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Nuisance regressors could get a second round of dimensionality reduction #189

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mwaskom opened this issue May 6, 2019 · 2 comments
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@mwaskom
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mwaskom commented May 6, 2019

It seems there is a lot of redundancy in the different sources of nuisance regressors added in #188.

For example, here is the cumulative variance explained when you have 6 components from each of the four separate sources, and then perform another PCA on the resulting matrix:

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@mwaskom
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mwaskom commented May 6, 2019

This suggests that most runs need ~15 (out of 24) components to explain 99% of the variance and ~10–13 to explain 95%.

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mwaskom commented May 6, 2019

If we implement this, it would be good to still plot the original nuisance data se we can understand where the different components are coming from.

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