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Research Academic Computer Technology Institute, Research Unit 3, Design of Ambient, Intelligent Systems Group, N. Kazantzaki str., Rio Campus, Patras, Greece

机译:研究学术计算机技术研究所,研究单元3,环境,智能系统组设计,N.Kazantzaki str。,Rio Campus,Patras,希腊

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Discrete sequence modeling and prediction is a fundamental goal and a challenge for location-aware computing. Mobile client’s data request forecasting and location tracking in wireless cellular networks are characteristic application areas of sequence prediction in pervasive computing, where learning of sequential data could boost the underlying network’s performance. Approaches inspired from information theory comprise ideal solutions to the above problems, because several overheads in the mobile computing paradigm can be attributed to the randomness or uncertainty in a mobile client’s movement or data access. This article presents a new information-theoretic technique for discrete sequence prediction. It surveys the state-of-the-art solutions and provides a qualitative description of their strengths and weaknesses. Based on this analysis it proposes a new method, for which the preliminary experimental results exhibit its efficiency and robustness.
机译:离散序列建模和预测是基本目标和位置感知计算的挑战。无线蜂窝网络中的移动客户端的数据请求预测和位置跟踪是普遍计算中的序列预测的特征应用领域,其中顺序数据的学习可以提高底层网络的性能。灵感来自信息理论的方法包括对上述问题的理想解决方案,因为移动计算范例中的几个开销可以归因于移动客户端的移动或数据访问中的随机性或不确定性。本文提出了一种用于离散序列预测的新信息 - 理论技术。它调查最先进的解决方案,并提供了它们的优势和劣势的定性描述。基于该分析,它提出了一种新方法,初步实验结果表明其效率和鲁棒性。

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