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Developing recommender systems for personalized email with big data

机译:开发具有大数据的个性化电子邮件的推荐系统

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Recommender systems are nowadays widely used in e-commerce industry to boost its sale. One of the popular algorithms in recommender systems is collaborative filtering. The fundamental assumption behind this algorithm is that other users' opinions can be filtered and accumulated in such a way as to provide a plausible prediction of the target user's preference. In this paper, we would like to develop a recommender system with big data of one e-commerce company and deliver the recommendations through a personalized email. To address this problem, we propose user-based collaboration filter based on company dataset and employ several similarity functions: Euclidean distance, Cosine, Pearson correlation and Tanimoto coefficient. The experimental results show that: (i) user responses are positive to the given recommendations based on user perception survey (ii) Tanimoto coefficient with 10 neighbors shows the best performance in the RMSE, precision and recall evaluation based on groundtruth dataset.
机译:如今,推荐系统广泛用于电子商务行业,以提高其销售。推荐系统中的流行算法之一是协作滤波。这种算法背后的基本假设是可以以其他用户的意见来筛选和累积,以便提供目标用户偏好的合理预测。在本文中,我们想开发带有一家电子商务公司的大数据的推荐系统,并通过个性化电子邮件提供建议。为了解决这个问题,我们提出了基于公司数据集的基于用户的协作过滤器,并采用了多个相似性功能:欧几里德距离,余弦,Pearson相关和Tanimoto系数。实验结果表明:(i)基于用户感知调查(II)基于10个邻居的Tanimoto系数,用户响应对给定的建议是肯定的,其显示基于地面数据集的RMSE,精度和召回评估中的最佳性能。

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