A feature-based personalized recommender system for product-line configuration

Juliana Alves Pereira, Pawel Matuszyk, S. Krieter, M. Spiliopoulou, G. Saake
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引用次数: 40

Abstract

Today’s competitive marketplace requires the industry to understand unique and particular needs of their customers. Product line practices enable companies to create individual products for every customer by providing an interdependent set of features. Users configure personalized products by consecutively selecting desired features based on their individual needs. However, as most features are interdependent, users must understand the impact of their gradual selections in order to make valid decisions. Thus, especially when dealing with large feature models, specialized assistance is needed to guide the users in configuring their product. Recently, recommender systems have proved to be an appropriate mean to assist users in finding information and making decisions. In this paper, we propose an advanced feature recommender system that provides personalized recommendations to users. In detail, we offer four main contributions: (i) We provide a recommender system that suggests relevant features to ease the decision-making process. (ii) Based on this system, we provide visual support to users that guides them through the decision-making process and allows them to focus on valid and relevant parts of the configuration space. (iii) We provide an interactive open-source configurator tool encompassing all those features. (iv) In order to demonstrate the performance of our approach, we compare three different recommender algorithms in two real case studies derived from business experience.
基于功能的个性化推荐系统,用于产品线配置
当今竞争激烈的市场要求行业了解其客户的独特和特殊需求。产品线实践使公司能够通过提供一组相互依赖的特性来为每个客户创建单独的产品。用户可以根据个人需求连续选择所需功能来配置个性化产品。然而,由于大多数功能是相互依赖的,用户必须了解他们逐渐选择的影响,以便做出有效的决策。因此,特别是在处理大型特征模型时,需要专门的帮助来指导用户配置他们的产品。最近,推荐系统被证明是帮助用户查找信息和做出决策的适当手段。在本文中,我们提出了一个高级的特征推荐系统,为用户提供个性化的推荐。具体来说,我们提供了四个主要贡献:(i)我们提供了一个推荐系统,建议相关功能以简化决策过程。(ii)基于该系统,我们为用户提供可视化支持,引导他们完成决策过程,并允许他们专注于配置空间中有效和相关的部分。(iii)我们提供了一个包含所有这些功能的交互式开源配置工具。(iv)为了证明我们的方法的性能,我们在两个来自商业经验的真实案例研究中比较了三种不同的推荐算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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