Towards Selecting and Recommending Online Software Services by Evaluating External Attributes

Lahiru S. Gallege, R. Raje
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引用次数: 8

Abstract

Selecting an online software service for a given set of requirements can be based on the quality of results (i.e., relative ranking of the services) and associated recommendations (i.e., applicability of the suggested services). Prevalent approaches for product-based selection (e.g., the ones used by Amazon) and recommendations, such as Content-based Filtering (CBF) and Collaborative Filtering (CLF) do not typically consider information about products beyond primitive attribute-value pairs. Compared to a tangible physical product, a reusable and updatable software service cannot be effectively described using only a set of strict attribute-value pairs or using a sparse matrix of user-product relationship. This is because a software service has various programmatic, functional, and non-functional properties which potentially could also be dynamic in nature. Due to these challenges, it is not sufficient to apply product-based ranking and recommendation techniques to software services available from a marketplace. This research proposes an approach for better selection and recommendation of software services that enhances both CBF and CLF algorithms, using external reviews.
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通过评价外部属性来选择和推荐在线软件服务
为给定的一组需求选择在线软件服务可以基于结果的质量(即,服务的相对排名)和相关的建议(即,所建议服务的适用性)。基于产品的选择(例如Amazon所使用的)和推荐的流行方法,如基于内容的过滤(CBF)和协同过滤(CLF)通常不考虑原始属性值对之外的产品信息。与有形的物理产品相比,仅使用一组严格的属性值对或使用稀疏的用户-产品关系矩阵不能有效地描述可重用和可更新的软件服务。这是因为软件服务具有各种程序性、功能性和非功能性属性,这些属性在本质上也可能是动态的。由于这些挑战,将基于产品的排名和推荐技术应用于市场上可用的软件服务是不够的。本研究提出了一种使用外部评审来更好地选择和推荐软件服务的方法,该方法可以增强CBF和CLF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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