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Combining Case-Based and Similarity-Based Product Recommendation

机译:结合基于案例和基于相似性的产品推荐

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摘要

Product recommender systems are a popular application and research field of CBR for several years now. However, almost all CBR-based recommender systems are not case-based in the original view of CBR, but just perform a similarity-based retrieval of product descriptions. Here, a predefined similarity measure is used as a heuristic for estimating the customers' product preferences. In this paper we propose an extension of these systems, which enables case-based learning of customer preferences. Further, we show how this approach can be combined with existing approaches for learning the similarity measure directly. The presented results of a first experimental evaluation demonstrate the feasibility of our novel approach in an example test domain.
机译:产品推荐器系统是CBR的流行应用和研究领域,已有数年了。但是,几乎所有基于CBR的推荐系统在CBR的原始视图中都不基于案例,而是仅执行基于相似度的产品描述检索。在此,将预定义的相似性度量用作启发式方法,以估算客户的产品偏好。在本文中,我们提出了对这些系统的扩展,该扩展使基于案例的客户偏好学习成为可能。此外,我们展示了如何将该方法与现有方法相结合以直接学习相似性度量。首次实验评估的结果证明了我们的新方法在示例测试领域中的可行性。

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