Kernkonzepte
확률적 잠재 공간을 활용한 신경망 압축의 이론적 설명
Statistiken
KL(Pω(l)∥Peω(l))
KL(Pω(l+1)∥Peω(l+1))
Zitate
"Our new framework enables a deeper understanding of the complex interplay between network pruning and probabilistic distributions."
"Our approach effectively explains the sparsity of networks using latent spaces, shedding light on the interpretability of pruned models."