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Link Prediction in Linked Data of Interspecies Interactions Using Hybrid Recommendation Approach

机译:种间交互作用关联数据中链接推荐的混合推荐方法

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Linked Open Data for ACademia (LODAC) together with National Museum of Nature and Science have started collecting linked data of interspecies interaction and making link prediction for future observations. The initial data is very sparse and disconnected, making it very difficult to predict potential missing links using only one prediction model alone. In this paper, we introduce Link Prediction in Interspecies Interaction network (LPII) to solve this problem using hybrid recommendation approach. Our prediction model is a combination of three scoring functions, and takes into account collaborative filtering, community structure, and biological classification. We have found our approach, LPII, to be more accurate than other combinations of scoring functions. Using significance testing, we confirm that these three scoring functions are significant for LPII and they play different roles depending on the conditions of linked data. This shows that LPII can be applied to deal with other real-world situations of link prediction.
机译:学术界的链接开放数据(LODAC)与国家自然科学博物馆一起已经开始收集种间相互作用的链接数据,并为将来的观测做出链接预测。初始数据非常稀疏且不连贯,因此仅使用一个预测模型就很难预测潜在的丢失链接。在本文中,我们介绍了种间交互网络(LPII)中的链接预测,以使用混合推荐方法解决此问题。我们的预测模型是三个评分功能的组合,并考虑了协同过滤,社区结构和生物学分类。我们发现我们的方法LPII比其他评分函数组合更准确。使用显着性检验,我们确认这三个评分功能对LPII十分重要,并且它们根据链接数据的条件发挥不同的作用。这表明LPII可以应用于处理链接预测的其他现实情况。

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