Mobile User Profile Acquisition through Network Observables and Explicit User Queries

Nilton Bila, Jin Cao, R. Dinoff, T. Ho, R. Hull, B. Kumar, P. Santos
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引用次数: 25

Abstract

This paper describes a novel approach for gathering profile information about mobile phone users. The focus is on information that can be used to enhance targeting of advertisements. (The ads might be delivered into the mobile phones, or to other devices such as the user's IPTV.) Unlike previous approaches, we use a two-tiered approach for learning end-user habits and preferences. In this approach the first tier involves statistical learning from network observable data (in the current paper, primarily logs of cell towers visited), and the second tier involves explicit queries to the user (in the current paper, to ask, e.g., what kinds of activities the user does in a given region that he frequents). The user might be willing to answer occasional queries of this sort through offers of service discounts, or to be able to receive more relevant ads. The paper focuses on two key aspects of our approach, which correspond to how the two tiers are instantiated in the current version of the prototype system that we have developed at Bell Labs. The first concerns the statistical techniques used to determine information about regions visited, along with the frequency of visits, typical durations, and typical visit times. These techniques were developed based on a training set consisting of logs of 6 users with mobile devices over a period of several months. The techniques address issues that arise when a given small region is serviced by multiple cell towers (in which case oscillations between cell towers can be confused with movement between regions). The second key aspect concerns optimizing the order in which queries are presented to users, in a context where different query answers have different value for the advertising process. (The values of answers might be influenced by the mix of advertising campaigns from which ads are to be matched against users.) Optimization is NP-complete in a relatively general context. We develop a polynomial time algorithm which yields optimal sequences for the case where the family of queries to be asked satisfies a tree-based property. This is extended to create a heuristic polynomial time algorithm for the general case.
通过网络观察和显式用户查询获取移动用户配置文件
本文描述了一种收集移动电话用户个人信息的新方法。重点是可用于提高广告针对性的信息。(广告可能会投放到手机上,也可能会投放到用户的IPTV等其他设备上。)与以前的方法不同,我们使用两层方法来学习最终用户的习惯和偏好。在这种方法中,第一层涉及从网络可观察数据中进行统计学习(在当前的论文中,主要是访问的蜂窝塔的日志),第二层涉及对用户的显式查询(在当前的论文中,询问,例如,用户在他经常光顾的给定区域从事何种活动)。用户可能愿意通过提供服务折扣来回答这类偶然的问题,或者能够收到更多相关的广告。本文关注我们方法的两个关键方面,这对应于我们在贝尔实验室开发的原型系统的当前版本中如何实例化这两层。第一个问题涉及用于确定访问区域信息的统计技术,以及访问频率、典型持续时间和典型访问时间。这些技术是基于一个训练集开发的,该训练集由6个使用移动设备的用户在几个月内的日志组成。这些技术解决了当一个给定的小区域由多个信号塔提供服务时出现的问题(在这种情况下,信号塔之间的振荡可能与区域之间的移动混淆)。第二个关键方面涉及在不同查询答案对广告流程具有不同价值的上下文中,优化向用户显示查询的顺序。(答案的价值可能会受到广告活动组合的影响,这些广告将与用户进行匹配。)在相对一般的上下文中,优化是np完全的。我们开发了一个多项式时间算法,该算法在要查询的查询族满足基于树的属性的情况下产生最优序列。将此扩展为针对一般情况创建一个启发式多项式时间算法。
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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