Enhancing Federated Learning: A Novel Approach of Shapley Value Computation in Smart Contract
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- Enhancing Federated Learning: A Novel Approach of Shapley Value Computation in Smart Contract
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![cover image Guide Proceedings](/cms/asset/975d01a2-b7b9-4145-8177-57f19d01f85b/978-981-97-5666-7.cover.jpg)
- Editors:
- De-Shuang Huang,
- Chuanlei Zhang,
- Yijie Pan
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Springer-Verlag
Berlin, Heidelberg
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