基于浏览模式的用户服务推荐相关度排序

Suresh Kumar Gudla, Joy Bose, Venugopal Gajam, S. Srinivasa
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引用次数: 4

摘要

有许多入站web服务,它们向用户推荐内容。然而,这些服务没有办法根据用户的兴趣来优先推荐。在这里,我们对生成新的推荐不感兴趣,而是对现有的推荐进行组织和排序,以提高点击率。由于用户有不同的浏览模式,而且经常变化,因此最好有一个基于单个用户当前浏览模式来优先考虑推荐的系统。在本文中,我们提出了这样一个系统。我们首先使用用户浏览历史记录中的url生成文章主题的聚类,然后使用该聚类生成基于熵的推荐服务的相关性分数。然后将相关性分数馈送给服务提供商,服务提供商使用这些分数根据相关性分数对推荐进行排序,从而确定推荐的优先级。我们使用10个用户的浏览历史来测试模型,并通过计算生成的相关性分数与用户手动提供的主题偏好之间的相关性来验证模型。我们进一步使用协同过滤对我们的排名系统的有用性进行基准测试。
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Relevancy Ranking of User Recommendations of Services Based on Browsing Patterns
There are a number of inbound web services, which recommend content to users. However, there is no way for such services to prioritize their recommendations as per the users' interests. Here we are not interested in generating new recommendations, but rather organizing and prioritizing existing recommendations in order to increase the click rate. Since users have different patterns of browsing that also change frequently, it is good to have a system that prioritizes recommendations based on the current browsing patterns of individual users. In this paper we present such a system. We first generate the clusters of article topics using URLs from the users' browsing history, which is then used to generate the relevancy scores of the recommendation services based on entropy. The relevancy scores are then fed to the service providers, which use them to prioritize their recommendations by ranking them based on the relevancy scores. We test the model using the browsing history for 10 users, and validate the model by calculating the correlation of the generated relevancy scores with the users' manually provided topic preferences. We further use collaborative filtering to benchmark the usefulness of our ranking systems.
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