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Quantifying learning in biotracer studies

机译:在生物游客研究中量化学习

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Mixing models have become requisite tools for analyzing biotracer data, most commonly stable isotope ratios, to infer dietary contributions of multiple sources to a consumer. However, Bayesian mixing models will always return a result that defaults to their priors if the data poorly resolve the source contributions, and thus, their interpretation requires caution. We describe an application of information theory to quantify how much has been learned about a consumer’s diet from new biotracer data. We apply the approach to two example data sets. We find that variation in the isotope ratios of sources limits the precision of estimates for the consumer’s diet, even with a large number of consumer samples. Thus, the approach which we describe is a type of power analysis that uses a priori simulations to find an optimal sample size. Biotracer data are fundamentally limited in their ability to discriminate consumer diets. We suggest that other types of data, such as gut content analysis, must be used as prior information in model fitting, to improve model learning about the consumer’s diet. Information theory may also be used to identify optimal sampling protocols in situations where sampling of consumers is limited due to expense or ethical concerns.
机译:混合模型已成为分析生物游客数据,最常见稳定的同位素比率的必要工具,以推断多种来源对消费者的饮食贡献。然而,如果数据解决源贡献差,因此,贝叶斯混合模型将始终返回默认为其前沿的结果,因此,他们的解释需要谨慎。我们描述了信息理论的应用,以量化来自新的生物游客数据的消费者饮食的知识。我们将方法应用于两个示例数据集。我们发现,即使有大量消费样本,我们都会限制各等位剧比的变化限制了消费者饮食的估计的精确度。因此,我们描述的方法是一种功率分析,它使用先验模拟来查找最佳样本大小。生物游客数据在歧视消费者饮食的能力方面是基本上有限的。我们建议其他类型的数据,例如肠道内容分析,必须用作模型配件中的先前信息,以改善消费者饮食的模型学习。信息理论还可用于识别在消费者采样的情况下识别最佳采样协议,因为费用或道德问题受到限制。

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