

Machine Learning Algorithms in Depth - Paperback
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- Image Denoising using Mean-Field Variational Inference
- EM algorithm for Hidden Markov Models
- Imbalanced Learning, Active Learning and Ensemble Learning
- Bayesian Optimization for Hyperparameter Tuning
- Dirichlet Process K-Means for Clustering Applications
- Stock Clusters based on Inverse Covariance Estimation
- Energy Minimization using Simulated Annealing
- Image Search based on ResNet Convolutional Neural Network
- Anomaly Detection in Time-Series using Variational Autoencoders Machine Learning Algorithms in Depth dives into the design and underlying principles of some of the most exciting machine learning (ML) algorithms in the world today. With a particular emphasis on probabilistic algorithms, you'll learn the fundamentals of Bayesian inference and deep learning. You'll also explore the core data structures and algorithmic paradigms for machine learning. Each algorithm is fully explored with both math and practical implementations so you can see how they work and how they're put into action. Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications. About the technology Learn how machine learning algorithms work from the ground up so you can effectively troubleshoot your models and improve their performance. This book guides you from the core mathematical foundations of the most important ML algorithms to their Python implementations, with a particular focus on probability-based methods. About the book Machine Learning Algorithms in Depth dissects and explains dozens of algorithms across a variety of applications, including finance, computer vision, and NLP. Each algorithm is mathematically derived, followed by its hands-on Python implementation along with insightful code annotations and informative graphics. You'll especially appreciate author Vadim Smolyakov's clear interpretations of Bayesian algorithms for Monte Carlo and Markov models. What's inside - Monte Carlo stock price simulation
- EM algorithm for hidden Markov models
- Imbalanced learning, active learning, and ensemble learning
- Bayesian optimization for hyperparameter tuning
- Anomaly detection in time-series About the reader For machine learning practitioners familiar with linear algebra, probability, and basic calculus.
1 Machine learning algorithms
2 Markov chain Monte Carlo
3 Variational inference
4 Software implementation
PART 2
5 Classification algorithms
6 Regression algorithms
7 Selected supervised learning algorithms
PART 3
8 Fundamental unsupervised learning algorithms
9 Selected unsupervised learning algorithms
PART 4
10 Fundamental deep learning algorithms
11 Advanced deep learning algorithms
About the Author
Vadim Smolyakov is a data scientist in Enterprise & Security DI R&D team at Microsoft. He is a former PhD student in AI at MIT CSAIL with research interests in Bayesian inference and deep learning. Prior to joining Microsoft, Vadim developed machine learning solutions in the e-commerce space.
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Author
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- Image Denoising using Mean-Field Variational Inference
- EM algorithm for Hidden Markov Models
- Imbalanced Learning, Active Learning and Ensemble Learning
- Bayesian Optimization for Hyperparameter Tuning
- Dirichlet Process K-Means for Clustering Applications
- Stock Clusters based on Inverse Covariance Estimation
- Energy Minimization using Simulated Annealing
- Image Search based on ResNet Convolutional Neural Network
- Anomaly Detection in Time-Series using Variational Autoencoders Machine Learning Algorithms in Depth dives into the design and underlying principles of some of the most exciting machine learning (ML) algorithms in the world today. With a particular emphasis on probabilistic algorithms, you'll learn the fundamentals of Bayesian inference and deep learning. You'll also explore the core data structures and algorithmic paradigms for machine learning. Each algorithm is fully explored with both math and practical implementations so you can see how they work and how they're put into action. Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications. About the technology Learn how machine learning algorithms work from the ground up so you can effectively troubleshoot your models and improve their performance. This book guides you from the core mathematical foundations of the most important ML algorithms to their Python implementations, with a particular focus on probability-based methods. About the book Machine Learning Algorithms in Depth dissects and explains dozens of algorithms across a variety of applications, including finance, computer vision, and NLP. Each algorithm is mathematically derived, followed by its hands-on Python implementation along with insightful code annotations and informative graphics. You'll especially appreciate author Vadim Smolyakov's clear interpretations of Bayesian algorithms for Monte Carlo and Markov models. What's inside - Monte Carlo stock price simulation
- EM algorithm for hidden Markov models
- Imbalanced learning, active learning, and ensemble learning
- Bayesian optimization for hyperparameter tuning
- Anomaly detection in time-series About the reader For machine learning practitioners familiar with linear algebra, probability, and basic calculus.
1 Machine learning algorithms
2 Markov chain Monte Carlo
3 Variational inference
4 Software implementation
PART 2
5 Classification algorithms
6 Regression algorithms
7 Selected supervised learning algorithms
PART 3
8 Fundamental unsupervised learning algorithms
9 Selected unsupervised learning algorithms
PART 4
10 Fundamental deep learning algorithms
11 Advanced deep learning algorithms
About the Author
Vadim Smolyakov is a data scientist in Enterprise & Security DI R&D team at Microsoft. He is a former PhD student in AI at MIT CSAIL with research interests in Bayesian inference and deep learning. Prior to joining Microsoft, Vadim developed machine learning solutions in the e-commerce space.
Contributor(s)
Author
