Recommending personalized touristic sights using google places

Maya Sappelli, S. Verberne, Wessel Kraaij
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引用次数: 13

Abstract

The purpose of the Contextual Suggestion track, an evaluation task at the TREC 2012 conference, is to suggest personalized tourist activities to an individual, given a certain location and time. In our content-based approach, we collected initial recommendations using the location context as search query in Google Places. We first ranked the recommendations based on their textual similarity to the user profiles. In order to improve the ranking of popular sights, we combined the initial ranking with rankings based on Google Search, popularity and categories. Finally, we performed filtering based on the temporal context. Overall, our system performed well above average and median, and outperformed the baseline - Google Places only -- run.
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使用谷歌位置推荐个性化的旅游景点
作为TREC 2012会议的一项评估任务,“情境建议”的目的是在给定的地点和时间内向个人建议个性化的旅游活动。在我们基于内容的方法中,我们使用位置上下文作为Google Places中的搜索查询来收集初始推荐。我们首先根据与用户资料的文本相似性对推荐进行排名。为了提高热门景点的排名,我们将最初的排名与基于谷歌搜索、受欢迎程度和类别的排名结合起来。最后,我们基于时间上下文执行过滤。总体而言,我们的系统的表现远远高于平均水平和中位数,并且优于基准(仅限Google Places)。
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