A review on longitudinal data analysis with random forest
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Abstract
In longitudinal studies variables are measured repeatedly over time, leading to clustered and correlated observations. If the goal of the study is to develop prediction models, machine learning approaches such as the powerful random forest (RF) are often promising alternatives to standard statistical methods, especially in the context of high-dimensional data. In this paper, we review extensions of the standard RF method for the purpose of longitudinal data analysis. Extension methods are categorized according to the data structures for which they are designed. We consider both univariate and multivariate response longitudinal data and further categorize the repeated measurements according to whether the time…
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2Topics & keywords
Topics
Keywords
- Univariate
- Random forest
- Computer science
- Categorization
- Context (archaeology)
- Multivariate statistics
- Longitudinal data
- Implementation
UN Sustainable Development Goals
- Life in Land
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