A simplified method for improving the performance of product recommendation with sparse data

Li-Hua Li, F. Lee, Bo-Liang Chen, Shin-Fu Chen
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引用次数: 3

Abstract

As the development and population of Electronic Commerce (EC) keeps growing, the sheer volume of data makes the EC more challenge to handle. For example, if the number of products keeps increasing, a regular user-item transaction records may get bigger and bigger which will usually form the sparse matrix. When the data sparsity is formed, the performance of data analysis should be aware. In order to promote the product under hundreds or thousands of items, recommender systems have been intensively studied and are highly applied in the EC environment. One of the most popular recommendation methods is the collaborative filtering (CF) method in which a group of user/customer with similar preference is chosen for the reference of recommendation. It is interesting to notice that the past researches usually didn't consider the sparsity problem when applying the CF recommendation. As a result, the time performance of CF recommendation is, therefore, constrained. To overcome this problem, this research proposes a Simplified Similarity Measure (SSM) for CF recommendation when dealing with the sparsity problem. The proposed SSM method uses the real data from Epinion.com for experiment and for comparison. The results show that SSM method is outperformed the traditional CF methods in terms of time efficiency and recommendation precision.
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一种改进稀疏数据下产品推荐性能的简化方法
随着电子商务的发展和人口的不断增长,庞大的数据量给电子商务的处理带来了更多的挑战。例如,如果产品数量不断增加,则常规的用户-物品交易记录可能会越来越大,这通常会形成稀疏矩阵。当数据稀疏性形成后,就应该意识到数据分析的性能。为了在数百或数千个项目下推广产品,推荐系统得到了深入的研究,并在电子商务环境中得到了广泛的应用。其中最流行的推荐方法之一是协同过滤(CF)方法,该方法选择一组具有相似偏好的用户/客户作为推荐的参考。值得注意的是,以往的研究在应用CF推荐时通常没有考虑稀疏性问题。因此,CF推荐的时间性能受到约束。为了克服这一问题,本研究在处理稀疏性问题时,提出了一种简化相似度度量(SSM)用于CF推荐。所提出的SSM方法利用Epinion.com的真实数据进行实验和比较。结果表明,SSM方法在时间效率和推荐精度方面都优于传统的CF方法。
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