On the generalizability of linear and non-linear region of interest-based multivariate regression models for fMRI data
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- @InProceedings{Jackson:2018:CIBCB,
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author = "Ethan C. Jackson and ames Alexander Hughes and
Mark Daley",
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booktitle = "2018 IEEE Conference on Computational Intelligence in
Bioinformatics and Computational Biology (CIBCB)",
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title = "On the generalizability of linear and non-linear
region of interest-based multivariate regression models
for fMRI data",
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year = "2018",
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abstract = "In contrast to conventional, univariate analysis,
various types of multivariate analysis have been
applied to functional magnetic resonance imaging (fMRI)
data. In this paper, we compare two contemporary
approaches for multivariate regression on task-based
fMRI data: linear regression with ridge regularization
and non-linear symbolic regression using genetic
programming. The data for this project is
representative of a contemporary fMRI experimental
design for visual stimuli. Linear and non-linear models
were generated for 10 subjects, with another 4 withheld
for validation. Model quality is evaluated by comparing
R scores (Pearson product-moment correlation) in
various contexts, including single run self-fit,
within-subject generalization, and between-subject
generalization. Propensity for modelling strategies to
overfit is estimated using a separate resting state
scan. Results suggest that neither method is
objectively or inherently better than the other.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/CIBCB.2018.8404973",
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month = may,
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notes = "Also known as \cite{8404973}",
- }
Genetic Programming entries for
Ethan Charles Jackson
ames Alexander Hughes
Mark Daley
Citations