Scalable Approximate Inference and Model Selection in Gaussian Process Regression

Download Scalable Approximate Inference and Model Selection in Gaussian Process Regression PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (135 download)

DOWNLOAD NOW!


Book Synopsis Scalable Approximate Inference and Model Selection in Gaussian Process Regression by : David Burt

Download or read book Scalable Approximate Inference and Model Selection in Gaussian Process Regression written by David Burt and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Scalable and Automated Inference for Gaussian Process Models

Download Scalable and Automated Inference for Gaussian Process Models PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (144 download)

DOWNLOAD NOW!


Book Synopsis Scalable and Automated Inference for Gaussian Process Models by : Trung Van Nguyen

Download or read book Scalable and Automated Inference for Gaussian Process Models written by Trung Van Nguyen and published by . This book was released on 2015 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their ability to provide rich priors over functions is highly desirable for modeling real-world problems. Unfortunately, there exist two big challenges when doing Bayesian inference (i.e., learning the posteriors over functions) for GP models. The first is analytical intractability: The posteriors cannot be computed in closed- form when non-Gaussian likelihoods are employed. The second is scalability: The inference procedures often cannot be applied to large datasets due to their prohibitive computational costs. In this thesis, I develop practical variational inference methods to address the first challenge. Moreover, I introduce three GP models to deal with the second challenge. First, I focus on the analytical intractability challenge starting with the Gaussian process regression networks (GPRN), an expressive multi-output model with adaptive, input-dependent correlations. I derive a variational inference method with two different variational distributions to approximate the true posterior of GPRN. While one distribution is a standard Gaussian, the other is a Gaussian mixture which can capture more complex, multimodal posteriors. Both distributions are shown to be statistically efficient, requiring only a linear number of parameters to represent their inherent covariance matrices. Experimental results demonstrate clear benefits of having a multimodal variational approximation in GPRN. Next, I use the same two variational distributions to address the analytical in- tractability challenge for a large class of GP models. I show that the aforementioned statistical efficiency also stands for members of this class. I further prove that the gradients required for variational learning can either be approximated efficiently or computed analytically, regardless of the likelihood functions of the models. Based on these insights, I develop an automated variational inference method for GP models with general likelihoods. The method allows easy investigation of existing or new models without having to derive model-specific inference algorithms. I then turn to the scalability challenge, focusing on single-output and multi- output regression. The underpinning technique here is sparse GP - a GP augmented with so-called inducing points/variables that lead to lower computational demands. For single-output regression, I introduce a mixture-of-experts model (FGP) where the experts are independent sparse GPs each having their own inducing variables. Their inducing inputs further define a partitioning structure of the input space, allowing an efficient inference scheme in which computation is carried out locally by the experts. FGP can thus be K2 time faster and use K2 less memory than previous GP models, where K is the number of experts. For multi-output regression, I introduce the collaborative multi-output Gaussian process model (COGP) where the outputs are linear combinations of independent sparse GPs. Their inducing points are represented as global variables which correlate the outputs for joint learning. The variables are then exploited to derive a stochastic variational inference method that can deal with a much larger number of inputs and outputs compared to previous models. Superior empirical performance of FGP and COGP is demonstrated through extensive experiments on various real-world datasets.

Gaussian Processes for Machine Learning

Download Gaussian Processes for Machine Learning PDF Online Free

Author :
Publisher : MIT Press
ISBN 13 : 026218253X
Total Pages : 266 pages
Book Rating : 4.2/5 (621 download)

DOWNLOAD NOW!


Book Synopsis Gaussian Processes for Machine Learning by : Carl Edward Rasmussen

Download or read book Gaussian Processes for Machine Learning written by Carl Edward Rasmussen and published by MIT Press. This book was released on 2005-11-23 with total page 266 pages. Available in PDF, EPUB and Kindle. Book excerpt: A comprehensive and self-contained introduction to Gaussian processes, which provide a principled, practical, probabilistic approach to learning in kernel machines. Gaussian processes (GPs) provide a principled, practical, probabilistic approach to learning in kernel machines. GPs have received increased attention in the machine-learning community over the past decade, and this book provides a long-needed systematic and unified treatment of theoretical and practical aspects of GPs in machine learning. The treatment is comprehensive and self-contained, targeted at researchers and students in machine learning and applied statistics. The book deals with the supervised-learning problem for both regression and classification, and includes detailed algorithms. A wide variety of covariance (kernel) functions are presented and their properties discussed. Model selection is discussed both from a Bayesian and a classical perspective. Many connections to other well-known techniques from machine learning and statistics are discussed, including support-vector machines, neural networks, splines, regularization networks, relevance vector machines and others. Theoretical issues including learning curves and the PAC-Bayesian framework are treated, and several approximation methods for learning with large datasets are discussed. The book contains illustrative examples and exercises, and code and datasets are available on the Web. Appendixes provide mathematical background and a discussion of Gaussian Markov processes.

Machine learning using approximate inference

Download Machine learning using approximate inference PDF Online Free

Author :
Publisher : Linköping University Electronic Press
ISBN 13 : 9176851613
Total Pages : 39 pages
Book Rating : 4.1/5 (768 download)

DOWNLOAD NOW!


Book Synopsis Machine learning using approximate inference by : Christian Andersson Naesseth

Download or read book Machine learning using approximate inference written by Christian Andersson Naesseth and published by Linköping University Electronic Press. This book was released on 2018-11-27 with total page 39 pages. Available in PDF, EPUB and Kindle. Book excerpt: Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubiquitous in our everyday life. The systems we design, and technology we develop, requires us to coherently represent and work with uncertainty in data. Probabilistic models and probabilistic inference gives us a powerful framework for solving this problem. Using this framework, while enticing, results in difficult-to-compute integrals and probabilities when conditioning on the observed data. This means we have a need for approximate inference, methods that solves the problem approximately using a systematic approach. In this thesis we develop new methods for efficient approximate inference in probabilistic models. There are generally two approaches to approximate inference, variational methods and Monte Carlo methods. In Monte Carlo methods we use a large number of random samples to approximate the integral of interest. With variational methods, on the other hand, we turn the integration problem into that of an optimization problem. We develop algorithms of both types and bridge the gap between them. First, we present a self-contained tutorial to the popular sequential Monte Carlo (SMC) class of methods. Next, we propose new algorithms and applications based on SMC for approximate inference in probabilistic graphical models. We derive nested sequential Monte Carlo, a new algorithm particularly well suited for inference in a large class of high-dimensional probabilistic models. Then, inspired by similar ideas we derive interacting particle Markov chain Monte Carlo to make use of parallelization to speed up approximate inference for universal probabilistic programming languages. After that, we show how we can make use of the rejection sampling process when generating gamma distributed random variables to speed up variational inference. Finally, we bridge the gap between SMC and variational methods by developing variational sequential Monte Carlo, a new flexible family of variational approximations.

A Scalable and Flexible Framework for Gaussian Processes Via Matrix-vector Multiplication

Download A Scalable and Flexible Framework for Gaussian Processes Via Matrix-vector Multiplication PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : 213 pages
Book Rating : 4.:/5 (124 download)

DOWNLOAD NOW!


Book Synopsis A Scalable and Flexible Framework for Gaussian Processes Via Matrix-vector Multiplication by : Geoff Pleiss

Download or read book A Scalable and Flexible Framework for Gaussian Processes Via Matrix-vector Multiplication written by Geoff Pleiss and published by . This book was released on 2020 with total page 213 pages. Available in PDF, EPUB and Kindle. Book excerpt: Gaussian processes (GPs) exhibit a classic tension of many machine learning methods: they possess desirable modelling capabilities yet suffer from important practical limitations. In many instances, GPs are able to offer well-calibrated uncertainty estimates, interpretable predictions, and the ability to encode prior knowledge. These properties have made them an indispensable tool for black-box optimization, time series forecasting, and high-risk applications like health care. Despite these benefits, GPs are typically not applied to datasets with more than a few thousand data points. This is in part due to an inference procedure that requires matrix inverses, determinants, and other expensive operations. Moreover, specialty models often require significant implementation efforts. This thesis aims to alleviate these practical concerns through a single simple design decision. Taking inspiration from neural network libraries, we construct GP inference algorithms using only matrix-vector multiplications (MVMs) and other linear operations. This MVM-based approach simultaneously address several of these practical concerns: it reduces asymptotic complexity, effectively utilizes GPU hardware, and provides straight-forward implementations for many specialty GP models. The chapters of this thesis each address a different aspect of Gaussian process inference. Chapter 3 introduces a MVM method for training Gaussian process regression models (i.e. optimizing kernel/likelihood hyperparameters). This approach unifies several existing methods into a highly-parallel and stable algorithm. Chapter 4 focuses on making predictions with Gaussian processes. A memory-efficient cache, which can be computed through MVMs, significantly reduces the computation of predictive distributions. Chapter 5 introduces a multi-purpose MVM algorithm that can be used to draw samples from GP posteriors and perform approximate Gaussian process inference. All three of these methods offer speedups ranging from 4x to 40x. Importantly, applying any of these algorithms to specialty models (e.g. multitask GPs and scalable approximations) simply requires a matrix-vector multiplication routine that exploits covariance structure afforded by the model. The MVM methods from this thesis form the building blocks of the GPyTorch library, an open-sourced GP implementation designed for scalability and simple implementations. In the final chapter, we evaluate GPyTorch models on several large-scale regression datasets. Using the proposed MVM methods, we can apply exact Gaussian processes to datasets that are 2 orders of magnitude larger than what has previously been reported - up to 1 million data points.

Efficient Reinforcement Learning Using Gaussian Processes

Download Efficient Reinforcement Learning Using Gaussian Processes PDF Online Free

Author :
Publisher : KIT Scientific Publishing
ISBN 13 : 3866445695
Total Pages : 226 pages
Book Rating : 4.8/5 (664 download)

DOWNLOAD NOW!


Book Synopsis Efficient Reinforcement Learning Using Gaussian Processes by : Marc Peter Deisenroth

Download or read book Efficient Reinforcement Learning Using Gaussian Processes written by Marc Peter Deisenroth and published by KIT Scientific Publishing. This book was released on 2010 with total page 226 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book examines Gaussian processes in both model-based reinforcement learning (RL) and inference in nonlinear dynamic systems.First, we introduce PILCO, a fully Bayesian approach for efficient RL in continuous-valued state and action spaces when no expert knowledge is available. PILCO takes model uncertainties consistently into account during long-term planning to reduce model bias. Second, we propose principled algorithms for robust filtering and smoothing in GP dynamic systems.

MODEL SELECTION FOR GAUSSIAN PROCESS REGRESSION BY APPROXIMATION SET CODING

Download MODEL SELECTION FOR GAUSSIAN PROCESS REGRESSION BY APPROXIMATION SET CODING PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (953 download)

DOWNLOAD NOW!


Book Synopsis MODEL SELECTION FOR GAUSSIAN PROCESS REGRESSION BY APPROXIMATION SET CODING by : Benjamin Fischer

Download or read book MODEL SELECTION FOR GAUSSIAN PROCESS REGRESSION BY APPROXIMATION SET CODING written by Benjamin Fischer and published by . This book was released on 2016 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Scalable Inference for Structured Gaussian Process Models

Download Scalable Inference for Structured Gaussian Process Models PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (89 download)

DOWNLOAD NOW!


Book Synopsis Scalable Inference for Structured Gaussian Process Models by : Yunus Saatçi

Download or read book Scalable Inference for Structured Gaussian Process Models written by Yunus Saatçi and published by . This book was released on 2012 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Scalable Inference in Latent Gaussian Process Models

Download Scalable Inference in Latent Gaussian Process Models PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (115 download)

DOWNLOAD NOW!


Book Synopsis Scalable Inference in Latent Gaussian Process Models by : Florian Wenzel

Download or read book Scalable Inference in Latent Gaussian Process Models written by Florian Wenzel and published by . This book was released on 2020 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Pattern Recognition Applications and Methods

Download Pattern Recognition Applications and Methods PDF Online Free

Author :
Publisher : Springer
ISBN 13 : 3319533754
Total Pages : 260 pages
Book Rating : 4.3/5 (195 download)

DOWNLOAD NOW!


Book Synopsis Pattern Recognition Applications and Methods by : Ana Fred

Download or read book Pattern Recognition Applications and Methods written by Ana Fred and published by Springer. This book was released on 2017-02-08 with total page 260 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book contains revised and extended versions of selected papers from the 5th International Conference on Pattern Recognition, ICPRAM 2016, held in Rome, Italy, in February 2016. The 13 full papers were carefully reviewed and selected from 125 initial submissions and describe up-to-date applications of pattern recognition techniques to real-world problems, interdisciplinary research, experimental and/or theoretical studies yielding new insights that advance pattern recognition methods.

Learning Kernel Classifiers

Download Learning Kernel Classifiers PDF Online Free

Author :
Publisher : MIT Press
ISBN 13 : 0262546590
Total Pages : 393 pages
Book Rating : 4.2/5 (625 download)

DOWNLOAD NOW!


Book Synopsis Learning Kernel Classifiers by : Ralf Herbrich

Download or read book Learning Kernel Classifiers written by Ralf Herbrich and published by MIT Press. This book was released on 2022-11-01 with total page 393 pages. Available in PDF, EPUB and Kindle. Book excerpt: An overview of the theory and application of kernel classification methods. Linear classifiers in kernel spaces have emerged as a major topic within the field of machine learning. The kernel technique takes the linear classifier—a limited, but well-established and comprehensively studied model—and extends its applicability to a wide range of nonlinear pattern-recognition tasks such as natural language processing, machine vision, and biological sequence analysis. This book provides the first comprehensive overview of both the theory and algorithms of kernel classifiers, including the most recent developments. It begins by describing the major algorithmic advances: kernel perceptron learning, kernel Fisher discriminants, support vector machines, relevance vector machines, Gaussian processes, and Bayes point machines. Then follows a detailed introduction to learning theory, including VC and PAC-Bayesian theory, data-dependent structural risk minimization, and compression bounds. Throughout, the book emphasizes the interaction between theory and algorithms: how learning algorithms work and why. The book includes many examples, complete pseudo code of the algorithms presented, and an extensive source code library.

Scalable Gaussian Process Inference Using Variational Methods

Download Scalable Gaussian Process Inference Using Variational Methods PDF Online Free

Author :
Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (16 download)

DOWNLOAD NOW!


Book Synopsis Scalable Gaussian Process Inference Using Variational Methods by : Alexander Graeme de Garis Matthews

Download or read book Scalable Gaussian Process Inference Using Variational Methods written by Alexander Graeme de Garis Matthews and published by . This book was released on 2017 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Bayesian Time Series Models

Download Bayesian Time Series Models PDF Online Free

Author :
Publisher : Cambridge University Press
ISBN 13 : 0521196760
Total Pages : 432 pages
Book Rating : 4.5/5 (211 download)

DOWNLOAD NOW!


Book Synopsis Bayesian Time Series Models by : David Barber

Download or read book Bayesian Time Series Models written by David Barber and published by Cambridge University Press. This book was released on 2011-08-11 with total page 432 pages. Available in PDF, EPUB and Kindle. Book excerpt: The first unified treatment of time series modelling techniques spanning machine learning, statistics, engineering and computer science.

Graphical Models for Machine Learning and Digital Communication

Download Graphical Models for Machine Learning and Digital Communication PDF Online Free

Author :
Publisher : MIT Press
ISBN 13 : 9780262062022
Total Pages : 230 pages
Book Rating : 4.0/5 (62 download)

DOWNLOAD NOW!


Book Synopsis Graphical Models for Machine Learning and Digital Communication by : Brendan J. Frey

Download or read book Graphical Models for Machine Learning and Digital Communication written by Brendan J. Frey and published by MIT Press. This book was released on 1998 with total page 230 pages. Available in PDF, EPUB and Kindle. Book excerpt: Content Description. #Includes bibliographical references and index.

Using Inertial Sensors for Position and Orientation Estimation

Download Using Inertial Sensors for Position and Orientation Estimation PDF Online Free

Author :
Publisher :
ISBN 13 : 9781680833560
Total Pages : 174 pages
Book Rating : 4.8/5 (335 download)

DOWNLOAD NOW!


Book Synopsis Using Inertial Sensors for Position and Orientation Estimation by : Manon Kok

Download or read book Using Inertial Sensors for Position and Orientation Estimation written by Manon Kok and published by . This book was released on 2018-01-31 with total page 174 pages. Available in PDF, EPUB and Kindle. Book excerpt: Microelectromechanical system (MEMS) inertial sensors have become ubiquitous in modern society. Built into mobile telephones, gaming consoles, virtual reality headsets, we use such sensors on a daily basis. They also have applications in medical therapy devices, motion-capture filming, traffic monitoring systems, and drones. While providing accurate measurements over short time scales, this diminishes over longer periods. To date, this problem has been resolved by combining them with additional sensors and models. This adds both expense and size to the devices. This tutorial focuses on the signal processing aspects of position and orientation estimation using inertial sensors. It discusses different modelling choices and a selected number of important algorithms that engineers can use to select the best options for their designs. The algorithms include optimization-based smoothing and filtering as well as computationally cheaper extended Kalman filter and complementary filter implementations. Engineers, researchers, and students deploying MEMS inertial sensors will find that this tutorial is an essential monograph on how to optimize their designs.

Nonparametric Regression Methods for Longitudinal Data Analysis

Download Nonparametric Regression Methods for Longitudinal Data Analysis PDF Online Free

Author :
Publisher : John Wiley & Sons
ISBN 13 : 0470009667
Total Pages : 401 pages
Book Rating : 4.4/5 (7 download)

DOWNLOAD NOW!


Book Synopsis Nonparametric Regression Methods for Longitudinal Data Analysis by : Hulin Wu

Download or read book Nonparametric Regression Methods for Longitudinal Data Analysis written by Hulin Wu and published by John Wiley & Sons. This book was released on 2006-05-12 with total page 401 pages. Available in PDF, EPUB and Kindle. Book excerpt: Incorporates mixed-effects modeling techniques for more powerful and efficient methods This book presents current and effective nonparametric regression techniques for longitudinal data analysis and systematically investigates the incorporation of mixed-effects modeling techniques into various nonparametric regression models. The authors emphasize modeling ideas and inference methodologies, although some theoretical results for the justification of the proposed methods are presented. With its logical structure and organization, beginning with basic principles, the text develops the foundation needed to master advanced principles and applications. Following a brief overview, data examples from biomedical research studies are presented and point to the need for nonparametric regression analysis approaches. Next, the authors review mixed-effects models and nonparametric regression models, which are the two key building blocks of the proposed modeling techniques. The core section of the book consists of four chapters dedicated to the major nonparametric regression methods: local polynomial, regression spline, smoothing spline, and penalized spline. The next two chapters extend these modeling techniques to semiparametric and time varying coefficient models for longitudinal data analysis. The final chapter examines discrete longitudinal data modeling and analysis. Each chapter concludes with a summary that highlights key points and also provides bibliographic notes that point to additional sources for further study. Examples of data analysis from biomedical research are used to illustrate the methodologies contained throughout the book. Technical proofs are presented in separate appendices. With its focus on solving problems, this is an excellent textbook for upper-level undergraduate and graduate courses in longitudinal data analysis. It is also recommended as a reference for biostatisticians and other theoretical and applied research statisticians with an interest in longitudinal data analysis. Not only do readers gain an understanding of the principles of various nonparametric regression methods, but they also gain a practical understanding of how to use the methods to tackle real-world problems.

Introducing Monte Carlo Methods with R

Download Introducing Monte Carlo Methods with R PDF Online Free

Author :
Publisher : Springer Science & Business Media
ISBN 13 : 1441915753
Total Pages : 297 pages
Book Rating : 4.4/5 (419 download)

DOWNLOAD NOW!


Book Synopsis Introducing Monte Carlo Methods with R by : Christian Robert

Download or read book Introducing Monte Carlo Methods with R written by Christian Robert and published by Springer Science & Business Media. This book was released on 2010 with total page 297 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book covers the main tools used in statistical simulation from a programmer’s point of view, explaining the R implementation of each simulation technique and providing the output for better understanding and comparison.