A Unified Cognitive Learning Framework for Adapting to Dynamic Environment and Tasks
Qihui Wu, Tianchen Ruan, Fuhui Zhou, Yang Huang, Fan Xu, Shijin Zhao,, Ya Liu, and Xuyang Huang

TL;DR
This paper introduces a unified cognitive learning framework inspired by primate brain mechanisms, enabling adaptive, self-learning capabilities for dynamic wireless environments and tasks, demonstrated through modulation recognition tasks.
Contribution
The paper proposes a novel cognitive learning framework that enhances adaptability and self-learning in wireless communications, inspired by biological cognitive mechanisms.
Findings
Demonstrates adaptability to dynamic environments and tasks
Shows self-learning capability in wireless scenarios
Validates effectiveness using public datasets
Abstract
Many machine learning frameworks have been proposed and used in wireless communications for realizing diverse goals. However, their incapability of adapting to the dynamic wireless environment and tasks and of self-learning limit their extensive applications and achievable performance. Inspired by the great flexibility and adaptation of primate behaviors due to the brain cognitive mechanism, a unified cognitive learning (CL) framework is proposed for the dynamic wireless environment and tasks. The mathematical framework for our proposed CL is established. Using the public and authoritative dataset, we demonstrate that our proposed CL framework has three advantages, namely, the capability of adapting to the dynamic environment and tasks, the self-learning capability and the capability of 'good money driving out bad money' by taking modulation recognition as an example. The proposed CL…
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Taxonomy
TopicsWireless Signal Modulation Classification · Domain Adaptation and Few-Shot Learning · Indoor and Outdoor Localization Technologies
MethodsSelf-Learning
