Predicting reaction times in word recognition by unsupervised learning of morphology




Virpioja S, Lehtonen M, Hulten A, Salmelin R, Lagus K

Honkela T, Duch W, Girolami M, Kaski S

PublisherSpringer-Verlag

2011

Artificial Neural Networks and Machine Learning - ICANN 2011

Lecture Notes in Computer Science

6791

978-3-642-21734-0

https://researchportal.helsinki.fi/en/publications/3d077ce8-4c1e-4a93-bc2a-485ec0d2be17



A central question in the study of the mental lexicon is how morphologically complex words are processed. We consider this question from the viewpoint of statistical models of morphology. As an indicator of the mental processing cost in the brain, we use reaction times to words in a visual lexical decision task on Finnish nouns. Statistical correlation between a model and reaction times is employed as a goodness measure of the model. In particular, we study Morfessor, an unsupervised method for learning concatenative morphology. The results for a set of inflected and monomorphemic Finnish nouns reveal that the probabilities given by Morfessor, especially the Categories-MAP version, show considerably higher correlations to the reaction times than simple word statistics such as frequency, morphological family size, or length. These correlations are also higher than when any individual test subject is viewed as a model.



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