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Random Walks on Human Knowledge: Incorporating Human Knowledge into Data-Driven Recommenders

机译:随机散步人类知识:将人类知识纳入数据驱动的推荐人

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We explore the use of recommender systems in business scenarios such as consultancy. In these situations, apart from personal preferences of users, knowledge about objective business-driven criteria plays a role. We investigate strategies for representing and incorporating such knowledge into data-driven recommenders. As a baseline, we choose a robust and flexible paradigm that is based on a simple graph-based representation of past customer cases and choices, in combination with biased random walks. On a real data set from a business intelligence consultancy firm, we study how the incorporation of two important types of explicit human knowledge - namely taxonomic and associative knowledge - impacts the effectiveness of a data-driven recommender. Our results show no consistent improvement for taxonomic knowledge, but quite substantial and significant gains when using associative knowledge.
机译:我们探索在咨询等业务场景中使用推荐系统。在这些情况下,除了个人偏好用户的偏好之外,关于客观业务驱动标准的知识发挥了作用。我们调查了代表和将这些知识纳入数据驱动的推荐人的策略。作为基线,我们选择一个强大而灵活的范式,该范式基于过去的客户案例和选择的简单图形表示,结合偏见随机散步。在商业智能咨询公司的真实数据上,我们研究了纳入两种重要类型的明确人类知识 - 即分类和联想知识 - 影响数据驱动推荐的有效性。我们的结果表明,在使用联想知识时,对分类学知识没有一致的改进,但在使用联想知识时非常大幅增加。

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