Multivariate decoding methods were developed originally as tools to enable accurate predictions in real-world applications. The realization that these methods can also be employed to study brain function has led to their widespread adoption in the neurosciences. However, prior to the rise of multivariate decoding, the study of brain function was firmly embedded in a statistical philosophy grounded on univariate methods of data analysis. In this way, multivariate decoding for brain interpretation grew out of two established frameworks: multivariate decoding for predictions in real-world applications, and classical univariate analysis based on the study and interpretation of brain activation. We argue that this led to two confusions, one refl...
Improving the interpretability of multivariate models is of primary interest for many neuroimaging s...
Historically, our understanding of the human brain has been mutually affected both by the available ...
Functional brain images are extraordinarily rich data sets that reveal distributed brain networks en...
Multivariate decoding methods were developed originally as tools to enable accurate predictions in r...
Multivariate decoding methods have revolutionized cognitive neuroimaging in recent years by enabling...
Since its introduction, multivariate pattern analysis (MVPA), or “neural decoding”, has transformed ...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
The advent of functional magnetic resonance imaging (fMRI) of brain function 20 years ago has provid...
In recent years, neuroscience has begun to transform itself into a “big data” enterprise with the im...
Theoretical thesis.Thesis by publication.Includes bibliographical references.Chapter 1. Introduction...
As clinical and cognitive neurosciences mature, the need for sophisticated neuroimaging analysis bec...
Classification-based approaches for data analysis are provoking wide interest and increasing adopti...
As clinical and cognitive neuroscience mature, the need for sophisticated neuroimaging analysis beco...
In the last five decades the number of techniques available for non-invasive functional imaging has ...
Improving the interpretability of multivariate models is of primary interest for many neuroimaging s...
Historically, our understanding of the human brain has been mutually affected both by the available ...
Functional brain images are extraordinarily rich data sets that reveal distributed brain networks en...
Multivariate decoding methods were developed originally as tools to enable accurate predictions in r...
Multivariate decoding methods have revolutionized cognitive neuroimaging in recent years by enabling...
Since its introduction, multivariate pattern analysis (MVPA), or “neural decoding”, has transformed ...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
The advent of functional magnetic resonance imaging (fMRI) of brain function 20 years ago has provid...
In recent years, neuroscience has begun to transform itself into a “big data” enterprise with the im...
Theoretical thesis.Thesis by publication.Includes bibliographical references.Chapter 1. Introduction...
As clinical and cognitive neurosciences mature, the need for sophisticated neuroimaging analysis bec...
Classification-based approaches for data analysis are provoking wide interest and increasing adopti...
As clinical and cognitive neuroscience mature, the need for sophisticated neuroimaging analysis beco...
In the last five decades the number of techniques available for non-invasive functional imaging has ...
Improving the interpretability of multivariate models is of primary interest for many neuroimaging s...
Historically, our understanding of the human brain has been mutually affected both by the available ...
Functional brain images are extraordinarily rich data sets that reveal distributed brain networks en...