论文标题
在交互式决策模型中多样化的代理人的行为
Diversifying Agent's Behaviors in Interactive Decision Models
论文作者
论文摘要
对其他代理的行为进行建模在多个代理之间的相互作用的决策模型中起着重要作用。为了优化自己的决策,主体代理需要在不确定的环境中对其他代理人同时采取行动进行建模。但是,当代理具有竞争力并且主观代理无法获得有关其他代理商的全部知识时,就会发生建模功能不全。即使代理商是协作的,由于他们的隐私问题,他们也可能不会分享其真实行为。在本文中,我们研究了在互动之前,主体决策模型中其他代理的多样化行为。从有关其他代理行为的先验知识开始,我们使用线性还原技术从已知行为中提取代表性的行为特征。随后,我们通过扩展功能来产生他们的新行为,并提出两个多样性测量以选择顶级行为。我们在两个经过充分研究的问题域中演示了新技术的性能。这项研究将有助于在开放的人工智能世界中处理未知未知数的智能系统。
Modelling other agents' behaviors plays an important role in decision models for interactions among multiple agents. To optimise its own decisions, a subject agent needs to model what other agents act simultaneously in an uncertain environment. However, modelling insufficiency occurs when the agents are competitive and the subject agent can not get full knowledge about other agents. Even when the agents are collaborative, they may not share their true behaviors due to their privacy concerns. In this article, we investigate into diversifying behaviors of other agents in the subject agent's decision model prior to their interactions. Starting with prior knowledge about other agents' behaviors, we use a linear reduction technique to extract representative behavioral features from the known behaviors. We subsequently generate their new behaviors by expanding the features and propose two diversity measurements to select top-K behaviors. We demonstrate the performance of the new techniques in two well-studied problem domains. This research will contribute to intelligent systems dealing with unknown unknowns in an open artificial intelligence world.