Eric W. Bridgeford, Ph.D.
@ericwbridgeford.bsky.social
If you are into python, machine learning, graph data, statistical learning, basic graph neural network architectures, or just want to get a hands-on and ground-up introduction to a new, actively-developing field to keep your chops sharp, we hope this might be a good book for you.
October 3, 2025 at 6:29 PM
If you are into python, machine learning, graph data, statistical learning, basic graph neural network architectures, or just want to get a hands-on and ground-up introduction to a new, actively-developing field to keep your chops sharp, we hope this might be a good book for you.
Thanks for your positive thoughts @ar0mcintosh.bsky.social -- on our next updates, we will majorly take this feedback about the title into consideration :) appreciate the rec!
March 23, 2025 at 8:20 PM
Thanks for your positive thoughts @ar0mcintosh.bsky.social -- on our next updates, we will majorly take this feedback about the title into consideration :) appreciate the rec!
We tie together our contribution by discussing the implications of causal mindsets on deriving valid inferences, and how these mindsets may inform computational neuroscience efforts going forward. (4/4)
March 23, 2025 at 6:49 PM
We tie together our contribution by discussing the implications of causal mindsets on deriving valid inferences, and how these mindsets may inform computational neuroscience efforts going forward. (4/4)
Using working examples drawn from multiple domains of experimental and observational neuroscience, we illustrate how analytic strategies can produce erroneous or misleading conclusions that struggle to generalize, even if the goal is not to develop an explicitly causal or mechanistic model (3/4)
March 23, 2025 at 6:49 PM
Using working examples drawn from multiple domains of experimental and observational neuroscience, we illustrate how analytic strategies can produce erroneous or misleading conclusions that struggle to generalize, even if the goal is not to develop an explicitly causal or mechanistic model (3/4)
Everybody knows that correlation does not equal causation. But how many people actually know how to apply that thinking? In this review, we provide a ground-up introduction to the motivations, assumptions, and methods that are essential when making causal inferences (2/4)
March 23, 2025 at 6:49 PM
Everybody knows that correlation does not equal causation. But how many people actually know how to apply that thinking? In this review, we provide a ground-up introduction to the motivations, assumptions, and methods that are essential when making causal inferences (2/4)