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Cross-Domain Scientific Collaborations Prediction with Citation Information

机译:带有引文信息的跨域科学合作预测

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Cross-domain Scientific Collaborations have promoted rapid development of science and generated many innovative breakthroughs. However, predicting cross-domain scientific collaboration problem is rarely studied and collaboration recommendation methods within single domain cannot be directly utilized for solving cross-domain problems. In this paper, we propose a Hybrid Graph Model, which combines both explicit co-author relationships and implicit co-citation relationships together to construct a hybrid graph and then Random Walks with Restarts concept is used to measure and rank relatedness. The experiments with large publication data set show that Hybrid Graph Model outperforms some baseline approaches on several recommendation metrics. Citation information has been demonstrated to be very helpful for scientific collaboration recommendations as well.
机译:跨领域的科学合作促进了科学的快速发展,并产生了许多创新性的突破。但是,很少研究预测跨域科学协作问题,并且不能直接利用单个域内的协作推荐方法来解决跨域问题。在本文中,我们提出了一种混合图模型,该模型将显式的共同作者关系和隐式的共同引文关系结合在一起,以构建一个混合图,然后使用带有重新启动概念的随机游走来衡量和排序相关性。具有大量出版物数据集的实验表明,“混合图模型”在某些推荐指标上的性能优于某些基线方法。引用信息已被证明对科学合作建议也非常有帮助。

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