Tag Archives: Weight Decay
Optimization Techniques for Deep Learning: Enhancing Performance and Efficiency
Introduction Training deep neural networks presents several challenges related to memory constraints, computational resources, and convergence issues. This document explores advanced techniques that address these challenges, including optimization algorithms like Stochastic Gradient Descent (SGD), SGD with Momentum, Adam, LARS, and LAMB, as well as methods such as gradient accumulation and activation checkpointing. Optimizing the Loss…
Regularization Techniques to Improve Model Generalization
Introduction In our last discussion, we explored dropout regularization techniques, which involve randomly setting a fraction of the activations to zero during training. This helps prevent overfitting by encouraging the network to learn redundant representations and improving generalization. Today, we will extend our focus to other regularization methods, including L1 and L2 regularization, label smoothing,…
Optimizing Machine Learning Models with Effective Regularization Techniques
Introduction Regularization techniques are essential in machine learning to prevent overfitting and improve the generalization of models. These techniques add constraints or penalties to the model to reduce its complexity. In this blog, we will explore various regularization methods, their mathematical definitions, and their effects during the forward and backward passes. L1 and L2 Regularization…