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Opinions matter: a general approach to user profile modeling for contextual suggestion

机译:意见很重要:用于上下文建议的用户个人资料建模的一般方法

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摘要

The increasing use of mobile devices enables an information retrieval (IR) system to capitalize on various types of contexts (e.g., temporal and geographical information) about its users. Combined with the user preference history recorded in the system, a better understanding of users' information need can be achieved and it thus leads to improved user satisfaction. More importantly, such a system could proactively recommend suggestions based on the contexts. User profiling is essential in contextual suggestion. However, given most users' observed behaviors are sparse and their preferences are latent in an IR system, constructing accurate user profiles is generally difficult. In this paper, we focus on location-based contextual suggestion and propose to leverage users' opinions to construct the profiles. Instead of simply recording "what places a user likes or dislikes" in the past (i.e., description-based profile), we want to construct a profile to identify "why a user likes or dislikes a place" so as to better predict whether the user would like a new candidate suggestion of place. By assuming users would like or dislike a place with similar reasons, we construct the opinion-based user profile in a collaborative way: opinions from the other users are leveraged to estimate a profile for the target user. Candidate suggestions are represented in the same fashion and ranked based on their similarities with respect to the user profiles. Moreover, we also develop a novel summary generation method that utilizes the opinion-based user profiles to generate personalized and high-quality summaries for the suggestions. Experiments are conducted over three standard TREC contextual suggestion collections and a Yelp data set. Extensive experiment comparisons confirm that the proposed opinion-based user modeling outperforms the existing description-based methods. In particular, the systems developed based on the proposed methods have been ranked as top 1 in both TREC 2013 and 2014 contextual suggestion tracks.
机译:移动设备的越来越多的使用使信息检索(IR)系统能够利用有关其用户的各种类型的上下文(例如,时间和地理信息)。结合系统中记录的用户偏好历史记录,可以更好地了解用户的信息需求,从而提高用户满意度。更重要的是,这样的系统可以根据上下文主动推荐建议。用户概要分析对于上下文建议至关重要。但是,鉴于大多数用户在IR系统中观察到的行为都很稀少且他们的偏好很隐蔽,因此通常很难构建准确的用户配置文件。在本文中,我们专注于基于位置的上下文建议,并建议利用用户的意见来构建配置文件。与其简单地记录过去“用户喜欢或不喜欢的地方”(即基于描述的个人资料),我们不如构建一个个人资料来识别“用户为什么喜欢或不喜欢某个地方”,以便更好地预测用户想要一个新的候选地点建议。通过假设用户出于相似原因喜欢或不喜欢某个地方,我们以协作的方式构建了基于意见的用户个人资料:利用来自其他用户的意见来估计目标用户的个人资料。候选建议以相同的方式表示,并根据它们相对于用户个人资料的相似性进行排名。此外,我们还开发了一种新颖的摘要生成方法,该方法利用基于意见的用户个人资料来生成建议的个性化和高质量摘要。实验是在三个标准TREC上下文建议集合和Yelp数据集上进行的。广泛的实验比较证实,所提出的基于意见的用户建模优于现有的基于描述的方法。特别是,基于建议方法开发的系统在TREC 2013和2014上下文建议跟踪中均排名第一。

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