时间特征向量的自动生成及其在旅游推荐系统中的应用

Guan-Shen Fang, S. Kamei, S. Fujita
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引用次数: 5

摘要

推荐系统在我们的日常生活中得到了广泛的应用,它可以向用户推荐符合用户偏好的对象。本文针对具有时变特征的对象,如具有季节性菜肴的餐厅和具有季节性吸引力的兴趣点(poi),提出了一种自动生成这些对象的时变特征向量的方法。该方法的基本思想是:1)通过维基百科识别与对象相关的词汇;2)通过Twitter识别所有对象的趋势;3)突出显示每个识别趋势中包含的词的权重,以获得每个对象的时间特征向量。我们建立了一个旅游推荐系统来评估所提出方法的有效性。实验结果表明:1)时间特征向量的方差服从高斯分布;2)这些特征向量一定程度上反映了指定时间段内poi的相似性;3)特征向量的这一性质可以有效地用于poi的季节性推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Generation of Temporal Feature Vectors with Application to Tourism Recommender Systems
Recommender systems have been widely used in our daily life to recommend objects to users meeting the users' preference. In this paper, we focus on objects with temporally variable features such as restaurant with seasonal dishes and point-of-interests (POIs) to have seasonal attractions, and propose a method to automatically generate temporal feature vectors for those objects. The basic idea of the proposed method is: 1) to identify the vocabulary concerned with objects through Wikipedia; 2) to identify the trend over all objects through Twitter; and 3) to highlight the weight of words contained in each identified trend to obtain temporal feature vectors for each object. We built a tourism recommender system to evaluate the effectiveness of the proposed method. The result of experiments indicates that: 1) the variance of temporal feature vectors follows the Gaussian distribution, 2) those vectors certainly reflect the similarity of POIs for a designated time period, and 3) such a property of feature vectors can be effectively used for the seasonal recommendation of POIs.
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