移动社交网络中的服务发现

M. Girolami, S. Chessa, S. Basagni, Francesco Furfari
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引用次数: 9

摘要

我们提出了一种新的服务发现算法,称为SIDEMAN,它考虑了服务传播和发现的人类移动性。SIDEMAN充分利用了移动社交网络的特点,比如用户只能加入有限数量的社区,以及同一社区的用户对类似服务的兴趣。我们通过基于2006年IEEE Infocom会议上收集的轨迹的场景模拟来评估SIDEMAN的性能。我们的算法已经与两种流行的数据传播技术的社交版本进行了比较,即洪水和八卦。我们已经测量了算法在分配感兴趣的服务(召回)、用户需要服务时已经拥有多少服务(增益)、服务发现的能源成本以及回复服务查询所需的时间。我们证明SIDEMAN获得了完美的召回和增益,总是与其他算法相当。此外,与基于洪水和八卦的解决方案相比,大多数服务都能在合理的时间内以较低的能源成本获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Service discovery in mobile social networks
We present a new service discovery algorithm, termed SIDEMAN, which considers human mobility for service dissemination and discovery. SIDEMAN takes advantage of mobile social networking characteristics, such as user membership to a restricted number of communities and interest for similar services among users in the same community. We evaluated the performance of SIDEMAN via simulations in a scenario based on traces collected at the IEEE conference Infocom in 2006. Our algorithm has been compared to the social version of two popular data dissemination techniques, namely, flooding and gossiping. We have measured how proactive an algorithm is in distributing services of interest (Recall), how many services are already with a user when they are needed (Gain), the energy cost for service discovery, and the time needed to reply a service query. We show that SIDEMAN obtains perfect Recall and a Gain that is always comparable to that of the other algorithms. Furthermore, most services are retrieved in reasonable time and at a lower energy cost than that of the flooding and gossiping-based solutions.
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