Improving Fine-Tuning with Latent Cluster Correction

Thanh, Cédric Ho

arXiv.org Artificial Intelligence 

This paper proposes a novel fine-tuning method that boosts performance by optimising the formation of these latent clusters, using the Louvain community detection algorithm and a specifically designed clustering loss function. We present preliminary results that demonstrate the viability of this process on classical neural network architectures during fine-tuning on the CIFAR-100 dataset.

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