利用关联开放数据的基于语义的基于图的推荐系统

C. Musto, P. Lops, Pierpaolo Basile, M. Degemmis, G. Semeraro
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引用次数: 44

摘要

对语义技术日益增长的兴趣和一些开放知识来源的可用性推动了推荐系统领域的最新进展。在本文中,我们为推荐系统提供了来自链接开放数据(LOD)云的特征——大量机器可读的知识编码为RDF语句——目的是提高推荐系统的效率。为了利用RDF数据自然的基于图的结构,我们研究了来自LOD云的知识对基于图的推荐算法的整体性能的影响。更详细地说,我们研究了基于lod的特征的集成是否提高了算法的有效性,以及不同特征选择技术的选择在多大程度上影响了算法在准确性和多样性方面的性能。在两个最先进的数据集上的实验评估表明,特征选择技术与算法最大化特定评估指标的能力之间存在明显的相关性。此外,利用基于lod的特征的基于图的算法能够克服几个最先进的基线,如协同过滤和矩阵分解,从而证实了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantics-aware Graph-based Recommender Systems Exploiting Linked Open Data
The ever increasing interest in semantic technologies and the availability of several open knowledge sources have fueled recent progress in the field of recommender systems. In this paper we feed recommender systems with features coming from the Linked Open Data (LOD) cloud - a huge amount of machine-readable knowledge encoded as RDF statements - with the aim of improving recommender systems effectiveness. In order to exploit the natural graph-based structure of RDF data, we study the impact of the knowledge coming from the LOD cloud on the overall performance of a graph-based recommendation algorithm. In more detail, we investigate whether the integration of LOD-based features improves the effectiveness of the algorithm and to what extent the choice of different feature selection techniques influences its performance in terms of accuracy and diversity. The experimental evaluation on two state of the art datasets shows a clear correlation between the feature selection technique and the ability of the algorithm to maximize a specific evaluation metric. Moreover, the graph-based algorithm leveraging LOD-based features is able to overcome several state of the art baselines, such as collaborative filtering and matrix factorization, thus confirming the effectiveness of the proposed approach.
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