麻花传媒mv在线观看,欧美xxxx精品另类,国内精品久久久久久久日韩

麻豆中文字幕丨欧美一级免费在线观看丨国产成人无码av在线播放无广告丨国产第一毛片丨国产视频观看丨七妺福利精品导航大全丨国产亚洲精品自在久久vr丨国产成人在线看丨国产超碰人人模人人爽人人喊丨欧美色图激情小说丨欧美中文字幕在线播放丨老少交欧美另类丨色香蕉在线丨美女大黄网站丨蜜臀av性久久久久蜜臀aⅴ麻豆丨欧美亚洲国产精品久久蜜芽直播丨久久99日韩国产精品久久99丨亚洲黄色免费看丨极品少妇xxx丨国产美女极度色诱视频www

Chinese researchers create neural network for modeling human concept formation

Source: Xinhua

Editor: huaxia

2026-03-03 12:28:30

BEIJING, March 3 (Xinhua) -- Chinese scientists have developed a novel neural network that enables artificial intelligence (AI) to form concepts from raw sensory data like sight and sound, simulating a fundamental aspect of human cognition, according to a study published recently in the journal Nature Computational Science.

A remarkable capability of the human brain is to form more abstract conceptual representations from sensorimotor experiences and flexibly apply them independent of direct sensory inputs.

However, the computational mechanism underlying this ability was previously poorly understood. This meant that large language models were fundamentally limited by their dependence on pre-existing linguistic data, making them incapable of spontaneously generating new concepts from experiential learning.

The researchers from the Institute of Automation of the Chinese Academy of Sciences and Peking University proposed their new neural network framework, named CATS Net, as a means to overcome these limitations.

The framework consists of a concept-abstraction module and a task-solving module that can precisely instruct the framework to perform tasks like recognition and judgment when processing visual information, such as images.

The framework can also autonomously generate a vast array of new concepts, building its own unique "concept space." Once the concept space of different AI systems are aligned, they can directly transmit knowledge using these concepts, bypassing the need for retraining on raw data. Notably, this process simulates how humans communicate using language.

Via brain imaging studies, the researchers revealed that the conceptual space constructed by CATS Net aligns closely with human cognitive and linguistic logic, and its operational mode closely matches activities in the human brain's concept-processing areas.

This suggests that the model does more than just imitate brain function, shedding light on the computational mechanisms by which humans form and use concepts in the brain.