A Network-Based Recommendation Algorithm

Xiangguang Dai, Yingji Cui, Zheng Chen, Yi Yang
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引用次数: 1

Abstract

As Internet expanding into offline, the traditional retail industry began to use the personalized recommendation algorithm to increase user stickiness, conversion and business income. Without considering the data segmentation problem, traditional recommendation algorithm did not perform well in the traditional business data. Accordingly, we considered the interest spread characteristic of retail industry behavior, adopted the method of complex network to construct a personalized recommendation algorithm using the segmentation data set. By using a real sales dataset of a large supermarket, we provided an evaluation of our algorithm. The results show that our algorithm have much better performance in accuracy and recall than the traditional ones, but with the disadvantage of being less coverage.
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基于网络的推荐算法
随着互联网向线下扩张,传统零售行业开始使用个性化推荐算法来增加用户粘性、转化率和业务收入。传统的推荐算法在没有考虑数据分割问题的情况下,在传统的商业数据中表现不佳。据此,我们考虑零售行业行为的兴趣扩散特征,采用复杂网络的方法,利用分割数据集构建个性化推荐算法。通过使用一个大型超市的真实销售数据集,我们对我们的算法进行了评估。结果表明,该算法在准确率和查全率方面均优于传统算法,但存在覆盖范围小的缺点。
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