Maximum-Profit Advertising Strategy Using Crowdsensing Trajectory Data

Lou Kaihao, Y. Yongjian, Yang Funing, Z. Xingliang
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Abstract

Out-door billboard advertising plays an important role in attracting potential cus⁃ tomers. However, whether a customer can be attracted is influenced by many factors, such as the probability that he/she sees the billboard, the degree of his/her interest, and the detour dis⁃ tance for buying the product. Taking the above factors into account, we propose advertising strategies for selecting an effective set of billboards under the advertising budget to maximize commercial profit. By using the data collected by Mobile Crowdsensing (MCS), we extract po⁃ tential customers’implicit information, such as their trajectories and preferences. We then study the billboard selection problem under two situations, where the advertiser may have only one or multiple products. When only one kind of product needs advertising, the billboard se⁃ lection problem is formulated as the probabilistic set coverage problem. We propose two heu⁃ ristic advertising strategies to greedily select advertising billboards, which achieves the expect⁃ ed maximum commercial profit with the lowest cost. When the advertiser has multiple prod⁃ ucts, we formulate the problem as searching for an optimal solution and adopt the simulated annealing algorithm to search for global optimum instead of local optimum. Extensive experi⁃ ments based on three real-world data sets verify that our proposed advertising strategies can achieve the superior commercial profit compared with the state-of-the-art strategies.
基于众感轨迹数据的最大化利润广告策略
户外广告牌广告在吸引潜在客户方面发挥着重要作用。然而,是否能吸引到顾客受到很多因素的影响,例如他/她看到广告牌的概率,他/她的兴趣程度,以及购买产品的绕路距离。综合以上因素,我们提出广告策略,在广告预算下选择一套有效的广告牌,实现商业利润最大化。通过移动众测(MCS)收集的数据,我们提取了潜在客户的隐性信息,如他们的轨迹和偏好。然后,我们研究了两种情况下的广告牌选择问题,广告商可能只有一种或多种产品。当只有一种产品需要广告时,将广告牌选择问题表述为概率集覆盖问题。提出两种唯心广告策略,贪婪地选择广告牌,以最低的成本获得预期的最大商业利润。当广告主有多个产品时,我们将问题表述为寻找最优解,并采用模拟退火算法寻找全局最优而不是局部最优。基于三个真实数据集的大量实验验证了我们提出的广告策略与最先进的策略相比可以获得更高的商业利润。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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