Bioinformatics: The Machine Learning Approach, 2/e (Hardcover)
Pierre Baldi, Søren Brunak
- 出版商: MIT
- 出版日期: 2001-07-20
- 售價: $1,107
- 語言: 英文
- 頁數: 476
- 裝訂: Hardcover
- ISBN: 026202506X
- ISBN-13: 9780262025065
-
相關分類:
Machine Learning、生物資訊 Bioinformatics
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商品描述
An unprecedented
wealth of data is being generated by genome sequencing projects and other
experimental efforts to determine the structure and function of biological
molecules. The demands and opportunities for interpreting these data are
expanding rapidly. Bioinformatics is the development and application of computer
methods for management, analysis, interpretation, and prediction, as well as for
the design of experiments. Machine learning approaches (e.g., neural networks,
hidden Markov models, and belief networks) are ideally suited for areas where
there is a lot of data but little theory, which is the situation in molecular
biology. The goal in machine learning is to extract useful information from a
body of data by building good probabilistic models--and to automate the process
as much as possible.
In this book Pierre Baldi and Søren Brunak present
the key machine learning approaches and apply them to the computational problems
encountered in the analysis of biological data. The book is aimed both at
biologists and biochemists who need to understand new data-driven algorithms and
at those with a primary background in physics, mathematics, statistics, or
computer science who need to know more about applications in molecular
biology.
This new second edition contains expanded coverage of
probabilistic graphical models and of the applications of neural networks, as
well as a new chapter on microarrays and gene expression. The entire text has
been extensively revised.
Table of Contents
1 Introduction
SAMPLE CHAPTER -
DOWNLOAD PDF (1.33 MB)
2 Machine-Learning Foundations: The
Probabilistic Framework
3 Probabilistic Modeling and
Inference: Examples
4 Machine Learning Algorithms
5 Neural Networks: The Theory
6 Neural
Networks: Applications
7 Hidden Markov Models: The
Theory
8 Hidden Markov Models: Applications
9 Probabilistic Graphical Models in Bioinformatics
10 Probabilistic Models of Evolution: Phylogenetic Trees
11 Stochastic Grammars and Linguistics
12
Microarrays and Gene Expression
13 Internet Resources and
Public Databases
A Statistics
B Information Theory, Entropy, and Relative Entropy
C Probabilistic Graphical Models
D
HMM Technicalities, Scaling, Periodic Architectures, State Functions, and
Dirichlet Mixtures
E Gaussian Processes, Kernel
Methods, and Support Vector Machines
F Symbols and
Abbreviations
Reference