2022
DOI: 10.48550/arxiv.2206.00007
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A Cross-City Federated Transfer Learning Framework: A Case Study on Urban Region Profiling

Abstract: Data insufficiency problem (i.e., data missing and label scarcity issues) caused by inadequate services and infrastructures or unbalanced development levels of cities has seriously affected the urban computing tasks in real scenarios. Prior transfer learning methods inspire an elegant solution to the data insufficiency, but are only concerned with one kind of insufficiency issue and fail to give consideration to both sides. In addition, most previous cross-city transfer methods overlooks the inter-city data pr… Show more

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