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Predicting Links in Plant-Pollinator Interaction Networks Using Latent Factor Models with Implicit Feedback

机译:使用具有隐式反馈的潜在因子模型预测植物传路馆交互网络中的链接

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Plant-pollinator interaction networks are bipartite networks representing the mutualistic interactions between a set of plant species and a set of pollinator species. Data on these networks are collected by field biologists, who count visits from pollinators to flowers. Ecologists study the structure and function of these networks for scientific, conservation, and agricultural purposes. However, little research has been done to understand the underlying mechanisms that determine pair-wise interactions or to predict new links from networks describing the species community. This paper explores the use of latent factor models to predict interactions that will occur in new contexts (e.g. a different distribution of the set of plant species) based on an observed network. The analysis draws on algorithms and evaluation strategies developed for recommendation systems and introduces them to this new domain. The matrix factorization methods compare favorably against several baselines on a pollination dataset collected in montane meadows over several years. Incorporating both positive and negative implicit feedback into the matrix factorization methods is particularly promising.
机译:植物 - 传粉仪相互作用网络是二分网络,代表一套植物物种与一组花粉剂物种之间的互动相互作用。这些网络上的数据由现场生物学家收集,他们将授粉者视参考到鲜花。生态学家研究了这些网络的科学,保护和农业目的的结构和功能。然而,已经完成了很少的研究以了解确定配对互动或从描述物种社区的网络预测新链接的潜在机制。本文探讨了使用潜在因子模型来预测基于观察到的网络的新上下文(例如植物物种的不同分布)的相互作用。分析借鉴了推荐系统开发的算法和评估策略,并将其介绍给这个新域。矩阵分解方法比较多年来在Montane Meadows收集的授粉数据集上的几个基线比较。将正面和负隐性反馈结合到矩阵分子化方法中特别有前途。

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