Link prediction is a fundamental challenge in network science. Among various methods, local similarity indices are widely used for their high cost-performance. However, the performance is less robust: for some networks local indices are highly competitive to state-of-the-art algorithms while for some other networks they are very poor. Inspired by techniques developed for recommender systems, we propose an enhancement framework for local indices based on collaborative filtering (CF). Considering the delicate but important difference between personalized recommendation and link prediction, we further propose an improved framework named as self-included collaborative filtering (SCF). The SCF framework significantly improved the accuracy and robustness of well-known local indices. The combination of SCF framework and a simple local index can produce an index with competitive performance and much lower complexity compared with elaborately-designed state-of-the-art algorithms.
翻译:联系预测是网络科学的一项根本挑战。在各种方法中,地方相似指数被广泛用于高成本绩效,但业绩不那么强劲:一些网络的当地指数对最先进的算法具有很高的竞争力,而其他一些网络则非常差。在为推荐者系统开发的技术的启发下,我们提议了一个基于合作过滤(CF)的地方指数强化框架。考虑到个性化建议和链接预测之间的微妙但重要的区别,我们进一步提议了一个更完善的框架,称为自我参与的协作过滤(SCF)。SCF框架大大提高了众所周知的地方指数的准确性和稳健性。SCF框架和简单的地方指数的结合可以产生一种具有竞争力的指数,与精心设计的最新算法相比,其复杂性要低得多。