首页> 外文会议>ACM conference on computer supported cooperative work >Friends, Romans, Countrymen: Lend me your URLs. Using Social Chatter to Personalize Web Search
【24h】

Friends, Romans, Countrymen: Lend me your URLs. Using Social Chatter to Personalize Web Search

机译:朋友们,罗马人,同胞:借我的URL。使用社会喋喋不休来个性化网络搜索

获取原文

摘要

People often find useful content on the web via social media. However, it is difficult for users to aggregate the information and recommendations embedded in a torrent of social feeds like email and Twitter. At the same time, the ever-growing size of the web and attempts to spam commercial search engines make it a challenge for users 10 get search results relevant to their unique background and interests. To address this problem, we propose ways to let users mine their own social chatter and extract people, pages and sites of potential interest. This information can be used to effectively personalize their web search results. Our approach has the benefits of generating personalized and socially eurated results, removing web spam and preserving user privacy. We have built a system called Slant io automatically mine a user's email and Twitter feeds and populate four personalized search indices that are used to augment regular web search. We evaluated these indices with users and found that the small slice of the web indexed using social chatter can produce results that are equally or belter liked by users coin-pared to personalized search by a commercial search engine. We find that user satisfaction with search results can be improved by combining the best results from multiple indices.
机译:人们经常发现通过社交媒体在网络上有用的内容。但是,用户很难聚集嵌入在像电子邮件和Twitter社交资讯的洪流中的信息和建议。与此同时,网络和尝试的日益增长的大小垃圾邮件的商业搜索引擎,使其成为用户获取10个搜索结果有关其独特的背景和利益的挑战。为了解决这个问题,我们提出如何让用户挖掘自己的社交颤振和提取物的人,网页和潜在价值的地点。这些信息可以用来有效地个性化自己的网络搜索结果。我们的方法具有生成个性化和社会eurated结果,消除网络垃圾和保护用户隐私的好处。我们已经建立了一个名为系统自动倾斜io的矿山用户的电子邮件和Twitter的饲料并填充用于扩充一般网页搜寻Four个性化的搜索索引。我们评估这些指标与用户和发现商业搜索引擎,使用社交喋喋不休可以产生由用户同样适用或belter喜欢结果索引的网页的小部分硬币缩减到个性化的搜索。我们发现,与搜索结果的用户满意度可以通过最好的结果,从多个指标合成得到改善。

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