Statistics based privacy-aware recommender systems make suggestions more powerful by extracting knowledge from the log of social contacts interactions, but unfortunately, they are static. Moreover, advice from local experts effective in finding specific business categories in a particular area. We propose a dynamic recommender algorithm based on a lazy random walk that recommends top-rank shopping places to potentially interested visitors. We consider local authority and topical authority. The algorithm tested on FourSquare shopping data sets of 5 cities in Indonesia with k-steps of 5,7,9 of (lazy) random walks and compared the results with other state-of-the-art ranking techniques. The results show that it can reach high score precisions (0.5, 0.37, and 0.26 respectively on precision at 1, precision at 3, and precision at 5 for k=5). The algorithm also shows scalability concerning execution time. The advantage of dynamicity is the database used to power the recommender system; no need to be very frequently updated to produce a good recommendation.
翻译:以隐私意识为基础的统计建议系统通过从社会接触互动记录中提取知识而提出更强有力的建议,但不幸的是,这些建议是静态的。此外,当地专家在寻找特定领域的特定商业类别方面提供了有效的建议。我们建议基于懒惰随机行走的动态建议算法,向潜在感兴趣的游客推荐上层购物地点。我们考虑地方权威和专题权威。在印度尼西亚五座城市的四Square购物数据集中测试的算法,以K步5,7,9步(懒散)随机行走,并将结果与其他最先进的技术进行比较。结果显示,它可以达到高分精确度(分别为0.5、0.37和0.26分,精确度分别为1、3和5分,精确度为k=5)。 算法还显示了执行时间的可缩放性。动态的优点是用来为推荐者系统提供动力的数据库;不需要经常更新来产生良好的建议。