We propose an extension of the N-mixture model which allows for the estimation of both abundances of multiple species simultaneously and their inter-species correlations. We also propose further extensions to this multi-species N-mixture model, one of which permits us to examine data which has an excess of zero counts, and another which allows us to relax the assumption of closure inherent in N-mixture models through the incorporation of an AR term in the abundance. The inclusion of a multivariate normal distribution as prior on the random effect in the abundance facilitates the estimation of a matrix of interspecies correlations. Each model is also fitted to avian point data collected as part of the NABBS 2010-2019. Results of simulation studies reveal that these models produce accurate estimates of abundance, inter-species correlations and detection probabilities at both small and large sample sizes, in scenarios with small, large and no zero inflation. Results of model-fitting to the North American Breeding Bird Survey data reveal an increase in Bald Eagle population size in southeastern Alaska in the decade examined.Our novel multi-species N-mixture model accounts for full communities, allowing us to examine abundances of every species present in a study area and, as these species do not exist in a vacuum, allowing us to estimate correlations between species' abundances.While previous multi-species abundance models have allowed for the estimation of abundance and detection probability, ours is the first to address the estimation of both positive and negative inter-species correlations, which allows us to begin to make inferences as to the effect that these species' abundances have on one another. Our modelling approach provides a method of quantifying the strength of association between species' population sizes, and is of practical use to population and conservation ecologists.
翻译:我们提议扩展N混合模型, 以便同时估算多种物种的丰度及其物种间相互关系。 我们还提议进一步扩展这种多物种N混合模型, 其中一种模型允许我们检查数量超过零计的数据, 另一种模型允许我们放松N混合模型内在封闭的假设, 将AR 术语纳入丰度。 在丰度随机效应中加入一个多变正常分布, 有利于估算物种间相互关系的矩阵。 每个模型还适合作为2010-2019年NABBS规模的一部分收集的鸟类点数据。 模拟研究的结果显示,这些模型可以准确估计数量、物种间关联和检测大小样本规模的准确估计, 假设中包含一个小、 大和零通胀的假设。 模型与北美原始鸟类调查数据匹配的结果显示, 在过去十年中,Bald Axong 的物种间相互关系矩阵开始增加。 我们的新型多点概率数据建模, 将我们目前的N- 物种间对比模型和模型中每个物种间账户 提供给整个物种群落。