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Model-based analysis of latent factors

机译:基于模型的潜在因素分析

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The detection of community or population structure through analysis of explicit cause–effect modeling of given observations has received considerable attention. The complexity of the task is mirrored by the large number of existing approaches and methods, the applicability of which heavily depends on the design of efficient algorithms of data analysis. It is occasionally even difficult to disentangle concepts and algorithms. To add more clarity to this situation, the present paper focuses on elaborating the system analytic framework that probably encompasses most of the common concepts and approaches by classifying them as model-based analyses of latent factors. Problems concerning the efficiency of algorithms are not of primary concern here. In essence, the framework suggests an input–output model system in which the inputs are provided as latent model parameters and the output is specified by the observations. There are two types of model involved, one of which organizes the inputs by assigning combinations of potentially interacting factor levels to each observed object, while the other specifies the mechanisms by which these combinations are processed to yield the observations. It is demonstrated briefly how some of the most popular methods (Structure, BAPS, Geneland) fit into the framework and how they differ conceptually from each other. Attention is drawn to the need to formulate and assess qualification criteria by which the validity of the model can be judged. One probably indispensable criterion concerns the cause–effect character of the model-based approach and suggests that measures of association between assignments of factor levels and observations be considered together with maximization of their likelihoods (or posterior probabilities). In particular the likelihood criterion is difficult to realize with commonly used estimates based on Markov chain Monte Carlo (MCMC) algorithms. Generally applicable MCMC-based alternatives that allow for approximate employment of the primary qualification criterion and the implied model validation including further descriptors of model characteristics are suggested.
机译:通过对给定观察结果进行显式因果模型分析来发现社区或人口结构受到了广泛关注。大量现有方法和方法反映了任务的复杂性,其适用性在很大程度上取决于有效的数据分析算法的设计。有时甚至很难弄清概念和算法。为了使这种情况更清晰,本白皮书着重于阐述可能包含大多数常见概念和方法的系统分析框架,并将它们归类为基于模型的潜在因素分析。在这里,与算法效率有关的问题不是主要关注的问题。本质上,该框架提出了一种输入-输出模型系统,在该系统中,输入作为潜在模型参数提供,而输出由观察值指定。涉及两种类型的模型,一种通过将可能相互作用的因子水平的组合分配给每个观察对象来组织输入,而另一种则指定处理这些组合以产生观察值的机制。简要演示了一些最流行的方法(Structure,BAPS,Geneland)如何适合框架,以及它们在概念上的区别。提请注意需要制定和评估资格标准,通过该标准可以判断模型的有效性。一个可能不可或缺的标准涉及基于模型的方法的因果特性,并建议考虑因素水平和观察值之间的关联度量,并考虑其可能性(或后验概率)的最大化。特别地,基于基于马尔可夫链蒙特卡洛(MCMC)算法的常用估计难以实现似然准则。建议使用基于MCMC的通用替代方案,该方案允许近似使用主要资格标准和隐含模型验证,包括模型特征的进一步描述。

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