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Mining Web Log Data for Personalized Recommendation System

机译:为个性化推荐系统挖掘Web日志数据

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Increase in number of internet users in Indonesia boosts the development of e-commerce platform. Whereas potential access to a larger and more diverse customer base is generally viewed as an opportunity, it can also represent increase in competition among e-commerce platforms. Hence, e-commerce needs to develop sophisticated strategies to attract and retain customers, one of which is done through personalization in web services. Recommendation system, one form of web service personalization in e-commerce platform, predicts user preferences and helps them find products that they may be interested in by implementing web mining techniques. This empirical research investigated user web log data which illustrate behavior and implicit preferences of customers in one of e-commerce in Indonesia to predict user preferred product category in their future request. In this study, model-based recommendation system was built based on users' activity in a session and site type using C5.0 algorithm of decision tree technique. Top N recommendations were given based on probability-based ranking of categories resulted from probability estimation of the decision tree.
机译:印度尼西亚互联网用户数量的增长促进了电子商务平台的发展。通常将潜在的机会吸引到更大和更多样化的客户群是一个机会,但这也可能表示电子商务平台之间竞争的加剧。因此,电子商务需要制定复杂的策略来吸引和留住客户,其中一项是通过Web服务中的个性化来完成的。推荐系统是电子商务平台中Web服务个性化的一种形式,它可以预测用户的喜好并通过实施Web挖掘技术来帮助他们找到他们可能感兴趣的产品。这项实证研究调查了用户网络日志数据,这些数据说明了印度尼西亚某电子商务中客户的行为和内隐偏好,从而预测了他们未来的需求中用户偏爱的产品类别。在这项研究中,基于模型的推荐系统是基于用户在会话中的活动和站点类型,使用决策树技术的C5.0算法构建的。根据决策树的概率估计结果得出的基于概率的类别排名,给出了前N条建议。

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