期刊
ENTROPY
卷 24, 期 12, 页码 -出版社
MDPI
DOI: 10.3390/e24121839
关键词
clustering; log-contrast model; multi-task learning; symmetric form; variable selection
Multi-task learning aims to improve estimation and prediction performances by sharing information among tasks, but existing methods cannot be directly applied to compositional data. This paper proposes a multi-task learning method for compositional data using sparse network lasso, which extracts latent clusters and relevant variables by considering relationships among samples.
Multi-task learning is a statistical methodology that aims to improve the generalization performances of estimation and prediction tasks by sharing common information among multiple tasks. On the other hand, compositional data consist of proportions as components summing to one. Because components of compositional data depend on each other, existing methods for multi-task learning cannot be directly applied to them. In the framework of multi-task learning, a network lasso regularization enables us to consider each sample as a single task and construct different models for each one. In this paper, we propose a multi-task learning method for compositional data using a sparse network lasso. We focus on a symmetric form of the log-contrast model, which is a regression model with compositional covariates. Our proposed method enables us to extract latent clusters and relevant variables for compositional data by considering relationships among samples. The effectiveness of the proposed method is evaluated through simulation studies and application to gut microbiome data. Both results show that the prediction accuracy of our proposed method is better than existing methods when information about relationships among samples is appropriately obtained.
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