Dr. Bruno Nicenboim
We present a novel cognitive model of reading based on a continuous flow of information approach, where partial information from different levels of representation is continuously being made available to next levels. In an example application, we implement the model in a hierarchical Bayesian framework and fit it to self-paced reading times data: a reading task where one word is presented at a time and the presentation time is controlled by the experimental subject. The results show that the model provides a reasonable fit to word-level reading times, and can account for two previously observed findings: (i) reading times are much shorter than the minimum time required for all cognitive processes that should take place, and (ii) the processing difficulty of a word affects the reading times of subsequent words (i.e., spillover or lag effects). Computational models have explained these findings through parafoveal preview, that is, the partial processing of upcoming words during reading before they are directly fixated by the eyes. Our model provides an explanation for these findings that is relevant for natural reading, but also, crucially, for self-paced reading, where parafoveal preview is not possible.
This is an in-person presentation on July 20, 2023
(11:40 ~
12:00 UTC).