The brain integrates streams of sensory input and builds accurate predictions, while arriving at stable percepts under disparate time scales. This stochastic process bears different unfolding dynamics for different people, yet statistical learning (SL) currently averages out, as noise, individual fluctuations in data streams registered from the brain as the person learns. We here adopt a new analytical approach that instead of averaging out fluctuations in continuous electroencephalographic (EEG)-based data streams, takes these gross data as the important signals. Our new approach reassesses how individuals dynamically learn predictive information in stable and unstable environments. We find neural correlates for two types of learners in a ...
Even in the absence of sensory stimulation the brain is spontaneously active. This background “noise...
First published: 09 December 2019In order to extract the regularities underlying a continuous sensor...
Regression models usually tend to recover a noisy signal in the form of a combination of regressors,...
When immersed in a new environment we are challenged to decipher initially incomprehensible streams ...
Making predictions about future events relies on interpreting streams of information that may initia...
Extracting the statistics of event streams in natural environments is critical for interpreting curr...
Understanding how an animal’s ability to learn relates to neural activity or is altered by lesions, ...
The statistical structure of the environment is often important when making decisions. There are mul...
Abstract Knowing when the brain learns is crucial for both the comprehension of memory formation and...
Extracting the statistics of event streams in natural environments is critical for interpreting curr...
In this review, we mainly discuss the origin and the development of statistical learning research, a...
Running title: Stable, regularised models of population dynamics Ongoing advances in experimental te...
When immersed in a new environment, we are challenged to decipher initially incomprehensible strea...
In order to extract the regularities underlying a continuous sensory input, the individual elements ...
Through statistical learning (SL), cognitive systems may discover the underlying regularities in the...
Even in the absence of sensory stimulation the brain is spontaneously active. This background “noise...
First published: 09 December 2019In order to extract the regularities underlying a continuous sensor...
Regression models usually tend to recover a noisy signal in the form of a combination of regressors,...
When immersed in a new environment we are challenged to decipher initially incomprehensible streams ...
Making predictions about future events relies on interpreting streams of information that may initia...
Extracting the statistics of event streams in natural environments is critical for interpreting curr...
Understanding how an animal’s ability to learn relates to neural activity or is altered by lesions, ...
The statistical structure of the environment is often important when making decisions. There are mul...
Abstract Knowing when the brain learns is crucial for both the comprehension of memory formation and...
Extracting the statistics of event streams in natural environments is critical for interpreting curr...
In this review, we mainly discuss the origin and the development of statistical learning research, a...
Running title: Stable, regularised models of population dynamics Ongoing advances in experimental te...
When immersed in a new environment, we are challenged to decipher initially incomprehensible strea...
In order to extract the regularities underlying a continuous sensory input, the individual elements ...
Through statistical learning (SL), cognitive systems may discover the underlying regularities in the...
Even in the absence of sensory stimulation the brain is spontaneously active. This background “noise...
First published: 09 December 2019In order to extract the regularities underlying a continuous sensor...
Regression models usually tend to recover a noisy signal in the form of a combination of regressors,...