智能
CiteScore
6.00
自引率
5.30%
发文量
48
审稿时长
>12 weeks
期刊介绍: This is the official journal of the International Foundation for Autonomous Agents and Multi-Agent Systems. It provides a leading forum for disseminating significant original research results in the foundations, theory, development, analysis, and applications of autonomous agents and multi-agent systems. Coverage in Autonomous Agents and Multi-Agent Systems includes, but is not limited to: Agent decision-making architectures and their evaluation, including: cognitive models; knowledge representation; logics for agency; ontological reasoning; planning (single and multi-agent); reasoning (single and multi-agent) Cooperation and teamwork, including: distributed problem solving; human-robot/agent interaction; multi-user/multi-virtual-agent interaction; coalition formation; coordination Agent communication languages, including: their semantics, pragmatics, and implementation; agent communication protocols and conversations; agent commitments; speech act theory Ontologies for agent systems, agents and the semantic web, agents and semantic web services, Grid-based systems, and service-oriented computing Agent societies and societal issues, including: artificial social systems; environments, organizations and institutions; ethical and legal issues; privacy, safety and security; trust, reliability and reputation Agent-based system development, including: agent development techniques, tools and environments; agent programming languages; agent specification or validation languages Agent-based simulation, including: emergent behavior; participatory simulation; simulation techniques, tools and environments; social simulation Agreement technologies, including: argumentation; collective decision making; judgment aggregation and belief merging; negotiation; norms Economic paradigms, including: auction and mechanism design; bargaining and negotiation; economically-motivated agents; game theory (cooperative and non-cooperative); social choice and voting Learning agents, including: computational architectures for learning agents; evolution, adaptation; multi-agent learning. Robotic agents, including: integrated perception, cognition, and action; cognitive robotics; robot planning (including action and motion planning); multi-robot systems. Virtual agents, including: agents in games and virtual environments; companion and coaching agents; modeling personality, emotions; multimodal interaction; verbal and non-verbal expressiveness Significant, novel applications of agent technology Comprehensive reviews and authoritative tutorials of research and practice in agent systems Comprehensive and authoritative reviews of books dealing with agents and multi-agent systems.
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