基于点击流的电子商务协同过滤推荐模型

Dong-Ho Kim, Il Im, V. Atluri
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引用次数: 4

摘要

近年来,基于点击流的协同过滤(CCF)推荐模型因其可扩展性而备受关注。常见的CCF推荐模型有马尔可夫模型、顺序关联规则、关联规则和聚类。模型显示了准确率和召回率在性能上的权衡关系。为了解决权衡关系,一些研究将两种或两种以上不同的模型结合起来,或采用多阶模型。这些模型对推荐有效性的提高也最多是边际的。为了提高召回率,同时最小化精度损失,从而提高F值衡量的整体性能,我们通过以学习过程确定的顺序串联应用单个模型来构建顺序应用模型(SAM)。我们使用Web使用数据在各个模型上评估了SAM,结果很有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A clickstream-based collaborative filtering recommendation model for e-commerce
In recent years, clickstream-based collaborative filtering (CCF) recommendation models have received much attention mainly due to their scalability. The common CCF recommendation models are Markov models, sequential association rules, association rules, and clustering. The models have shown the trade-off relationship between precision and recall in performance. To address the trade-off relationship, some study has combined two or more different models or applied multi-order models. The increase of recommendation effectiveness by these models is also at best marginal. To increase recall while minimizing the loss of precision and therefore to increase overall performance measured by the F value, we build a sequentially applied model (SAM) by applying the individual models in tandem in an order determined through a learning process. We evaluated SAM over the individual models with Web usage data, and the result is promising.
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