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Linear filtering reveals false negatives in species interaction data

机译:线性过滤揭示物种相互作用数据中的假阴性

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摘要

Species interaction datasets, often represented as sparse matrices, are usually collected through observation studies targeted at identifying species interactions. Due to the extensive required sampling effort, species interaction datasets usually contain many false negatives, often leading to bias in derived descriptors. We show that a simple linear filter can be used to detect false negatives by scoring interactions based on the structure of the interaction matrices. On 180 different datasets of various sizes, sparsities and ecological interaction types, we found that on average in about 75% of the cases, a false negative interaction got a higher score than a true negative interaction. Furthermore, we show that this filter is very robust, even when the interaction matrix contains a very large number of false negatives. Our results demonstrate that unobserved interactions can be detected in species interaction datasets, even without resorting to information about the species involved.
机译:物种相互作用数据集通常表示为稀疏矩阵,通常是通过旨在识别物种相互作用的观察研究来收集的。由于需要大量的采样工作,物种相互作用数据集通常包含许多假阴性,经常导致派生描述符的偏差。我们展示了一个简单的线性滤波器可用于通过基于交互矩阵的结构对交互进行评分来检测假阴性。在180个不同大小,稀疏度和生态相互作用类型的不同数据集上,我们发现平均约75%的案例中,假阴性互动比真正的阴性互动得分更高。此外,我们证明了即使在交互矩阵包含大量假阴性的情况下,该过滤器也非常强大。我们的结果表明,即使没有诉诸有关物种的信息,也可以在物种相互作用数据集中检测到未观察到的相互作用。

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