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TIMAO: Time-Sensitive Mobile Advertisement Offloading with Performance Guarantee

机译:Timao:时间敏感的移动广告卸载性能保证

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Mobile advertising has played an important role with the prevalence of smart mobile devices. Most of the previous studies focus on location-based or content-based mobile advertisement propagation and distribution, which are suffered by the low propagation efficiency, because advertisements could not be available to mobile users within limited time span. Conventional offloading schemes could perfectly distribute advertisements according to user's interest, but have not fully respected the time sensitivity in mobile advertisement distribution. In response to this stalemate, we introduce the advertisement platform's expected income maximization problem (EIMP), and prove its NP-hardness. To our knowledge, ours is even harder than conventional 0-1 mutlidimensional and multiple knapsack problem. But inspiringly we find that it could be transformed into a maximizing monotone submodular set function, being subjected to partition matroid constraints. Then a simple but effective greedy algorithm (TIMAO, time-sensitive mobile advertisement offloading)is proposed to solve the EIMP with approximation ratio of 1/3. Finally, the evaluation results show that TIMAO could double the platform's expected income comparing with the random selection method and reach 99.2% of the near optimal values achieved by CPLEX tool-box. At the same time, it increases the time duty cycle by about average 10% compared with the random selection.
机译:移动广告在智能移动设备的普遍存在中发挥了重要作用。大多数以前的研究专注于基于位置的或基于内容的移动广告传播和分布,这是由于低传播效率遭受的,因为广告无法在有限的时间跨度内可用移动用户。传统的卸载方案可以根据用户的兴趣完全分配广告,但尚未完全尊重移动广告分布中的时间敏感性。为了响应这种僵局,我们介绍了广告平台的预期收入最大化问题(EIMP),并证明了其NP硬度。据我们所知,我们的知识甚至比传统的0-1多目标和多个背包问题更难。但是,鼓励我们发现它可以被转变为最大化单调子模块集功能,进行分区MATROID限制。然后,提出了一种简单但有效的贪婪算法(Timao,时间敏感的移动广告卸载)以解决近似比为1/3的EIMP。最后,评估结果表明,Timao可以将平台的预期收入与随机选择方法相加,并达到通过CPLEX工具箱实现的近最佳值的99.2 %。与此同时,与随机选择相比,它将时间占空比大约增加了10 %。

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