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Partial plan recognition from human-computer interactions under incomplete information.

机译:在不完整信息下人机交互中的部分计划识别。

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摘要

Networked computing has drastically changed the way in which people work and exchange information. In the evolution of the relationship between human and intelligent machines with the explosive network information available, the need of automated methods of gathering information and the need for higher-bandwidth interfaces by learning about and adapting to users are emerged. In our work, intelligent interface agents are developed for the prediction of resource usages in the UNIX domain, that is, assessing the likelihood of upcoming demands by users on limited resources by learning user behavior.; A multi-strategy approach is used for learning user regularities and making predictions on the regularities by integrating features of action reasoning and using mathematical user models based on hidden Markov models. The knowledge acquisition of user behavior is done by extracting behavioral patterns from their historical data of human-computer interactions. Predictive patterns are discovered by analyzing the correlations of actions and learned through segmentation and labeling of a sequence of actions. The issues of ambiguity, distraction and interleaved execution of user behavior are examined and taken into account to improve the probability estimation in hidden Markov models.; The work is a good example of bridging theory and practice: a formal model underneath, with development and verification based on real observations. Algorithms are developed for learning user regularities and the formal models are established in order to represent and solve the prediction problem on a theory basis. The prototype system “NOSTRODAMUS” is developed along with the design of algorithms and formal models.
机译:联网计算已大大改变了人们工作和交换信息的方式。在具有爆炸性网络信息的人机与智能机之间关系的演变中,出现了对自动收集信息的需求以及通过了解和适应用户对更高带宽的接口的需求。在我们的工作中,开发了智能接口代理来预测UNIX域中的资源使用情况,即,通过学习用户行为来评估用户即将对有限资源提出需求的可能性。多策略方法用于学习用户规律性并通过集成动作推理功能并使用基于隐马尔可夫模型的数学用户模型对规律进行预测。用户行为的知识获取是通过从其人机交互历史数据中提取行为模式来完成的。通过分析动作的相关性来发现预测模式,并通过对动作序列进行分段和标记来学习预测模式。研究并考虑了用户行为的歧义,分散注意力和交错执行的问题,以改善隐马尔可夫模型中的概率估计。这项工作是桥接理论与实践的一个很好的例子:下面是一个正式的模型,其开发和验证是基于真实的观察结果。开发了用于学习用户规律性的算法,并建立了形式模型以在理论基础上表示和解决预测问题。原型系统“ NOSTRODAMUS”与算法设计和形式模型一起开发。

著录项

  • 作者

    Lee, Jung-Jin.;

  • 作者单位

    The University of Connecticut.;

  • 授予单位 The University of Connecticut.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 187 p.
  • 总页数 187
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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