What determines individuals’ efficacy in detecting regularities in visual statistical learning? Our theoretical starting point assumes that the variance in performance of statistical learning (SL) can be split into the variance related to efficiency in encoding representations within a modality and the variance related to the relative computational efficiency of detecting the distributional properties of the encoded representations. Using a novel methodology, we dissociated encoding from higher-order learning factors, by independently manipulating exposure duration and transitional probabilities in a stream of visual shapes. Our results show that the encoding of shapes and the retrieving of their transitional probabilities are not independe...
ABSTRACT—Statistical learning has been widely proposed as a mechanism by which observers learn to de...
Visual attention seems essential for learning the statistical regularities in our environment, a pro...
While the visual environment contains massive amounts of information, we should not and cannot pay a...
In order to extract the regularities underlying a continuous sensory input, the individual elements ...
First published: 09 December 2019In order to extract the regularities underlying a continuous sensor...
From a theoretical perspective, most discussions of statistical learning (SL) have focused on the po...
First published: 07 October 2017From a theoretical perspective, most discussions of statistical lear...
The environment contains considerable information that is distributed across space and time, and the...
The statistical regularities of a sequence of visual shapes can be learned incidentally. Arciuli et ...
ABSTRACT—Statistical learning has been widely proposed as a mechanism by which observers learn to de...
Statistical learning refers to the extraction of probabilistic relationships between stimuli and is ...
Statistical learning refers to the ability to extract regularities in our rich, dynamic, and complex...
Publisher's PDFHumans are capable of detecting and exploiting a variety of environmental regularitie...
This dissertation seeks to understand the underlying mechanism(s) of statistical learning (SL), defi...
Perceptual learning (PL) and statistical learning (SL) both seek to explain how humans learn through...
ABSTRACT—Statistical learning has been widely proposed as a mechanism by which observers learn to de...
Visual attention seems essential for learning the statistical regularities in our environment, a pro...
While the visual environment contains massive amounts of information, we should not and cannot pay a...
In order to extract the regularities underlying a continuous sensory input, the individual elements ...
First published: 09 December 2019In order to extract the regularities underlying a continuous sensor...
From a theoretical perspective, most discussions of statistical learning (SL) have focused on the po...
First published: 07 October 2017From a theoretical perspective, most discussions of statistical lear...
The environment contains considerable information that is distributed across space and time, and the...
The statistical regularities of a sequence of visual shapes can be learned incidentally. Arciuli et ...
ABSTRACT—Statistical learning has been widely proposed as a mechanism by which observers learn to de...
Statistical learning refers to the extraction of probabilistic relationships between stimuli and is ...
Statistical learning refers to the ability to extract regularities in our rich, dynamic, and complex...
Publisher's PDFHumans are capable of detecting and exploiting a variety of environmental regularitie...
This dissertation seeks to understand the underlying mechanism(s) of statistical learning (SL), defi...
Perceptual learning (PL) and statistical learning (SL) both seek to explain how humans learn through...
ABSTRACT—Statistical learning has been widely proposed as a mechanism by which observers learn to de...
Visual attention seems essential for learning the statistical regularities in our environment, a pro...
While the visual environment contains massive amounts of information, we should not and cannot pay a...