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Lazy Parameter Initialization
Lazy parameter initialization is a convenient deep learning technique where the framework automatically infers the shapes of model parameters. This dynamic shape inference makes it easier to modify network architectures and eliminates a common source of dimension mismatch errors during model construction.
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Related
Example of Weight Initialization
Vanishing/exploding gradient
Symmetry Breaking in Deep Learning
Transfer Learning in Deep Learning
Multi-task Learning in Deep Learning
Variance of Layer Output in Forward Propagation
Default Random Initialization
Xavier Initialization
Built-in Gaussian Parameter Initialization
Constant Parameter Initialization
Block-Specific Parameter Initialization
Forced Parameter Reinitialization
Custom Parameter Initialization
Direct Parameter Assignment
Lazy Parameter Initialization
How to Initialize Weights to Prevent Vanishing/Exploding Gradients