随机森林
样品(材料)
变量(数学)
机器学习
领域(数学)
人工智能
多元统计
投票
航程(航空)
数据挖掘
计算机科学
数学
化学
工程类
数学分析
色谱法
纯数学
航空航天工程
政治
政治学
法学
作者
Lionel Blanchet,Raffaele Vitale,Robert van Vorstenbosch,George Stavropoulos,John Pender,Daisy Jonkers,Frederik‐Jan van Schooten,Agnieszka Smolinska
标识
DOI:10.1016/j.aca.2020.06.043
摘要
Current technological developments have allowed for a significant increase and availability of data. Consequently, this has opened enormous opportunities for the machine learning and data science field, translating into the development of new algorithms in a wide range of applications in medical, biomedical, daily-life, and national security areas. Ensemble techniques are among the pillars of the machine learning field, and they can be defined as approaches in which multiple, complex, independent/uncorrelated, predictive models are subsequently combined by either averaging or voting to yield a higher model performance. Random forest (RF), a popular ensemble method, has been successfully applied in various domains due to its ability to build predictive models with high certainty and little necessity of model optimization. RF provides both a predictive model and an estimation of the variable importance. However, the estimation of the variable importance is based on thousands of trees, and therefore, it does not specify which variable is important for which sample group. The present study demonstrates an approach based on the pseudo-sample principle that allows for construction of bi-plots (i.e. spin plots) associated with RF models. The pseudo-sample principle for RF. is explained and demonstrated by using two simulated datasets, and three different types of real data, which include political sciences, food chemistry and the human microbiome data. The pseudo-sample bi-plots, associated with RF and its unsupervised version, allow for a versatile visualization of multivariate models, and the variable importance and the relation among them.
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