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首页> 外文期刊>Cybernetics, IEEE Transactions on >Learning-Automaton-Based Online Discovery and Tracking of Spatiotemporal Event Patterns
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Learning-Automaton-Based Online Discovery and Tracking of Spatiotemporal Event Patterns

机译:基于学习自动机的时空事件模式在线发现和跟踪

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摘要

Discovering and tracking of spatiotemporal patterns in noisy sequences of events are difficult tasks that have become increasingly pertinent due to recent advances in ubiquitous computing, such as community-based social networking applications. The core activities for applications of this class include the sharing and notification of events, and the importance and usefulness of these functionalities increase as event sharing expands into larger areas of one's life. Ironically, instead of being helpful, an excessive number of event notifications can quickly render the functionality of event sharing to be obtrusive. Indeed, any notification of events that provides redundant information to the application/user can be seen to be an unnecessary distraction. In this paper, we introduce a new scheme for discovering and tracking noisy spatiotemporal event patterns, with the purpose of suppressing reoccurring patterns, while discerning novel events. Our scheme is based on maintaining a collection of hypotheses, each one conjecturing a specific spatiotemporal event pattern. A dedicated learning automaton (LA)—the spatiotemporal pattern LA (STPLA)—is associated with each hypothesis. By processing events as they unfold, we attempt to infer the correctness of each hypothesis through a real-time guided random walk. Consequently, the scheme that we present is computationally efficient, with a minimal memory footprint. Furthermore, it is ergodic, allowing adaptation. Empirical results involving extensive simulations demonstrate the superior convergence and adaptation speed of STPLA, as well as an ability to operate successfully with noise, including both the erroneous inclusion and omission of events. An empirical comparison study was performed and confirms the superiority of our scheme compared to a similar state-of-the-art approach. In particular, the robustness of the STPLA to inclusion as well as to omission noise constitutes a unique property compared to othe- related approaches. In addition, the results included, which involve the so-called “ presence sharing” application, are both promising and, in our opinion, impressive. It is thus our opinion that the proposed STPLA scheme is, in general, ideal for improving the usefulness of event notification and sharing systems, since it is capable of significantly, robustly, and adaptively suppressing redundant information.
机译:在嘈杂的事件序列中发现和跟踪时空模式是一项艰巨的任务,由于无处不在的计算技术(例如基于社区的社交网络应用程序)的最新发展,这些任务变得越来越相关。该类应用程序的核心活动包括事件的共享和通知,并且随着事件共享扩展到人们生活的更大领域,这些功能的重要性和实用性也随之提高。具有讽刺意味的是,过多的事件通知没有帮助,反而会迅速使事件共享的功能变得难以理解。实际上,任何向应用程序/用户提供冗余信息的事件通知都可以看作是不必要的干扰。在本文中,我们介绍了一种发现和跟踪嘈杂的时空事件模式的新方案,目的是在识别新颖事件的同时抑制重复发生的模式。我们的方案基于维护一组假设的假设,每个假设都推测出一种特定的时空事件模式。每个假设都关联有专用的学习自动机(LA)-时空模式LA(STPLA)。通过处理事件的发展,我们尝试通过实时引导的随机游走推断每个假设的正确性。因此,我们提出的方案在计算上是有效的,具有最小的内存占用量。此外,它是遍历遍历的,可以适应。涉及大量模拟的经验结果表明,STPLA具有出色的收敛性和自适应速度,并且具有在噪声(包括错误包含和遗漏事件)下成功运行的能力。进行了一项经验比较研究,证实了我们的方案与类似的最新方法相比的优越性。特别是,与其他相关方法相比,STPLA对包含以及对遗漏噪声的鲁棒性构成了独特的属性。此外,所包含的结果涉及所谓的“在场共享”应用程序,既有希望,而且在我们看来令人印象深刻。因此,我们认为,提出的STPLA方案通常能够提高事件通知和共享系统的实用性,因为它能够显着,稳健并自适应地抑制冗余信息。

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