PARSIMONIOUS BAYESIAN FACTOR ANALYSIS FOR MODELLING LATENT STRUCTURES IN SPECTROSCOPY DATA

成果类型:
Article
署名作者:
Casa, Alessandro; O'callaghan, Tom f.; Murphy, Thomas brendan
署名单位:
University College Dublin; University College Cork
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/21-AOAS1597
发表日期:
2022
页码:
2417-2436
关键词:
indoor feeding systems sparse factor-analysis quality characteristics DISCRIMINANT-ANALYSIS variable selection sensory properties energy-intake milk pasture likelihood
摘要:
In recent years, within the dairy sector, animal diet and management practices have been receiving increased attention, in particular, examining the impact of pasture-based feeding strategies on the composition and quality of milk and dairy products in line with the prevalence of premium grass-fed dairy products appearing on market shelves. To date, methods to thoroughly investigate the more relevant differences induced by the diet on milk chemi-cal features are limited; enhanced statistical tools exploring these differences are required.Infrared spectroscopy techniques are widely used to collect data on milk samples and to predict milk related traits and characteristics. While these data are routinely used to predict the composition of the macro components of milk, each spectrum also provides a reservoir of unharnessed information about the sample. The accumulation and subsequent interpretation of these data present some challenges due to their high-dimensionality and the rela-tionships amongst the spectral variables.In this work, directly motivated by a dairy application, we propose a modification of the standard factor analysis to induce a parsimonious sum-mary of spectroscopic data. Our proposal maps the observations into a low -dimensional latent space while simultaneously clustering the observed vari-ables. The method indicates possible redundancies in the data, and it helps disentangle the complex relationships among the wavelengths. A flexible Bayesian estimation procedure is proposed for model fitting, providing rea-sonable values for the number of latent factors and clusters. The method is applied on milk mid-infrared (MIR) spectroscopy data from dairy cows on distinctly different pasture and nonpasture based diets, providing accurate modelling of the correlation, clustering of variables, and information on dif-ferences among milk samples from cows on different diets.
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