首页> 外文会议>International conference on world wide web >Know Your Personalization: Learning Topic level Personalization in Online Services
【24h】

Know Your Personalization: Learning Topic level Personalization in Online Services

机译:了解您的个性化:在在线服务中学习主题级别的个性化

获取原文

摘要

Online service platforms (OSPs), such as search engines, news-websites, ad-providers, etc., serve highly personalized content to the user, based on the profile extracted from her history with the OSP. Although personalization (generally) leads to a better user experience, it also raises privacy concerns for the user-she does not know what is present in her profile and more importantly, what is being used to personalize her content. In this paper, we capture OSP's personalization for an user in a new data structure called the personalization vector (η), which is a weighted vector over a set of topics, and present efficient algorithms to learn it. Our approach treats OSPs as black-boxes, and extracts η by mining only their output, specifically, the personalized (for an user) and vanilla (without any user information) contents served, and the differences in these content. We believe that such treatment of OSPs is a unique aspect of our work, not just enabling access to (so far hidden) profiles in OSPs, but also providing a novel and practical approach for retrieving information from OSPs by mining differences in their outputs. We formulate a new model called Latent Topic Personalization (LTP) that captures the personalization vector in a learning framework and present efficient inference algorithms for determining it. We perform extensive experiments targeting search engine personalization, using data from both real Google users and synthetic setup. Our results indicate that LTP achieves high accuracy (R-pre = 84%) in discovering personalized topics. For Google data, our qualitative results demonstrate that the topics determined by LTP for a user correspond well to his ad-categories determined by Google.
机译:在线服务平台(OSP),例如搜索引擎,新闻网站,广告提供者等,根据从用户使用OSP的历史记录中提取的个人资料,为用户提供高度个性化的内容。尽管个性化(通常)可以带来更好的用户体验,但它也引起了用户的隐私问题-她不知道自己的个人资料中出现了什么,更重要的是,正在使用什么来个性化她的内容。在本文中,我们在称为个性化向量(η)的新数据结构中捕获了OSP对用户的个性化,这是一组主题上的加权向量,并提出了有效的算法来学习它。我们的方法将OSP视为黑盒,并仅通过挖掘其输出来提取η,具体来说就是所服务的个性化(针对用户)和原始(无任何用户信息)内容以及这些内容之间的差异。我们认为,对OSP的这种处理是我们工作的独特方面,不仅使OSP可以访问(到目前为止是隐藏的)配置文件,而且还提供了一种新颖实用的方法来通过挖掘OSP的输出差异来检索信息。我们制定了一个称为潜在主题个性化(LTP)的新模型,该模型在学习框架中捕获了个性化矢量,并提出了用于确定个性化矢量的高效推理算法。我们使用来自真实Google用户和综合设置的数据进行针对搜索引擎个性化的广泛实验。我们的结果表明,LTP在发现个性化主题方面达到了很高的准确性(R-pre = 84%)。对于Google数据,我们的定性结果表明,由LTP为用户确定的主题与由Google确定的他的广告类别非常吻合。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号