FlexRecs: expressing and combining flexible recommendations

G. Koutrika, Benjamin Bercovitz, H. Garcia-Molina
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引用次数: 165

Abstract

Recommendation systems have become very popular but most recommendation methods are `hard-wired' into the system making experimentation with and implementation of new recommendation paradigms cumbersome. In this paper, we propose FlexRecs, a framework that decouples the definition of a recommendation process from its execution and supports flexible recommendations over structured data. In FlexRecs, a recommendation approach can be defined declaratively as a high-level parameterized workflow comprising traditional relational operators and new operators that generate or combine recommendations. We describe a prototype flexible recommendation engine that realizes the proposed framework and we present example workflows and experimental results that show its potential for capturing multiple, existing or novel, recommendations easily and having a flexible recommendation system that combines extensibility with reasonable performance.
FlexRecs:表达和组合灵活的建议
推荐系统已经变得非常流行,但大多数推荐方法都是“硬连接”到系统中,这使得对新推荐范例的实验和实现变得非常麻烦。在本文中,我们提出了FlexRecs,这是一个框架,它将推荐过程的定义与其执行解耦,并支持对结构化数据的灵活推荐。在FlexRecs中,推荐方法可以声明性地定义为高级参数化工作流,包括传统的关系操作符和生成或组合推荐的新操作符。我们描述了一个原型灵活的推荐引擎,实现了所提出的框架,我们给出了示例工作流程和实验结果,显示了它在轻松捕获多个现有或新推荐方面的潜力,并拥有一个灵活的推荐系统,结合了可扩展性和合理的性能。
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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