MyrrorBot: A Digital Assistant Based on Holistic User Models for Personalized Access to Online Services

C. Musto, F. Narducci, Marco Polignano, M. Degemmis, P. Lops, G. Semeraro
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引用次数: 8

Abstract

In this article, we present MyrrorBot, a personal digital assistant implementing a natural language interface that allows the users to: (i) access online services, such as music, video, news, andfood recommendations, in a personalized way, by exploiting a strategy for implicit user modeling called holistic user profiling; (ii) query their own user models, to inspect the features encoded in their profiles and to increase their awareness of the personalization process. Basically, the system allows the users to formulate natural language requests related to their information needs. Such needs are roughly classified in two groups: quantified self-related needs (e.g., Did I sleep enough? Am I extrovert?) and personalized access to online services (e.g., Play a song I like). The intent recognition strategy implemented in the platform automatically identifies the intent expressed by the user and forwards the request to specific services and modules that generate an appropriate answer that fulfills the query. In the experimental evaluation, we evaluated both qualitative (users’ acceptance of the system, usability) as well as quantitative (time required to complete basic tasks, effectiveness of the personalization strategy) aspects of the system, and the results showed that MyrrorBot can improve the way people access online services and applications. This leads to a more effective interaction and paves the way for further development of our system.
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MyrrorBot:一个基于整体用户模型的数字助理,用于个性化访问在线服务
在本文中,我们介绍了MyrrorBot,一个实现自然语言界面的个人数字助理,允许用户:(i)通过利用一种称为整体用户分析的隐式用户建模策略,以个性化的方式访问在线服务,如音乐、视频、新闻和食物推荐;(ii)查询他们自己的用户模型,检查他们的配置文件中编码的特征,并提高他们对个性化过程的认识。基本上,该系统允许用户制定与他们的信息需求相关的自然语言请求。这些需求大致分为两类:量化的自我相关需求(例如,我睡得够吗?我性格外向吗?)以及个性化的在线服务(例如,播放我喜欢的歌曲)。平台中实现的意图识别策略自动识别用户表达的意图,并将请求转发给特定的服务和模块,这些服务和模块生成满足查询的适当答案。在实验评估中,我们对系统的定性(用户对系统的接受程度、可用性)和定量(完成基本任务所需的时间、个性化策略的有效性)两方面进行了评估,结果表明,MyrrorBot可以改善人们访问在线服务和应用程序的方式。这将导致更有效的互动,并为我们系统的进一步发展铺平道路。
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