论文标题
揭示在线照片共享的现实生活效果
Unveiling Real-Life Effects of Online Photo Sharing
论文作者
论文摘要
社交网络可以免费访问其服务,以换取利用用户数据的权利。数据共享是在用户选择的初始上下文中完成的。但是,在不同情况下,社交网络和第三方使用数据通常不透明。为了揭示此类用法,我们提出了一种侧重于在有影响力的现实生活中的数据共享的影响的方法。将重点放在视觉内容上,因为它在塑造在线用户配置文件方面具有强大的影响。该方法取决于三个组件:(1)一组具有相关情况的视觉对象通过众包获得的影响评级,(2)一组用于采矿用户照片的对象探测器,以及(3)由500个由500个视觉用户配置文件制成的地面真相数据集,这些数据集是根据情况进行了手动评级的500个视觉用户配置文件。这些组件与Lervup合并,该方法学会在每种情况下对视觉用户概况进行评分。 Lervup利用了一个新的图像描述符,该描述符在用户级别汇总对象评分和对象检测,以及一个注意机制,从而促进高评分的对象,以防止它们被低评分的对象淹没。通过测量轮廓评级的自动排名与手动基础真理之间的相关性来评估性能。结果表明,由于获得了两个排名的强相关性,因此Lervup是有效的。还讨论了移动应用程序中该方法的实际实现,该应用程序还讨论了对用户对共享数据使用的认识的认识。
Social networks give free access to their services in exchange for the right to exploit their users' data. Data sharing is done in an initial context which is chosen by the users. However, data are used by social networks and third parties in different contexts which are often not transparent. In order to unveil such usages, we propose an approach which focuses on the effects of data sharing in impactful real-life situations. Focus is put on visual content because of its strong influence in shaping online user profiles. The approach relies on three components: (1) a set of visual objects with associated situation impact ratings obtained by crowdsourcing, (2) a corresponding set of object detectors for mining users' photos and (3) a ground truth dataset made of 500 visual user profiles which are manually rated per situation. These components are combined in LERVUP, a method which learns to rate visual user profiles in each situation. LERVUP exploits a new image descriptor which aggregates object ratings and object detections at user level and an attention mechanism which boosts highly-rated objects to prevent them from being overwhelmed by low-rated ones. Performance is evaluated per situation by measuring the correlation between the automatic ranking of profile ratings and a manual ground truth. Results indicate that LERVUP is effective since a strong correlation of the two rankings is obtained. A practical implementation of the approach in a mobile app which raises user awareness about shared data usage is also discussed.