International audienceThe last decades saw dramatic progress in brain research. These advances were often buttressed by probing single variables to make circumscribed discoveries, typically through null hypothesis significance testing. New ways for generating massive data fueled tension between the traditional methodology, used to infer statistically relevant effects in carefully-chosen variables, and pattern-learning algorithms, used to identify predictive signatures by searching through abundant information. In this article, we detail the antagonistic philosophies behind two quantitative approaches: certifying robust effects in understandable variables, and evaluating how accurately a built model can forecast future outcomes. We discourag...
Background: The use of Machine Learning (ML) is witnessing an exponential growth in the field of art...
Bayesian theories of perception have traditionally cast the brain as an idealised scientist, refinin...
International audienceFunctional brain images are rich and noisy data that can capture indirect sign...
International audienceThe last decades saw dramatic progress in brain research. These advances were ...
In recent years, neuroscience has begun to transform itself into a “big data” enterprise with the im...
International audienceNeuroscience is undergoing faster changes than ever before. Over 100 years our...
Neuroscience is undergoing faster changes than ever before. Over 100 years our field qualitatively d...
This dissertation discusses how predictive models are being used for scientific inquiry. Statistical...
peer reviewedRelating individual brain patterns to behaviour is fundamental in system neuroscience. ...
International audienceUnderstanding the organization of complex behavior as it relates to the brain ...
International audienceBrain-imaging research has predominantly generated insight by means of classic...
In this paper, we support the relevance of the collaboration and mutual inspiration between research...
An emerging consensus in cognitive science views the biological brain as a hierarchically-organized ...
Neuroscientists have in recent years turned to building models that aim to generate predictions rath...
The traditional goal of quantitative analytics is to find simple, transparent models that generate e...
Background: The use of Machine Learning (ML) is witnessing an exponential growth in the field of art...
Bayesian theories of perception have traditionally cast the brain as an idealised scientist, refinin...
International audienceFunctional brain images are rich and noisy data that can capture indirect sign...
International audienceThe last decades saw dramatic progress in brain research. These advances were ...
In recent years, neuroscience has begun to transform itself into a “big data” enterprise with the im...
International audienceNeuroscience is undergoing faster changes than ever before. Over 100 years our...
Neuroscience is undergoing faster changes than ever before. Over 100 years our field qualitatively d...
This dissertation discusses how predictive models are being used for scientific inquiry. Statistical...
peer reviewedRelating individual brain patterns to behaviour is fundamental in system neuroscience. ...
International audienceUnderstanding the organization of complex behavior as it relates to the brain ...
International audienceBrain-imaging research has predominantly generated insight by means of classic...
In this paper, we support the relevance of the collaboration and mutual inspiration between research...
An emerging consensus in cognitive science views the biological brain as a hierarchically-organized ...
Neuroscientists have in recent years turned to building models that aim to generate predictions rath...
The traditional goal of quantitative analytics is to find simple, transparent models that generate e...
Background: The use of Machine Learning (ML) is witnessing an exponential growth in the field of art...
Bayesian theories of perception have traditionally cast the brain as an idealised scientist, refinin...
International audienceFunctional brain images are rich and noisy data that can capture indirect sign...