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Adaptation and Learning to Learn (ALL): An Integrated Approach for Small-Sample Parking Occupancy Prediction

Haohao Qu, Sheng Liu, Jun Li, Yuren Zhou, Rui Liu

2022Mathematics17 citationsDOIOpen Access PDF

Abstract

Parking occupancy prediction (POP) plays a vital role in many parking-related smart services for better parking management. However, an issue hinders its mass deployment: many parking facilities cannot collect enough data to feed data-hungry machine learning models. To tackle the challenges in small-sample POP, we propose an approach named Adaptation and Learning to Learn (ALL) by adopting the capability of advanced deep learning and federated learning. ALL integrates two novel ideas: (1) Adaptation: by leveraging the Asynchronous Advantage Actor-Critic (A3C) reinforcement learning technique, an auto-selector module is implemented, which can group and select data-scarce parks automatically as supporting sources to enable the knowledge adaptation in model training; and (2) Learning to learn: by applying federated meta-learning on selected supporting sources, a meta-learner module is designed, which can train a high-performance local prediction model in a collaborative and privacy-preserving manner. Results of an evaluation with 42 parking lots in two Chinese cities (Shenzhen and Guangzhou) show that, compared to state-of-the-art baselines: (1) the auto-selector can reduce the model variance by about 17.8%; (2) the meta-learner can train a converged model 102× faster; and (3) finally, ALL can boost the forecasting performance by about 29.8%. Through the integration of advanced machine learning methods, i.e., reinforcement learning, meta-learning, and federated learning, the proposed approach ALL represents a significant step forward in solving small-sample issues in parking occupancy prediction.

Topics & Concepts

Computer scienceReinforcement learningAdaptation (eye)Software deploymentOccupancySample (material)Machine learningAsynchronous communicationArtificial intelligenceMeta learning (computer science)Scheme (mathematics)EngineeringTask (project management)Software engineeringSystems engineeringMathematical analysisChemistryChromatographyArchitectural engineeringMathematicsOpticsComputer networkPhysicsSmart Parking Systems ResearchTraffic Prediction and Management TechniquesTraffic control and management
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