Trip similarity computation for context-aware travel recommendation exploiting geotagged photos

Zhenxing Xu
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引用次数: 3

Abstract

The popularity of GPS-enabled digital cameras, smart phones, and photo sharing web sites, e.g. Flickr and Panoramio, has led to huge volumes of community-contributed geotagged photos (CCGPs) available on the Internet, which could be regarded as digital footprints of photo takers. In this paper, we propose a method to make context-aware and trip similarity based travel recommendations by mining CCGPs. We obtain user-specific travel preferences from the travel history of user in one city, and use these to recommend tourist locations in another city. The season and weather context are considered during the mining and the recommendation processes. The similarity of users is computed by the modified longest common subsequence and a user-location graph is built from their travel histories in one city, which is then exploited to make travel recommendations. Our method is evaluated on a Flickr dataset, which contains photos taken in four cities of China. Experimental results show the effectiveness of the proposed method.
基于地理标记照片的情境感知旅行推荐的旅行相似性计算
随着具有gps功能的数码相机、智能手机和照片分享网站(如Flickr和Panoramio)的普及,互联网上出现了大量社区贡献的地理标记照片(CCGPs),这些照片可以被视为拍照者的数字足迹。在本文中,我们提出了一种基于CCGPs挖掘的基于上下文感知和旅行相似性的旅行推荐方法。我们从用户在一个城市的旅行历史中获得用户特定的旅行偏好,并使用这些偏好来推荐另一个城市的旅游地点。在挖掘和推荐过程中考虑了季节和天气背景。通过改进的最长公共子序列计算用户的相似度,并根据用户在一个城市的旅行历史构建用户位置图,然后利用该图进行旅行推荐。我们的方法在Flickr数据集上进行了评估,该数据集包含在中国四个城市拍摄的照片。实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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