Interpretability of bi-level variable selection methods

IF 1.3 3区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Gregor Buch, Andreas Schulz, Irene Schmidtmann, Konstantin Strauch, Philipp S. Wild
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Abstract

Variable selection is usually performed to increase interpretability, as sparser models are easier to understand than full models. However, a focus on sparsity is not always suitable, for example, when features are related due to contextual similarities or high correlations. Here, it may be more appropriate to identify groups and their predictive members, a task that can be accomplished with bi-level selection procedures. To investigate whether such techniques lead to increased interpretability, group exponential LASSO (GEL), sparse group LASSO (SGL), composite minimax concave penalty (cMCP), and least absolute shrinkage, and selection operator (LASSO) as reference methods were used to select predictors in time-to-event, regression, and classification tasks in bootstrap samples from a cohort of 1001 patients. Different groupings based on prior knowledge, correlation structure, and random assignment were compared in terms of selection relevance, group consistency, and collinearity tolerance. The results show that bi-level selection methods are superior to LASSO in all criteria. The cMCP demonstrated superiority in selection relevance, while SGL was convincing in group consistency. An all-round capacity was achieved by GEL: the approach jointly selected correlated and content-related predictors while maintaining high selection relevance. This method seems recommendable when variables are grouped, and interpretation is of primary interest.

Abstract Image

双层变量选择方法的可解释性
进行变量选择通常是为了提高可解释性,因为稀疏模型比完整模型更容易理解。然而,关注稀疏性并不总是合适的,例如,当特征因上下文相似性或高度相关性而相关时。在这种情况下,识别群体及其预测成员可能更合适,这项任务可以通过双层选择程序来完成。为了研究这种技术是否能提高可解释性,我们使用了组指数 LASSO(GEL)、稀疏组 LASSO(SGL)、复合最小凹惩罚(cMCP)和最小绝对收缩和选择算子(LASSO)作为参考方法,在时间到事件、回归和分类任务中,从 1001 名患者的队列中的引导样本中选择预测因子。比较了基于先验知识、相关结构和随机分配的不同分组在选择相关性、分组一致性和共线性容忍度方面的差异。结果表明,双层选择方法在所有标准上都优于 LASSO。cMCP 在选择相关性方面表现出色,而 SGL 在组一致性方面令人信服。GEL 实现了全面的能力:该方法在保持高选择相关性的同时,联合选择了相关和内容相关的预测因子。在变量分组和解释是主要关注点的情况下,这种方法似乎值得推荐。
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来源期刊
Biometrical Journal
Biometrical Journal 生物-数学与计算生物学
CiteScore
3.20
自引率
5.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: Biometrical Journal publishes papers on statistical methods and their applications in life sciences including medicine, environmental sciences and agriculture. Methodological developments should be motivated by an interesting and relevant problem from these areas. Ideally the manuscript should include a description of the problem and a section detailing the application of the new methodology to the problem. Case studies, review articles and letters to the editors are also welcome. Papers containing only extensive mathematical theory are not suitable for publication in Biometrical Journal.
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