Neuroimaging studies of the reading process point to functionally distinct stages in word recognition. Yet, current understanding of the operations linked to those various stages is mainly descriptive in nature. Approaches developed in the field of computational linguistics may offer a more quantitative approach for understanding brain dynamics. Our aim was to evaluate whether a statistical model of morphology, with well‐defined computational principles, can capture the neural dynamics of reading, using the concept of surprisal from information theory as the common measure. The Morfessor model, created for unsupervised discovery of morphemes, is based on the minimum description length principle and attempts to find optimal units of represen...
Despite a century of research into visual word recognition, basic questions remain unresolved about ...
Morphological complexity is a highly debated issue in visual word recognition. Previous neuroimaging...
Recent neurocognitive studies of visual word recognition provide information about neuronal networks...
Neuroimaging studies of the reading process point to functionally distinct stages in word recognitio...
How is information organized in the brain during natural reading? Where and when do the required pro...
Within linguistics. words with a complex internal structure are commonly assumed to be decomposed in...
The question of how morphologically complex words (assign-ment, listen-ed) are represented and proce...
According to predictions made by ACV98 connectionist model of reading, behavioral experiments have s...
We studied how statistical models of morphology that are built on different kinds of representationa...
This work concerns the investigation of the neuronal mechanisms at the basis of language acquisition...
Word length, frequency, and predictability count among the most influential variables during reading...
Despite considerable research interest, it is still an open issue as to how morphologically complex ...
There is considerable behavioral evidence that morphologically complex words such as ‘tax-able’ and ...
Available online 1 September 2018.There is considerable behavioral evidence that morphologically com...
Contains fulltext : 173550.pdf (publisher's version ) (Open Access)Language compre...
Despite a century of research into visual word recognition, basic questions remain unresolved about ...
Morphological complexity is a highly debated issue in visual word recognition. Previous neuroimaging...
Recent neurocognitive studies of visual word recognition provide information about neuronal networks...
Neuroimaging studies of the reading process point to functionally distinct stages in word recognitio...
How is information organized in the brain during natural reading? Where and when do the required pro...
Within linguistics. words with a complex internal structure are commonly assumed to be decomposed in...
The question of how morphologically complex words (assign-ment, listen-ed) are represented and proce...
According to predictions made by ACV98 connectionist model of reading, behavioral experiments have s...
We studied how statistical models of morphology that are built on different kinds of representationa...
This work concerns the investigation of the neuronal mechanisms at the basis of language acquisition...
Word length, frequency, and predictability count among the most influential variables during reading...
Despite considerable research interest, it is still an open issue as to how morphologically complex ...
There is considerable behavioral evidence that morphologically complex words such as ‘tax-able’ and ...
Available online 1 September 2018.There is considerable behavioral evidence that morphologically com...
Contains fulltext : 173550.pdf (publisher's version ) (Open Access)Language compre...
Despite a century of research into visual word recognition, basic questions remain unresolved about ...
Morphological complexity is a highly debated issue in visual word recognition. Previous neuroimaging...
Recent neurocognitive studies of visual word recognition provide information about neuronal networks...