We consider unsupervised classification by means of a latent multinomial variable which categorizes a scalar response into one of L components of a mixture model. This process can be thought as a hierarchical model with first level modelling a scalar response according to a mixture of parametric distributions, the second level models the mixture probabilities by means of a generalised linear model with functional and scalar covariates. The traditional approach of treating functional covariates as vectors not only suffers from the curse of dimensionality since functional covariates can be measured at very small intervals leading to a highly parametrised model but also does not take into account the nature of the data. We use basis expansion to reduce the dimensionality and a Bayesian approach to estimate the parameters while providing predictions of the latent classification vector. By means of a simulation study we investigate the behaviour of our approach considering normal mixture model and zero inflated mixture of Poisson distributions. We also compare the performance of the classical Gibbs sampling approach with Variational Bayes Inference.
翻译:我们认为,通过一种潜在的多角度变量进行不受监督的分类,该变量将一个星标反应分类为混合物模型的L部分成分之一。这一过程可被视为一种等级模型,其一级根据参数分布的混合情况模拟一个星标反应,二级模型是混合概率,通过一种通用的线性模型和功能和星标的共变体进行混合。将功能性共变体作为矢量的传统方法不仅受到维度诅咒的影响,因为功能性共变体可以在极小的间隔内测量,导致一个高度相似的模型,而且没有考虑到数据的性质。我们利用基础扩展来减少维度,采用贝叶斯法来估计参数,同时提供潜在分类矢量的预测。我们通过模拟研究研究我们考虑正常混合物模型和波斯森分布零膨胀混合物的方法的行为。我们还比较了古典Gibs采样方法的性能与Variational Bayes Inference。