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Applying machine learning to facilitate meaningful interactions at the MIT Media Lab

机译:应用机器学习来促进麻省理工学院媒体实验室的有意义的互动

摘要

CharmMe is a social discovery application to help people connect with others of similar interests at a company, organization, or conference. Unlike traditional social networking or matching algorithms, CharmMe discovers connections automatically without the need for new profiles or tagging. By using natural language processing, we create a model of an organization by "reading" existing information related to the people being matched, such as their publications or social media accounts. Additionally, the application takes data provided by users Checking-in to conference talks or Liking projects, which are actions made popular by the social networking sites Facebook and Foursquare. To facilitate the actual introduction process, the application makes available the location of all recommended people using RFID technology. In addition, possible opening topics of conversation are suggested based on similar interests shared by users. In this paper, we investigate how effective CharmMe is at predicting new connections that are desirable and describe its deployment during a conference event at the MIT Media Lab. Additionally, we evaluate the effectiveness of the recommendations provided by the system and whether results improve with incorporating user feedback. Ultimately, we think this application will help people create better relationships by encouraging purposeful interactions, eliminating certain social inefficiencies, as well as decrease the opportunity for a missed but potentially meaningful connection.
机译:CharmMe是一种社交发现应用程序,可帮助人们在公司,组织或会议上与具有相似兴趣的其他人联系。与传统的社交网络或匹配算法不同,CharmMe无需新的配置文件或标签即可自动发现连接。通过使用自然语言处理,我们通过“读取”与匹配对象有关的现有信息(例如他们的出版物或社交媒体帐户)来创建组织模型。此外,该应用程序还接受由签到用户参加会议演讲或喜欢的项目提供的数据,这些活动是由社交网站Facebook和Foursquare流行的。为了简化实际的介绍过程,该应用程序使用RFID技术提供了所有推荐人员的位置。另外,基于用户共享的相似兴趣,建议可能的对话话题。在本文中,我们研究了CharmMe在预测所需的新连接方面的效果,并描述了在MIT媒体实验室举行的一次会议期间其部署情况。此外,我们评估了系统提供的建议的有效性以及合并用户反馈后结果是否有所改善。最终,我们认为此应用程序将通过鼓励有目的的互动,消除某些社交低效率并减少错过但可能有意义的连接的机会,来帮助人们建立更好的关系。

著录项

  • 作者

    Wang Victor J;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 入库时间 2022-08-31 16:32:02

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