Geotag-based travel route recommendation featuring seasonal and temporal popularity

T. Yamasaki, Andrew C. Gallagher, Tsuhan Chen
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引用次数: 6

Abstract

In this paper, a geotag-based travel route recommendation algorithm that considers the seasonal and temporal popularity is presented. Travel routes are extracted from geotags attached to Flickr images. Then, landmarks/routes that become particularly popular at a specific time range in a typical season are extracted. By using the Bayes' theory, the transition probability matrix is efficiently calculated. Experiments were conducted using 21 famous sightseeing cities/places in the world. The results have shown that the recommendation accuracy can be improved by 0.9% - 10.3% on average. The proposed algorithm can also be incoorporated into the state-of-the-art algorithms, having a potential for further recommendation accuracy improvement.
基于地理标签的旅游路线推荐,具有季节性和时效性
本文提出了一种考虑季节和时间流行度的基于地理标记的旅游路线推荐算法。旅行路线是从附加在Flickr图片上的地理标签中提取出来的。然后,提取在一个典型季节的特定时间范围内特别受欢迎的地标/路线。利用贝叶斯理论,有效地计算了转移概率矩阵。实验以世界上21个著名的观光城市/地方为研究对象。结果表明,改进后的推荐准确率平均可提高0.9% ~ 10.3%。所提出的算法也可以合并到最先进的算法中,具有进一步提高推荐精度的潜力。
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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