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L2 Regularization

See Weight Decay.

$L_{2}$ Regularization or Weight Decay, is a regularization technique applied to the weights of a neural network. We minimize a loss function compromising both the primary loss function and a penalty on the $L_{2}$ Norm of the weights:

$$L_{new}\left(w\right) = L_{original}\left(w\right) + \lambda{w^{T}w}$$

where $\lambda$ is a value determining the strength of the penalty (encouraging smaller weights).

Weight decay can be incorporated directly into the weight update rule, rather than just implicitly by defining it through to objective function. Often weight decay refers to the implementation where we specify it directly in the weight update rule (whereas L2 regularization is usually the implementation which is specified in the objective function).

Papers

Showing 3140 of 128 papers

TitleStatusHype
Gradient-based bilevel optimization for multi-penalty Ridge regression through matrix differential calculusCode0
The Transient Nature of Emergent In-Context Learning in TransformersCode1
On sparse regression, Lp-regularization, and automated model discovery0
Maintaining Plasticity in Continual Learning via Regenerative Regularization0
Less is More -- Towards parsimonious multi-task models using structured sparsityCode0
Maintaining Plasticity in Deep Continual LearningCode2
Dropout Regularization Versus _2-Penalization in the Linear Model0
Rotational Equilibrium: How Weight Decay Balances Learning Across Neural NetworksCode1
It's Enough: Relaxing Diagonal Constraints in Linear Autoencoders for RecommendationCode1
Electromyography Signal Classification Using Deep Learning0
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