The central issue of the SFM4VOT project was building a computationally explicit description of orthographic processing in the left ventral occipito-temporal cortex based on neurocognitive theory and data. Here the possibility of realizing explicit model comparisons is a central progress compared to the classic verbal/descriptive models. In the two studies which describe the models (Gagl et al., 2016, submitted), the model comparison method was a central approach to compare classical and new ideas quantitatively not relying on linguistic descriptions. Critical here is that for both models the comparisons are based on a broad empirical basis. Such explicit investigations will allow a fruitful scientific discourse in future basic research.
Beyond this, the processes described in the models (lexical categorization and sensory information optimization) provide a better understanding of the visual word recognition process. Hence, all proposed processes generate new hypotheses for treatment and diagnostics of slow reading. This is especially important as current evidence from treatment approaches (Galuschka, Ise, Krick, & Schulte-Körne, 2014) suggests that only one treatment approach was found effective with only a small effect size. The implementation of a promising intervention on the basis of lexical categorization (Gregorova & Gagl, in preparation) is the first step towards a neurocognitively motivated training approach of orthographic processing. Currently, we focus on second language learners, a large and growing group of individuals, and plan to adopt the approach for young readers at the beginning of literacy acquisition. The wider impact of an efficient diagnostic and treatment program is that higher reading skills increase information processing skills of slow readers. This is critical for daily life decisions at work and elsewhere since these are based only on the available information which is limited when the individual capacities, one being the speed of reading, are low.
References
Eisenhauer, S., Fiebach, C. J., & Gagl, B. (2018). Dissociable prelexical and lexical contributions to visual word recognition and priming: Evidence from MEG and behavior. BioRxiv, 410795.
Gagl, B., Richlan, F., Ludersdorfer, P., Sassenhagen, J., & Fiebach, C. J. (2016). The lexical categorization model: A computational model of left ventral occipito-temporal cortex activation in visual word recognition. BioRxiv, 085332.
Gagl, B., Sassenhagen, J., Haan, S., Richlan, F., & Fiebach, C. J. (submitted). Visual word recognition relies on a sensory prediction error signal.
Galuschka, K., Ise, E., Krick, K., & Schulte-Körne, G. (2014). PLOS ONE, 9(2), e89900.
Gregorova, K., & Gagl, B. (in preparation). Lexical categorization training is successful in increasing reading speed of L2-German readers.
Yarkoni, T., Balota, D., & Yap, M. (2008). Psychonomic Bulletin & Review, 15(5), 971–979.