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Personalized recommender systems for product-line configuration processes

机译:用于产品线配置过程的个性化推荐系统

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摘要

Product lines are designed to support the reuse of features across multiple products. Features are product functional requirements that are important to stakeholders. In this context, feature models are used to establish a reuse platform and allow the configuration of multiple products through the interactive selection of a valid combination of features. Although there are many specialized configurator tools that aim to provide configuration support, they only assure that all dependencies from selected features are automatically satisfied. However, no support is provided to help decision makers focus on likely relevant configuration options. Consequently, since decision makers are often unsure about their needs, the configuration of large feature models becomes challenging. To improve the efficiency and quality of the product configuration process, we propose a new approach that provides users with a limited set of permitted, necessary and relevant choices. To this end, we adapt six state-of-the-art recommender algorithms to the product line configuration context. We empirically demonstrate the usability of the implemented algorithms in different domain scenarios, based on two real-world datasets of configurations. The results of our evaluation show that recommender algorithms, such as CF-shrinkage, CF-significance weighting, and BRISMF, when applied in the context of product-line configuration can efficiently support decision makers in a most efficient selection of features.
机译:产品线旨在支持跨多个产品的功能复用。功能是产品功能需求,对利益相关者很重要。在这种情况下,功能部件模型用于建立重用平台,并允许通过交互选择功能部件的有效组合来配置多个产品。尽管有许多专门的配置器工具旨在提供配置支持,但它们只能确保自动满足所选功能的所有依赖性。但是,没有提供支持来帮助决策者将精力集中在可能的相关配置选项上。因此,由于决策者通常不确定他们的需求,因此大型功能模型的配置变得充满挑战。为了提高产品配置过程的效率和质量,我们提出了一种新方法,为用户提供了有限的一组允许的,必要的和相关的选择。为此,我们将六种最新的推荐程序算法应用于产品线配置环境。我们基于两个实际的配置数据集,通过经验证明了已实现算法在不同领域中的可用性。我们的评估结果表明,将推荐算法(例如CF收缩,CF重要性加权和BRISM​​F)应用于产品线配置时,可以为决策者提供最有效的功能选择。

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