We develop an efficient Bayesian sequential inference framework for factor analysis models observed via various data types, such as continuous, binary and ordinal data. In the continuous data case, where it is possible to marginalise over the latent factors, the proposed methodology tailors the Iterated Batch Importance Sampling (IBIS) of Chopin (2002) to handle such models and we incorporate Hamiltonian Markov Chain Monte Carlo. For binary and ordinal data, we develop an efficient IBIS scheme to handle the parameter and latent factors, combining with Laplace or Variational Bayes approximations. The methodology can be used in the context of sequential hypothesis testing via Bayes factors, which are known to have advantages over traditional null hypothesis testing. Moreover, the developed sequential framework offers multiple benefits even in non-sequential cases, by providing posterior distribution, model evidence and scoring rules (under the prequential framework) in one go, and by offering a more robust alternative computational scheme to Markov Chain Monte Carlo that can be useful in problematic target distributions.
翻译:我们为通过连续数据、二进制数据和正态数据等各种数据类型观测的因素分析模型制定了高效的贝叶斯顺序推断框架;在连续数据案例中,如果有可能在潜在因素上边缘化,拟议方法将肖邦的迭接批次重要性抽样抽样(IBIS)调整为处理这些模型,我们将汉密尔顿·马克夫链蒙特卡洛纳入其中;对于二进制和正态数据,我们制定了一个高效的IBIS计划,处理参数和潜在因素,结合拉贝或变异性湾近似值,方法可用于通过巴耶斯因素进行连续假设测试,因为众所周知,巴耶斯因素比传统的无效假设测试具有优势;此外,开发的连续框架提供了多种好处,甚至在非连续案例中也是如此,方法是在一处提供后方分布、示范证据和评分规则(在前量框架之下),同时向Markov链蒙特卡洛提供一种更可靠的替代计算办法,在有问题的目标分布上有用。