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Conserving analyst attention units: use of multi-agent software and CEP methods to assist information analysis

机译:节省分析人员的注意力:使用多代理软件和CEP方法来协助信息分析

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摘要

Although the capability of computer-based artificial intelligence techniques for decision-making and situational awareness has seen notable improvement over the last several decades, the current state-of-the-art still falls short of creating computer systems capable of autonomously making complex decisions and judgments in many domains where data is nuanced and accountability is high. However, there is a great deal of potential for hybrid systems in which software applications augment human capabilities by focusing the analyst's attention to relevant information elements based on both a priori knowledge of the analyst's goals and the processing/correlation of a series of data streams too numerous and heterogeneous for the analyst to digest without assistance. Researchers at Penn State University are exploring ways in which an information framework influenced by Klein's (Recognition Primed Decision) RPD model, Endsley's model of situational awareness, and the Joint Directors of Laboratories (JDL) data fusion process model can be implemented through a novel combination of Complex Event Processing (CEP) and Multi-Agent Software (MAS). Though originally designed for stock market and financial applications, the high performance data-driven nature of CEP techniques provide a natural compliment to the proven capabilities of MAS systems for modeling naturalistic decision-making, performing process adjudication, and optimizing networked processing and cognition via the use of "mobile agents." This paper addresses the challenges and opportunities of such a framework for augmenting human observational capability as well as enabling the ability to perform collaborative context-aware reasoning in both human teams and hybrid human / software agent teams.
机译:尽管在过去的几十年中,基于计算机的人工智能技术用于决策和态势感知的能力得到了显着改善,但当前的最新技术仍不足以创建能够自主做出复杂决策和决策的计算机系统。在许多领域,数据的细微差别和问责制很高。但是,对于混合系统而言,存在很大的潜力,在这种混合系统中,软件应用程序可以通过基于分析师目标的先验知识以及一系列数据流的处理/相关性,将分析师的注意力集中在相关的信息元素上,从而增强人的能力。分析人员无需协助即可消化大量且异构的数据。宾夕法尼亚州立大学的研究人员正在探索如何通过新颖的组合来实现受Klein(认知主导决策)RPD模型,Endsley的态势感知模型和实验室联合主管(JDL)数据融合过程模型影响的信息框架的方法。复杂事件处理(CEP)和多代理软件(MAS)的概述。尽管最初是为股票市场和金融应用而设计的,但是CEP技术的高性能数据驱动特性自然地补充了MAS系统经过验证的功能,这些功能可用于建模自然决策,执行流程裁决以及通过网络优化网络处理和认知。使用“移动代理”。本文探讨了这种框架的挑战和机遇,这种框架可以增强人类的观察能力,并能够在人类团队和人工/软件混合代理团队中执行协作的情境感知推理。

著录项

  • 来源
    《Next-generation analyst》|2013年|87580N.1-87580N.10|共10页
  • 会议地点 Baltimore MD(US)
  • 作者单位

    College of Information Sciences and Technology, Penn State University, University Park, PA. 16802-6822;

    College of Information Sciences and Technology, Penn State University, University Park, PA. 16802-6822;

    College of Information Sciences and Technology, Penn State University, University Park, PA. 16802-6822;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Complex Event Processing; CEP; Multi-Agent Systems; MAS; information fusion;

    机译:复杂事件处理; CEP;多代理系统; MAS;信息融合;

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