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A RELATIONAL RANKING METHOD WITH GENERALIZATION ANALYSIS

机译:广义分析的关系排序方法

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摘要

Recently, learning to rank, which aims at constructing a model for ranking objects, is one of the hot research topics in information retrieval and machine learning communities. Most of existing learning to rank approaches are based on the assumption that each object is independently and identically distributed. Although this assumption simplifies ranking problems, the implicit interconnections between objects are ignored. In this paper, a graph based ranking framework is proposed, which takes advantage of implicit correlations between objects. Furthermore, the derived relational ranking algorithm from this framework, called GRSVM, is developed based on the conventional algorithm Rank-SVM-primal. In addition, generalization properties of different relational ranking algorithms are analyzed using Rademacher Average. Based on the analysis, we find that GRSVM can achieve tighter generalization bound than existing relational ranking algorithms in most cases. Finally, a comparison of experimental results produced by improved and conventional algorithms shows the superior performance of the former.
机译:近来,旨在建立对象排名模型的学习排名是信息检索和机器学习社区中的热门研究主题之一。现有的大多数学习排名方法都基于以下假设:每个对象都是独立且相同分布的。尽管此假设简化了排序问题,但对象之间的隐式互连被忽略。本文提出了一种基于图的排序框架,该框架利用了对象之间的隐式关联。此外,基于常规算法Rank-SVM-primal开发了从该框架派生的关系排名算法GRSVM。另外,使用Rademacher Average分析了不同关系排名算法的泛化属性。基于分析,我们发现在大多数情况下,GRSVM可以比现有的关系排名算法实现更严格的泛化约束。最后,通过改进算法和常规算法产生的实验结果的比较显示了前者的优越性能。

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