IEEE Trans Neural Netw Learn Syst. 2015 Aug;26(8):1735-46. doi: 10.1109/TNNLS.2014.2354400. Epub 2014 Sep 30.
This paper focuses on the novel motivated learning (ML) scheme and opportunistic behavior of an intelligent agent. It extends previously developed ML to opportunistic behavior in a multitask situation. Our paper describes the virtual world implementation of autonomous opportunistic agents learning in a dynamically changing environment, creating abstract goals, and taking advantage of arising opportunities to improve their performance. An opportunistic agent achieves better results than an agent based on ML only. It does so by minimizing the average value of all need signals rather than a dominating need. This paper applies to the design of autonomous embodied systems (robots) learning in real-time how to operate in a complex environment.
本文关注的是智能体的新颖动机学习 (ML) 方案和机会主义行为。它将先前开发的 ML 扩展到多任务情况下的机会主义行为。我们的论文描述了自主机会主义代理在动态变化的环境中学习的虚拟世界实现,创建抽象目标,并利用出现的机会来提高他们的表现。机会主义代理比仅基于 ML 的代理取得更好的结果。它通过最小化所有需求信号的平均值而不是支配需求来实现这一点。本文适用于设计自主嵌入式系统(机器人),实时学习如何在复杂环境中运行。