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Exploiting Answer Set Programming for Building explainable Recommendations

机译:利用答案设置编程,用于建立可解释的建议

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The capability of a recommendation system to justify its proposals becomes an ever more important aspect in light of recent legislation and skeptic users. Answer Set Programming (ASP) is a logic programming paradigm aiming at expressing complex problems in a succinct and declarative manner. Due to its rich set of high level language constructs it turns out that ASP is also perfectly suitable for realizing knowledge and/or utility-based recommendation applications, since every aspect of such a utility-based recommendation capable of producing explanations can be specified within ASP. In this paper we give an introduction to the concepts of ASP and how they can be applied in the domain of recommender systems. Based on a small excerpt of a real life recommender database we exemplify how utility based recommendation engines can be implemented with just some few lines of code and show how meaningful explanations can be derived out of the box.
机译:建议制度的能力使其提案是依赖其提案成为近期立法和怀疑用户的更重要的方面。答案设置编程(ASP)是一个逻辑编程范例,旨在以简洁和声明方式表达复杂问题。由于其丰富的高级语言构造,证明ASP也完全适合于实现知识和/或基于实用的推荐应用,因为能够在ASP中指定这种基于实用的基于实用程序的推荐方面的每个方面。在本文中,我们介绍了ASP的概念以及如何在推荐系统的域中应用它们。基于真实生活推荐数据库的小型摘录,我们示出了基于公用事业的推荐引擎如何使用一些代码中的一些代码来实现,并显示出可以从框中派生的有意义解释。

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