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EXTENDING THE LATENT MULTINOMIAL MODEL WITH COMPLEX ERROR PROCESSES AND DYNAMIC MARKOV BASES

机译:具有复杂误差过程和动态马尔可夫基的最新多项式模型的扩展

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The latent multinomial model (LMM) of Link et al. [Biometrics 66 (2010) 178-185] provides a framework for modelling mark-recapture data with potential identification errors. Key is a Markov chain Monte Carlo (MCMC) scheme for sampling configurations of the latent counts of the true capture histories that could have generated the observed data. Assuming a linear map between the observed and latent counts, the MCMC algorithm uses vectors from a basis of the kernel to move between configurations of the latent data. Schofield and Bonner [Biometrics 71 (2015) 1070-1080] shows that this is sufficient for some models within the framework but that a larger set called a Markov basis is required when errors are more complex. We address two further challenges: (1) that models with complex error mechanisms may not fit within the LMM framework and (2) that Markov bases can be difficult to compute for studies of even moderate size. We extend the framework to model the capture/demographic and error processes separately and develop a new MCMC algorithm using dynamic Markov bases. Our work is motivated by a study of queen snakes (Regina septemvittata) and we use simulation to compare estimates of survival rates when snakes are marked with PIT tags which have perfect identification versus brands which are prone to error.
机译:Link等人的潜在多项式模型(LMM)。 [Biometrics 66(2010)178-185]提供了一个框架,用于建模具有潜在识别错误​​的标记夺回数据。关键是马尔可夫链蒙特卡洛(MCMC)方案,该方案用于采样可能已经生成观测数据的真实捕获历史的潜在计数的配置。假设观测到的计数与潜在计数之间存在线性映射,MCMC算法使用来自内核的向量在潜在数据的配置之间移动。 Schofield和Bonner [Biometrics 71(2015)1070-1080]显示,这对于框架内的某些模型已经足够,但是当错误更为复杂时,则需要一个更大的集合称为Markov基。我们面临两个进一步的挑战:(1)具有复杂错误机制的模型可能不适合LMM框架;(2)对于中等规模的研究,马尔可夫基可能难以计算。我们扩展了框架,以分别对捕获/人口统计和错误过程进行建模,并使用动态马尔可夫基础开发了一种新的MCMC算法。我们的工作是基于对女王蛇(Regina septemvittata)的研究而激发的,我们使用模拟方法比较蛇被标有PIT标签(具有完美识别能力)和易于出错的品牌标记时的存活率估计值。

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