MLG 028 Hyperparameters 2

MLG 028 Hyperparameters 2

0 Umsagnir
0
Episode
26 of 58
Lengd
51Mín.
Tungumál
enska
Gerð
Flokkur
Sjálfsrækt

Notes and resources: ocdevel.com/mlg/28 Try a walking desk to stay healthy while you study or work! More hyperparameters for optimizing neural networks. A focus on regularization, optimizers, feature scaling, and hyperparameter search methods. Hyperparameter Search Techniques Grid Search • involves testing all possible permutations of hyperparameters, but is computationally exhaustive and suited for simpler, less time-consuming models. Random Search • selects random combinations of hyperparameters, potentially saving time while potentially missing the optimal solution. Bayesian Optimization • employs machine learning to continuously update and hone in on efficient hyperparameter combinations, avoiding the exhaustive or random nature of grid and random searches. Regularization in Neural Networks L1 and L2 Regularization • penalize certain parameter configurations to prevent model overfitting; often smoothing overfitted parameters. Dropout • randomly deactivates neurons during training to ensure the model doesn't over-rely on specific neurons, fostering better generalization. Optimizers Optimizers • like Adam, which combines elements of momentum and adaptive learning rates, are explained as vital tools for refining the learning process of neural networks. Adam • , being the most sophisticated and commonly used optimizer, improves upon simpler techniques like momentum by incorporating more advanced adaptative features. Initializers • The importance of weight initialization is underscored with methods like uniform random initialization • and the more advanced Xavier initialization • to prevent neural networks from starting in 'stuck' states. Feature Scaling • Different scaling methods such as standardization • and normalization • are used to scale feature inputs to small, standardized ranges. Batch Normalization • is highlighted, integrating scaling directly into the network to prevent issues like exploding and vanishing gradients through the normalization of layer outputs. Links Bayesian Optimization Optimizers (SGD): Momentum -> Adagrad -> RMSProp -> Adam -> Nadam


Hlustaðu og lestu

Stígðu inn í heim af óteljandi sögum

  • Lestu og hlustaðu eins mikið og þú vilt
  • Þúsundir titla
  • Getur sagt upp hvenær sem er
  • Engin skuldbinding
Prófa frítt
is Device Banner Block 894x1036
Cover for MLG 028 Hyperparameters 2

Other podcasts you might like ...