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2011推荐系统论坛·官网发布

2011推荐系统论坛官方网站发布,http://www.resysforum.org/,后续会议视频及PPT资料,均会在此发布,欢迎大家前去围观。

目前,报名工作已经停止,参会名单也已经全部确认完毕。本次大会提交的报名人数远超我们的预期,非常感谢朋友们的大力支持与热情参与。有报了名但未收到确认信的同学,恳请你们能够理解和谅解。也请未获得参会名额的朋友们,不要在会议当天直接空降,目前留作以备万一之需的名额也已经全部放出,人数已达会场极限。还有朋友直接给我发邮件的,未能一一回复,也请多多包涵!不能参会的朋友们也无需遗憾,会议之后会有全程视频录像和PPT资料公布,同样给力。另外,会议当天会进行微博直播,感兴趣的朋友可以关注 ResysChina 官方帐号

大家的支持,是对我们辛苦工作的最佳褒奖,ResysChina 成员会继续努力,为大家带来更多更好的活动。谢谢大家支持!

3月6日九点,北京地质大学国际会议中心,期待各位朋友的到来!

特别鸣谢:

  • 感谢土豆网为本次会议提供视频支持。
  • 感谢淘宝网为本次会议官网提供设计支持。

推荐无处不在

洪波,知名IT评论人

超市中靠近收款台的陈列架,就是一种推荐;玩聚网的Social Rank、锐推榜,iLike的社区推荐,是一种社会化推荐;亚马逊购买A的用户还买了B和C,是基于统计的推荐;Pandora的音乐指纹和Netflix的Cinematch,是个性化推荐。
推荐本身恐怕很难成为互联网的下一个爆发点,但推荐引擎一定会跟不同的业务形态、不同的应用场景、不同的用户需求密切关联,产生大幅增值。推荐算法在未来会变得越来越重要,越来越无处不在。

颜嵘,Facebook 研究员

以 Facebook和 Twitter为代表的Web2.0信息革命,把过去单一的、以信息管理为主导的互联网,逐渐转变成为一个个性化、分享化和以人为本的新一代网络连接平台。在这个大环境下,推荐技术将会成为推动这个个性化进程不可或缺的一环。我相信在今后的10年内,推荐技术会对人类生活产生越来越重要的影响。

王守崑,豆瓣首席科学家

在 互联网领域,上一个十年,我们经历了从 web1.0 到 web2.0,从门户到社会网络的巨大转变;下一个十年,我们一定会看到这一领域更加激动人心的变化。个性化推荐从技术到产品,从系统到应用,一定会遇到 一系列非常有挑战性的问题,也一定会有各种各样充满天才的解决方案等着我们去发掘。我希望在中国也是如此。

张栋,百度科学家

释放数据的力量,专注技术的魅力,探索商业的模式,三者结合,推荐引擎大有可为。

ResysChina 发起人,谷文栋 项亮

Google 的辉煌成就,曾经让许多人一度认为,Google 时代就是互联网的终结了。而近年来以 Facebook 为代表的社会化网络成功突围,使人们明白,一切其实才刚刚开始。用户贡献内容,社会化途径传播,这让信息量极度膨胀。潘多拉魔盒已经打开,“选择”的时代 已然开启,新的十年,我相信,推荐引擎必领风骚。

 

向 Koren 先生提问

本周日即将进行的推荐系统论坛,我们成功邀请到了 Netflix Prize 冠军队成员 Yehuda Koren 先生参会,进行主题演讲。Koren 先生在推荐系统领域有着卓越成就,其在 Netflix Prize 参赛过程中公布的一系列论文与成果,对推动推荐系统领域的发展做出了重要的贡献。

国内最大的IT社区 CSDN,将于会议当天对 Koren 先生进行一次专访,特此向广大朋友征集问题。机会难得,请大家踊跃贡献给力的好问题。

豆瓣王守崑同学先抛了两块砖。
1. As the rapid growth of SNS websites worldwide, friends-recommendations have established a solid influences on users’s choices comparing to algorithms-recommendatins. Say, on media products such as books, movie, and music, people trust their friends a lot more rather than machines. What do you think about this phenomenon, and are there any evidence or measures to quantitively evaluate it?
2. People visit more often on facebook, twitter and other social platforms, and in these websites information is private, transient, and contextual, which is very hard for Google to index, ranking, and present relevant results in response to search queries. Are there any chance for recommender system to be involved and provide better performance to both search engines and social platforms?

中英文提问均可,请直接在本文后面留言提问。期待你的问题!


附,Koren 先生简介及本次 Topic 内容介绍。

Yehuda Koren is a Senior Researcher at Yahoo! Research, Haifa. Prior to this, he was a member of AT&T Labs-Research. He obtained his Ph.D. in Computer Science from The Weizmann Institute in 2003. His thesis topic was algorithms for drawing, clustering and visualizing large graphs.  He was awarded best paper award at INFOVIS 2005 for the work on directed graph layout through constrained energy minimization. More recently he won KDD 2009 best research paper award for his work on collaborative filtering with temporal dynamics. Yehuda is a member of the teams that won the grand prize and the two progress prizes in the Netflix Prize competition.

Web-Scale Recommendation Systems

Web retailers and content providers offer a huge selection of products, with unprecedented opportunities to meet a variety of special needs and tastes. This opened an opportunity for recommender systems, which provide personalized product recommendations that suit a user’s taste. The collaborative filtering approach to recommender systems predicts user preferences for products or services by learning past user-item relationships. In this talk I will survey some of the recent advances made in the field.

Successful collaborative filtering systems need to address multiple challenges. The designer needs to model the very elusive human taste appropriately, and deal with the fact that humans constantly change and redefine their preferences. Furthermore, balancing between a detailed modeling of heavy users and an adequate modeling of newcomers within a single model makes the task all the more challenging. Finally, systems often need to combine various kinds of signals, such as different kinds of feedback originating from its users together with external third-party data describing the offered items.

The methods described in the talk were central to winning the Netflix Prize competition. In addition, some of the methods are demonstrated on the Yahoo! Music service, while using one of the largest publicly available datasets, containing over 250 million ratings, more than a million users and more than half a million items. This dataset, which genuinely reflects the wisdom of a large crowd and its cumulative taste in music, will be the focus of the KDD-Cup’2011 contest, commencing on March 15, 2011.

 

2011推荐系统论坛

Google 的辉煌成就,曾经让许多人一度认为,Google 时代就是互联网的终结了。而近年来以 Facebook 为代表的社会化网络成功突围,使人们明白,一切其实才刚刚开始。用户贡献内容,社会化途径传播,这让信息量极度膨胀。潘多拉魔盒已经打开,“选择”的时代已然开启,新的十年,我相信,推荐引擎必领风骚。

“We are leaving the age of information and entering the age of recommendation” — Chris Anderson in The Long Tail。

3月,春暖花开,2011推荐系统论坛即将到来。本届大会由淘宝网与 ResysChina 联合主办,共设六个主题演讲,各个给力。尤其令人激动的是,我们成功邀请到了 Netflix Prize 冠军队成员 Yehuda Koren 先生参会,进行主题演讲,精彩不容错过!

  1. “Web-Scale Recommendation Systems”,Yehuda Koren,Senior Researcher at Yahoo! Research
  2. “淘宝数据力量”,贾超,淘宝网数据产品部技术经理
  3. “推荐系统:算法、评估、应用”,张栋,百度科学家
  4. “推荐系统在电子商务环境中的应用”,项碧波,淘宝网
  5. “Recommendation Using Large Scale Click Through Data”,王益,前Google研究员
  6. “Personalization in Hulu”,郑华,Hulu推荐团队负责人。

会议时间:3月6日全天,早九点开始,晚六点结束
会议地点:北京地质大学国际会议中心

本次大会免费参加,参会总人数将控制在 200 人左右,为了保证良好的讨论氛围,优先考虑团队报名,有意者请到此处填写报名申请。如有疑问,可以联系谷文栋(wendell.gu#gmail.com)。更多会议信息,请关注 ResysChina 官方微博,http://t.sina.com.cn/resys

特别鸣谢:本次大会由淘宝网提供经费及鼎力支持。

 

ResysChina 发起人
1. 持续关注 个性化推荐 技术;
2. 持续关注 Semantic Web 技术;
3. 评论与上两项相关的互联网业务与产品;

我相信技术的力量!
wendell.gu@GMail.com

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