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Bayesian Inference for Robust Deep Learning

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Management number 213285221 Release Date 2026/04/12 List Price $36.00 Model Number 213285221
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Bayesian modeling assesses event probabilities given prior assumptions and observations. Initially, we consider all possible outcomes when rolling two six-sided dice. There are 36 total outcomes, with 4 combinations summing to 5. Thus, the initial probability (prior) of rolling a sum of 5 is 4/36. If we know one die's value (e.g., 3), our possible values shrink to 6, requiring the other die to be 2 for a sum of 5. With a fair die, the new probability (posterior) of rolling a sum of 5 is 1/6. Bayesian statistics uses Bayes' rule to calculate posterior probabilities. In this book, we'll often discuss uncertainties in deep learning models, predicting P(|) where is a model's prediction and are its parameters. Uncertainties help develop more robust deep learning systems.

  • Revisits Bayesian modeling
  • Elucidates Bayesian inference through sampling
  • Introduces Gaussian processes
  • Lays groundwork for understanding Bayesian inference in deep learning
  • Integrates uncertainty quantification into deep learning models
Theme Science Fiction
Grenre Non-Fiction, Technical/Computer Science
Brand Name Packt Publishing
Manufacturer Packt
Material Type Paper
Age Range Description Adult, Young Adult
Educational Objective Teach Bayesian inference and its application in deep learning for robust models
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