Computational Methods For Integrating Vision And Language Barnard, Kobus Morgan & Claypool Publishers |
Datacenter Design And Management: A Computer Architect's Perspective C. Lee, Benjamin Morgan & Claypool Publishers |
Resistive Random Access Memory (Rram): From Devices To Array Architectures Yu, Shimeng Morgan & Claypool Publishers |
Linked Lexical Knowledge Bases: Foundations And Applications Gurevych, Iryna / Eckle-Kohler, Judith / Matuschek, Michael Morgan & Claypool Publishers |
Ellipse Fitting For Computer Vision: Implementation And Applications Kanatani, Kenichi / Sugaya, Yasuyuki / Kanazawa, Yasushi Morgan & Claypool Publishers |
Design Of Visualizations For Human-Information Interaction: A Pattern-Based Fram Sedig, Kamran / Parsons, Paul Morgan & Claypool Publishers |
Minitab Handbook: Updated For Release 16 Ryan, Barbara / Joiner, Brian / Cryer, Jonathan Cengage Learning Editores, S.A. de C.V. |
Innovación: Desafío Para el Desarrollo en el Siglo XXI Mutis, Josè Celestino Universidad Nacional de Colombia |
Título: Probabilistic Graphical Models. Principles And Techniques | ||
Autor: Koller Daphne/ Friedman Nir | Precio: $1330.00 | |
Editorial: The Mit Press | Año: 2009 | |
Tema: Computacion, Tecnologia, Ciencia | Edición: 1ª | |
Sinopsis | ISBN: 9780262013192 | |
Most tasks require a person or an automated system to reason_to reach conclusions based on available information. The framework of probabilistic graphical models, presented in this book, provides a general approach for this task. The approach is model-based, allowing interpretable models to be constructed and then manipulated by reasoning algorithms. These models can also be learned automatically from data, allowing the approach to be used in cases where manually constructing a model is difficult or even impossible. Because uncertainty is an inescapable aspect of most real-world applications, the book focuses on probabilistic models, which make the uncertainty explicit and provide models that are more faithful to reality.
Probabilistic Graphical Models discusses a variety of models, spanning Bayesian networks, undirected Markov networks, discrete and continuous models, and extensions to deal with dynamical systems and relational data. For each class of models, the text describes the three fundamental cornerstones: representation, inference, and learning, presenting both basic concepts and advanced techniques. Finally, the book considers the use of the proposed framework for causal reasoning and decision making under uncertainty. The main text in each chapter provides the detailed technical development of the key ideas. Most chapters also include boxes with additional material: skill boxes, which describe techniques; case study boxes, which discuss empirical cases related to the approach described in the text, including applications in computer vision, robotics, natural language understanding, and computational biology; and concept boxes, which present significant concepts drawn from the material in the chapter. Instructors (and readers) can group chapters in various combinations, from core topics to more technically advanced material, to suit their particular needs. |