Gram Matrix for Feature Map Relationships
In relation-based knowledge transfer, feature map relationships between two neural network layers can be modeled using a Gram matrix. This matrix summarizes relations by calculating the inner products between pairs of feature maps from the two layers. Singular Value Decomposition (SVD) is then applied to the resulting Gram matrix to extract essential information from these feature map correlations.
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Deep Learning (in Machine learning)
Data Science
Computing Sciences
Related
Knowledge Distillation Methods
Distillation Loss for Relation-Based Knowledge
Gram Matrix for Feature Map Relationships
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Gram Matrix for Feature Map Relationships
Left-singular Vectors
Right-singular Vectors
Kalman (1996)
Singular Values
Gram Matrix for Feature Map Relationships