基于顺序模式挖掘的用户偏好识别和使用地理标记数据的产品推荐

R. Kanmani, V. Uma
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引用次数: 0

摘要

推荐系统从用户的偏好中提取出他们感兴趣的材料,为用户提供推荐。为了简化信息检索,为用户提供更准确的首选结果,推荐系统应运而生。基于推荐的服务也用于社交网络,如Facebook、Twitter、Instagram等。地理标记数据在推荐系统中扮演着重要的角色,因为它们将根据用户的位置提供推荐。使用支持向量机对位置进行语义分类。通过考虑位置坐标,谷歌地图识别出最近的可能旅行路线,并使用k近邻计算出较短的距离。在这项工作中,通过使用前缀跨度算法考虑用户的频繁购买模式,通过协同过滤计算相似用户评分以及旅行路线上可用的热门商品来给出产品推荐。建议的系统已经实施和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification Of User Preference by Sequential Pattern Mining and Recommendation of Products using Geo-tagged data
Recommendation System provides the user with the interesting materials which are extracted from their preference. For simplifying the information retrieval and in order to provide the user with preferred result with more accuracy, recommendation system is being used. Recommendation based services are also used in social networks such as Facebook, Twitter, Instagram etc. Geo-tagged data plays a major role in case of recommendation systems as they will be providing recommendations with respect to the users locations. The semantic classification of the location is done using Support Vector Machine. By considering the location co-ordinates the nearest possible travel routes are identified by Google Maps and the shorter distance are computed using k-Nearest Neighbour. In this work, recommendation of products is given by means of considering the frequent buying pattern of the user using Prefix span algorithm, similar users ratings computed by Collaborative Filtering and the popular items available on the travel route. The proposed system has been implemented and evaluated.
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