Continual Learning for Smart City: A Survey
- URL: http://arxiv.org/abs/2404.00983v1
- Date: Mon, 1 Apr 2024 07:59:29 GMT
- Title: Continual Learning for Smart City: A Survey
- Authors: Li Yang, Zhipeng Luo, Shiming Zhang, Fei Teng, Tianrui Li,
- Abstract summary: Continual learning (CL) is a novel machine learning paradigm that constantly updates models to adapt to changing environments.
Our survey provides a comprehensive review of continual learning methods that are widely used in smart city development.
- Score: 20.248023419047847
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the digitization of modern cities, large data volumes and powerful computational resources facilitate the rapid update of intelligent models deployed in smart cities. Continual learning (CL) is a novel machine learning paradigm that constantly updates models to adapt to changing environments, where the learning tasks, data, and distributions can vary over time. Our survey provides a comprehensive review of continual learning methods that are widely used in smart city development. The content consists of three parts: 1) Methodology-wise. We categorize a large number of basic CL methods and advanced CL frameworks in combination with other learning paradigms including graph learning, spatial-temporal learning, multi-modal learning, and federated learning. 2) Application-wise. We present numerous CL applications covering transportation, environment, public health, safety, networks, and associated datasets related to urban computing. 3) Challenges. We discuss current problems and challenges and envision several promising research directions. We believe this survey can help relevant researchers quickly familiarize themselves with the current state of continual learning research used in smart city development and direct them to future research trends.
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