• Corpus ID: 247519089

Nonparametric Group Variable Selection with Multivariate Response for Connectome-Based Modeling of Cognitive Scores

@inproceedings{Roy2021NonparametricGV,
  title={Nonparametric Group Variable Selection with Multivariate Response for Connectome-Based Modeling of Cognitive Scores},
  author={Arkaprava Roy},
  year={2021}
}
In this article, we study possible relations between the structural connectome and cognitive profiles using a multi-response nonparametric regression model under group sparsity. The aim is to identify the brain regions having a significant effect on cognitive functioning. The cognitive profiles are measured in terms of seven cognitive age-adjusted test scores from the NIH toolbox of cognitive battery. The structural connectomes are represented by adjacency matrices. Most existing works consider… 

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