Intention recognition is an important step to facilitate collaboration among multiple agents. Existing work mainly focuses on intention recognition in a single-agent setting and uses a descriptive model, e.g. Bayesian networks, in the recognition process. In this article, we develop a new approach of identifying intentions for multiple agents through a clustering algorithm. We first define an intention model for multiple agents of interest. We use a prescriptive approach to model agents' behaviours where their intentions are hidden in the implementation of their plans. We introduce landmarks into the behavioural model therefore enhancing informative features to identify common intentions for multiple agents. Subsequently, we further refine the model by focusing only action sequences in their plan and provide a light model for identifying and comparing their intentions. The new models provide a simple approach of grouping agents' common intentions upon partial plans observed in agents' interactions. Then, we transform the intention recognition into an un-supervised learning problem and adapt a clustering algorithm to group intentions of multiple agents through comparing their behavioural models. We conduct the clustering process by measuring similarity of probability distributions over potential landmarks in intention models so as to discover agents' common intentions. Finally, we examine the new intention recognition approaches in two problem domains. We demonstrate importance of recognising common intentions of multiple agents in achieving their goals and provide experimental results to show performance of the new approaches.
翻译:现有工作主要侧重于单一试剂环境下的意向确认,并在识别过程中采用描述性模式,例如巴耶斯网络。在本条中,我们制定了通过集群算法确定多个代理商意图的新方法。我们首先为多个利益代理商确定了一种意向模式。我们采用规范性方法,在实施计划时隐藏了多个代理商的意图,对示范代理商的行为进行规范化处理,从而在行为模式中增加信息特征,从而确定多个代理商的共同意图。随后,我们进一步细化该模式,仅侧重于其计划中的行动序列,并为识别和比较其意图提供一个光化模型。新模式提供了一种简单的方法,在代理商互动中观察到的部分计划上,将代理人的共同意图组合起来;然后,我们将意向承认转化为一个非监督性的学习问题,并通过比较其行为模式,将组合算法与多个代理商的集团意图相适应。我们通过测量潜在标志的概率分布的相似性来进行分组化过程,以便发现多个代理商的共同意图。最后,我们研究了在验证其共同的实验性目标方面的新意图方法,我们展示了两个领域中新的实验性结果。