2021
DOI: 10.48550/arxiv.2110.10369
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Model Composition: Can Multiple Neural Networks Be Combined into a Single Network Using Only Unlabeled Data?

Abstract: The diversity of deep learning applications, datasets, and neural network architectures necessitates a careful selection of the architecture and data that match best to a target application. As an attempt to mitigate this dilemma, this paper investigates the idea of combining multiple trained neural networks using unlabeled data. In addition, combining multiple models into one can speed up the inference, result in stronger, more capable models, and allows us to select efficient device-friendly target network a… Show more

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