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Transfer Learning: Video Prediction and Spatiotemporal Urban Traffic Forecasting 원문보기

Algorithms, v.13 no.2, 2020년, pp.39 -   

Pavlyuk,

Abstract AI-Helper 아이콘AI-Helper

Transfer learning is a modern concept that focuses on the application of ideas, models, and algorithms, developed in one applied area, for solving a similar problem in another area. In this paper, we identify links between methodologies in two fields: video prediction and spatiotemporal traffic fore...

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