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  <title>NITRC News Group Forum: graphvar-2.0-machine-learning-paper-in-jneuroscience-methods</title>
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  <description>Our second GraphVar article (accompanying the GraphVar 2.0 toolbox) is published in the Journal of Neuroscience Methods.
The article provides an easy to follow introductory review to the basics of machine learning and its application within GraphVar. GraphVar 2.0 will make big data neuroscience readily accessible to a broader audience of neuroimaging investigators.

https://doi.org/10.1016/j.jneumeth.2018.07.001</description>
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