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Main Authors: Li, Yuchun, Zhang, Fang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.18955
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author Li, Yuchun
Zhang, Fang
author_facet Li, Yuchun
Zhang, Fang
contents This paper explores a deep learning based robot intelligent model that renders robots learn and reason for complex tasks. First, by constructing a network of environmental factor matrix to stimulate the learning process of the robot intelligent model, the model parameters must be subjected to coarse & fine tuning to optimize the loss function for minimizing the loss score, meanwhile robot intelligent model can fuse all previously known concepts together to represent things never experienced before, which need robot intelligent model can be generalized extensively. Secondly, in order to progressively develop a robot intelligent model with primary consciousness, every robot must be subjected to at least 1~3 years of special school for training anthropomorphic behaviour patterns to understand and process complex environmental information and make rational decisions. This work explores and delivers the potential application of deep learning-based quasi-consciousness training in the field of robot intelligent model.
format Preprint
id arxiv_https___arxiv_org_abs_2501_18955
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Deep Learning based Quasi-consciousness Training for Robot Intelligent Model
Li, Yuchun
Zhang, Fang
Robotics
Artificial Intelligence
This paper explores a deep learning based robot intelligent model that renders robots learn and reason for complex tasks. First, by constructing a network of environmental factor matrix to stimulate the learning process of the robot intelligent model, the model parameters must be subjected to coarse & fine tuning to optimize the loss function for minimizing the loss score, meanwhile robot intelligent model can fuse all previously known concepts together to represent things never experienced before, which need robot intelligent model can be generalized extensively. Secondly, in order to progressively develop a robot intelligent model with primary consciousness, every robot must be subjected to at least 1~3 years of special school for training anthropomorphic behaviour patterns to understand and process complex environmental information and make rational decisions. This work explores and delivers the potential application of deep learning-based quasi-consciousness training in the field of robot intelligent model.
title Deep Learning based Quasi-consciousness Training for Robot Intelligent Model
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2501.18955