Identification of taxon through classification with partial reject options

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY Journal of the Royal Statistical Society Series C-Applied Statistics Pub Date : 2023-07-01 DOI:10.1093/jrsssc/qlad036
Måns Karlsson, Ola Hössjer
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Abstract

Abstract Identification of taxa can significantly be assisted by statistical classification based on trait measurements either individually or by phylogenetic (clustering) methods. In this article, we present a general Bayesian approach for classifying species individually based on measurements of a mixture of continuous and ordinal traits, and any type of covariates. The trait vector is derived from a latent variable with a multivariate Gaussian distribution. Decision rules based on supervised learning are presented that estimate model parameters through blocked Gibbs sampling. These decision regions allow for uncertainty (partial rejection), so that not necessarily one specific category (taxon) is output when new subjects are classified, but rather a set of categories including the most probable taxa. This type of discriminant analysis employs reward functions with a set-valued input argument, so that an optimal Bayes classifier can be defined. We also present a way of safeguarding against outlying new observations, using an analogue of a p-value within our Bayesian setting. We refer to our Bayesian set-valued classifier as the Karlsson–Hössjer method, and it is illustrated on an original ornithological data set of birds. We also incorporate model selection through cross-validation, exemplified on another original data set of birds.
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通过部分拒绝选项的分类识别分类单元
基于个体或系统发育(聚类)方法的统计分类对分类群的鉴定具有重要的辅助作用。在本文中,我们提出了一种通用的贝叶斯方法,用于根据连续和有序特征的混合测量以及任何类型的协变量单独分类物种。特征向量由具有多元高斯分布的潜在变量导出。提出了基于监督学习的决策规则,通过块Gibbs抽样估计模型参数。这些决策区域允许不确定性(部分拒绝),因此在分类新主题时不一定输出一个特定的类别(分类群),而是包含最可能的分类群的一组类别。这种类型的判别分析使用具有集值输入参数的奖励函数,因此可以定义最优贝叶斯分类器。我们还提出了一种防止偏离新观测的方法,在贝叶斯设置中使用p值的模拟。我们将贝叶斯集值分类器称为Karlsson-Hössjer方法,并在鸟类的原始鸟类数据集上进行了说明。我们还通过交叉验证纳入了模型选择,以另一个原始鸟类数据集为例。
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
76
审稿时长
>12 weeks
期刊介绍: The Journal of the Royal Statistical Society, Series C (Applied Statistics) is a journal of international repute for statisticians both inside and outside the academic world. The journal is concerned with papers which deal with novel solutions to real life statistical problems by adapting or developing methodology, or by demonstrating the proper application of new or existing statistical methods to them. At their heart therefore the papers in the journal are motivated by examples and statistical data of all kinds. The subject-matter covers the whole range of inter-disciplinary fields, e.g. applications in agriculture, genetics, industry, medicine and the physical sciences, and papers on design issues (e.g. in relation to experiments, surveys or observational studies). A deep understanding of statistical methodology is not necessary to appreciate the content. Although papers describing developments in statistical computing driven by practical examples are within its scope, the journal is not concerned with simply numerical illustrations or simulation studies. The emphasis of Series C is on case-studies of statistical analyses in practice.
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