Quantitative modeling of the neural representation of adjective-noun phrases to account for fMRI activation
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چکیده
Recent advances in functional Magnetic Resonance Imaging (fMRI) offer a significant new approach to studying semantic representations in humans by making it possible to directly observe brain activity while people comprehend words and sentences. In this study, we investigate how humans comprehend adjective-noun phrases (e.g. strong dog) while their neural activity is recorded. Classification analysis shows that the distributed pattern of neural activity contains sufficient signal to decode differences among phrases. Furthermore, vector-based semantic models can explain a significant portion of systematic variance in the observed neural activity. Multiplicative composition models of the two-word phrase outperform additive models, consistent with the assumption that people use adjectives to modify the meaning of the noun, rather than conjoining the meaning of the adjective and noun.
منابع مشابه
Quantitative Modeling of the Neural Representation of Nouns and Phrases Quantitative Modeling of the Neural Representation of Nouns and Phrases
Recent advances in brain imaging and machine learning technologies offer a significant new approach to studying language processing in humans. For the first time, theories regarding how linguistic concepts are processed can be directly validated and grounded by the patterns of brain activity while people comprehend words and phrases. In this dissertation, we used functional magnetic resonance i...
متن کاملQuantitative Modeling of the Neural Representation of Nouns and Phrases
Recent advances in brain imaging and machine learning technologies offer a significant new approach to studying language processing in humans. For the first time, theories regarding how linguistic concepts are processed can be directly validated and grounded by the patterns of brain activity while people comprehend words and phrases. In this dissertation, we used functional magnetic resonance i...
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Recent advances in functional Magnetic Resonance Imaging (fMRI) offer a significant new approach to studying semantic representations in humans by making it possible to directly observe brain activity while people comprehend words and sentences. In the proposed work, we used fMRI to study the cortical systems that underpin semantic representation while people comprehended linguistic concepts li...
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تاریخ انتشار 2009