移动环境下的马尔可夫图缓存替换策略

H. Chavan, S. Sane, H. B. Kekre
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引用次数: 5

摘要

基于位置的服务(LBS)改变了移动应用程序访问和管理移动数据库系统(MDS)的方式。在LBS中,数据被移动到离应用更近的地方,以提高有效性和独立性。这一趋势在移动数据库缓存领域引发了许多有趣的研究问题。在MDS中,缓存是提高性能的有效途径。通过对当前和未来查询处理的数据项进行令人信服的准确预测,可以实现所需的缓存。在执行缓存替换时,考虑移动客户端的位置和移动方向非常重要。本文提出了一种用于MDS的马尔可夫图缓存替换策略(MGCRP)。MGCRP通过一阶/二阶马尔可夫模型预测未来客户的位置。使用数据库双集群生成的访问模式将被预取,以减少网络流量和用户延迟。图是一种表达性的数据结构,用于查找不靠近的位置以进行缓存替换。如果与马尔可夫图位置相关的数据不是缓存的一部分,则根据数据项的有效范围、访问频率、数据距离和数据大小进行替换。在缓存大小和查询间隔方面的仿真结果表明,MGCRP的性能明显优于现有的LRU (Least recently Used)、FAR(最远距离替换)、基于优先预测区域的缓存替换策略(PPRRP)和基于马尔可夫模型的缓存替换策略(MMCRP)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Markov-Graph Cache Replacement Policy for mobile environment
The Location Based Services (LBS) have changed the way mobile applications access and manage Mobile Database System (MDS). In LBS data is moved closer to applications to increase the effectiveness and independence. This trend leads to many interesting research problems in mobile database caching. In MDS caching is effective way to improve the performance. The desired caching can be achieved by convincingly accurate prediction of data items for the present and future query processing. It is important to take into consideration the location and movement direction of mobile clients while performing cache replacement. In this paper we propose a Markov Graph Cache Replacement Policy (MGCRP) for MDS. The MGCRP predicts the future client location by first/second order Markov Model. The access patterns generated using biclustering the database and will be prefetched to reduce the network traffic and user latencies. An expressive data structure, graph is used to find the location which is not in close proximity for cache replacement. If data related to Markov-Graph location is not part of cache then replacement is based on valid scope, access frequency, data distance and data size of data item. Simulation results for cache size and query interval show that the MGCRP performs significantly better than the existing Least Recent Used (LRU), Furthest Away Replacement (FAR), Prioritized Predicted Region based Cache Replacement Policy (PPRRP) and Markov Model based Cache Replacement Policy (MMCRP).
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