0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R1,000 - R2,500 (3)
  • -
Status
Brand

Showing 1 - 3 of 3 matches in All Departments

Machine Learning - A First Course for Engineers and Scientists (Hardcover): Andreas Lindholm, Niklas Wahlstroem, Fredrik... Machine Learning - A First Course for Engineers and Scientists (Hardcover)
Andreas Lindholm, Niklas Wahlstroem, Fredrik Lindsten, Thomas B. Schoen
R1,752 Discovery Miles 17 520 Ships in 12 - 19 working days

This book introduces machine learning for readers with some background in basic linear algebra, statistics, probability, and programming. In a coherent statistical framework it covers a selection of supervised machine learning methods, from the most fundamental (k-NN, decision trees, linear and logistic regression) to more advanced methods (deep neural networks, support vector machines, Gaussian processes, random forests and boosting), plus commonly-used unsupervised methods (generative modeling, k-means, PCA, autoencoders and generative adversarial networks). Careful explanations and pseudo-code are presented for all methods. The authors maintain a focus on the fundamentals by drawing connections between methods and discussing general concepts such as loss functions, maximum likelihood, the bias-variance decomposition, ensemble averaging, kernels and the Bayesian approach along with generally useful tools such as regularization, cross validation, evaluation metrics and optimization methods. The final chapters offer practical advice for solving real-world supervised machine learning problems and on ethical aspects of modern machine learning.

Elements of Sequential Monte Carlo (Paperback): Christian A. Naesseth, Fredrik Lindsten, Thomas B. Schoen Elements of Sequential Monte Carlo (Paperback)
Christian A. Naesseth, Fredrik Lindsten, Thomas B. Schoen
R2,086 Discovery Miles 20 860 Ships in 10 - 15 working days

A key strategy in machine learning is to break down a problem into smaller and more manageable parts, then process data or unknown variables recursively. Sequential Monte Carlo (SMC) is a technique for solving statistical inference problems recursively. Over the last 20 years, SMC has been developed to enabled inference in increasingly complex and challenging models in Signal Processing and Statistics. This monograph shows how the powerful technique can be applied to machine learning problems such as probabilistic programming, variational inference and inference evaluation to name a few.Written in a tutorial style, Elements of Sequential Monte Carlo introduces the basics of SMC, discusses practical issues, and reviews theoretical results before guiding the reader through a series of advanced topics to give a complete overview of the topic and its application to machine learning problems. This monograph provides an accessible treatment for researchers of a topic that has recently gained significant interest in the machine learning community.

Backward Simulation Methods for Monte Carlo Statistical Inference (Paperback): Fredrik Lindsten, Thomas B. Schoen Backward Simulation Methods for Monte Carlo Statistical Inference (Paperback)
Fredrik Lindsten, Thomas B. Schoen
R2,289 Discovery Miles 22 890 Ships in 10 - 15 working days

Monte Carlo methods, in particular those based on Markov chains and on interacting particle systems, are by now tools that are routinely used in machine learning. These methods have had a profound impact on statistical inference in a wide range of application areas where probabilistic models are used. Moreover, there are many algorithms in machine learning that are based on the idea of processing the data sequentially; first in the forward direction, and then in the backward direction. Backward Simulation Methods for Monte Carlo Statistical Inference reviews a branch of Monte Carlo methods that are based on the forward-backward idea, and that are referred to as backward simulators. In recent years, the theory and practice of backward simulation algorithms have undergone a significant development, and the algorithms keep finding new applications. The foundation for these methods is sequential Monte Carlo (SMC). SMC-based backward simulators are capable of addressing smoothing problems in sequential latent variable models, such as general, nonlinear/non-Gaussian state-space models (SSMs). However, this book also clearly shows that the underlying backward simulation idea is by no means restricted to SSMs. Furthermore, backward simulation plays an important role in recent developments of Markov chain Monte Carlo (MCMC) methods. Particle MCMC is a systematic way of using SMC within MCMC. In this framework, backward simulation gives us a way to significantly improve the performance of the samplers. This monograph discusses several related backward-simulation-based methods for state inference as well as learning of static parameters, both using a frequentistic and a Bayesian approach. Backward Simulation Methods for Monte Carlo Statistical Inference is an excellent primer for anyone interested in this active research area.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Paw Patrol: Colour by Number
Paperback R50 R43 Discovery Miles 430
Christo Wiese - Risiko en Rykdom
T J Strydom Paperback R395 R370 Discovery Miles 3 700
Life and Religion of the Hindoos - With…
Joguth Chunder Gangooly Paperback R567 Discovery Miles 5 670
Patriot Xporter Core USB 3.2 Gen 1 Flash…
R199 R169 Discovery Miles 1 690
A Dictionary of Modern Slang, Cant, and…
John Camden Hotten Paperback R526 Discovery Miles 5 260
Transcend Jetflash 350 USB Flash Drive…
R101 Discovery Miles 1 010
Handbook of Research Methods on Trust…
Fergus Lyon, Guido Moellering, … Paperback R1,444 Discovery Miles 14 440
Sketches of Society and Manners in…
Arthur William Costigan Paperback R527 Discovery Miles 5 270
Kingston Technology DataTraveler Exodia…
R189 R165 Discovery Miles 1 650
Imtiaz Sooliman And The Gift Of The…
Shafiq Morton Paperback  (1)
R360 R332 Discovery Miles 3 320

 

Partners