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Deploying CommunityCommands: A Software Command Recommender System Case Study

机译:部署CommunityMands:软件命令推荐系统案例研究

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In 2009 we presented the idea of using collaborative filtering within a complex software application to help users learn new and relevant commands (Matejka et al. 2009). This project continued to evolve and we explored the design space of a contextual software command recommender system and completed a four-week user study (Li et al. 2011). We then expanded the scope of our project by implementing CommunityCommands, a fully functional and deployable recommender system. CommunityCommands was made available as a publically available plug-in download for Autodesk's flagship software application AutoCAD. During a one-year period, the recommender system was used by more than 1100 AutoCAD users. In this paper, we present our system usage data and payoff. We also provide an in-depth discussion of the challenges and design issues associated with developing and deploying the front end AutoCAD plug-in and its back end system. This includes a detailed description of the issues surrounding cold start and privacy. We also discuss how our practical system architecture was designed to leverage Autodesk's existing Customer Involvement Program (CIP) data to deliver in-product contextual recommendations to end-users. Our work sets important groundwork for the future development of recommender systems within the domain of end-user software learning assistance.
机译:2009年,我们介绍了在复杂的软件应用程序中使用协同过滤的想法,以帮助用户学习新的和相关命令(Matejka等,2009)。该项目继续发展,我们探讨了上下文软件命令推荐系统的设计空间,并完成了为期四周的用户学习(Li等人2011)。然后,我们通过实施CommunityMands,全功能和可部署的推荐系统来扩展我们项目的范围。 CommunityCommands是作为Autodesk的旗舰软件应用程序AutoCAD提供的公开可用插件下载。在一年内,推荐系统由1100多个AutoCAD用户使用。在本文中,我们提供了我们的系统使用情况数据和收益。我们还提供了对与开发和部署前端AutoCAD插件及其后端系统相关的挑战和设计问题的深入讨论。这包括对围绕冷启动和隐私的问题的详细描述。我们还讨论了我们的实际系统架构如何旨在利用Autodesk现有的客户参与计划(CIP)数据,以向最终用户提供内容上下文建议。我们的工作为终端用户软件学习辅助领域的推荐系统的未来发展提供了重要的基础。

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