Modeling the language cortex with form-independent and enriched representations of sentence meaning reveals remarkable semantic abstractness
- URL: http://arxiv.org/abs/2510.02354v1
- Date: Sat, 27 Sep 2025 20:01:06 GMT
- Title: Modeling the language cortex with form-independent and enriched representations of sentence meaning reveals remarkable semantic abstractness
- Authors: Shreya Saha, Shurui Li, Greta Tuckute, Yuanning Li, Ru-Yuan Zhang, Leila Wehbe, Evelina Fedorenko, Meenakshi Khosla,
- Abstract summary: We search for abstract representations of meaning in the language cortex by modeling neural responses to sentences.<n>We find that aggregating across multiple generated images yields increasingly accurate predictions of language cortex responses.
- Score: 15.252451854183349
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The human language system represents both linguistic forms and meanings, but the abstractness of the meaning representations remains debated. Here, we searched for abstract representations of meaning in the language cortex by modeling neural responses to sentences using representations from vision and language models. When we generate images corresponding to sentences and extract vision model embeddings, we find that aggregating across multiple generated images yields increasingly accurate predictions of language cortex responses, sometimes rivaling large language models. Similarly, averaging embeddings across multiple paraphrases of a sentence improves prediction accuracy compared to any single paraphrase. Enriching paraphrases with contextual details that may be implicit (e.g., augmenting "I had a pancake" to include details like "maple syrup") further increases prediction accuracy, even surpassing predictions based on the embedding of the original sentence, suggesting that the language system maintains richer and broader semantic representations than language models. Together, these results demonstrate the existence of highly abstract, form-independent meaning representations within the language cortex.
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