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Main Authors: Chen, Jiaxuan, Qi, Yu, Wang, Yueming, Pan, Gang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.09085
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author Chen, Jiaxuan
Qi, Yu
Wang, Yueming
Pan, Gang
author_facet Chen, Jiaxuan
Qi, Yu
Wang, Yueming
Pan, Gang
contents Recent advancements in deep neural networks (DNNs), particularly large-scale language models, have demonstrated remarkable capabilities in image and natural language understanding. Although scaling up model parameters with increasing volume of training data has progressively improved DNN capabilities, achieving complex cognitive abilities - such as understanding abstract concepts, reasoning, and adapting to novel scenarios, which are intrinsic to human cognition - remains a major challenge. In this study, we show that brain-in-the-loop supervised learning, utilizing a small set of brain signals, can effectively transfer human conceptual structures to DNNs, significantly enhancing their comprehension of abstract and even unseen concepts. Experimental results further indicate that the enhanced cognitive capabilities lead to substantial performance gains in challenging tasks, including few-shot/zero-shot learning and out-of-distribution recognition, while also yielding highly interpretable concept representations. These findings highlight that human-in-the-loop supervision can effectively augment the complex cognitive abilities of large models, offering a promising pathway toward developing more human-like cognitive abilities in artificial systems.
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id arxiv_https___arxiv_org_abs_2505_09085
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Human-like Cognitive Generalization for Large Models via Brain-in-the-loop Supervision
Chen, Jiaxuan
Qi, Yu
Wang, Yueming
Pan, Gang
Machine Learning
Artificial Intelligence
Recent advancements in deep neural networks (DNNs), particularly large-scale language models, have demonstrated remarkable capabilities in image and natural language understanding. Although scaling up model parameters with increasing volume of training data has progressively improved DNN capabilities, achieving complex cognitive abilities - such as understanding abstract concepts, reasoning, and adapting to novel scenarios, which are intrinsic to human cognition - remains a major challenge. In this study, we show that brain-in-the-loop supervised learning, utilizing a small set of brain signals, can effectively transfer human conceptual structures to DNNs, significantly enhancing their comprehension of abstract and even unseen concepts. Experimental results further indicate that the enhanced cognitive capabilities lead to substantial performance gains in challenging tasks, including few-shot/zero-shot learning and out-of-distribution recognition, while also yielding highly interpretable concept representations. These findings highlight that human-in-the-loop supervision can effectively augment the complex cognitive abilities of large models, offering a promising pathway toward developing more human-like cognitive abilities in artificial systems.
title Human-like Cognitive Generalization for Large Models via Brain-in-the-loop Supervision
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2505.09085