Probability and Computing

Höfundur Michael Mitzenmacher; Eli Upfal

Útgefandi Cambridge University Press

Snið ePub

Print ISBN 9781107154889

Útgáfa 2

Höfundarréttur

7.490 kr.

Description

Efnisyfirlit

  • Cover
  • Half title
  • Title
  • Copyright
  • Dedication
  • Table of Contents
  • Preface to the Second Edition
  • Preface to the First Edition
  • 1 Events and Probability
  • 1.1 Application: Verifying Polynomial Identities
  • 1.2 Axioms of Probability
  • 1.3 Application: Verifying Matrix Multiplication
  • 1.4 Application: Naïve Bayesian Classifier
  • 1.5 Application: A Randomized Min-Cut Algorithm
  • 1.6 Exercises
  • 2 Discrete Random Variables and Expectation
  • 2.1 Random Variables and Expectation
  • 2.1.1 Linearity of Expectations
  • 2.1.2 Jensen’s Inequality
  • 2.2 The Bernoulli and Binomial Random Variables
  • 2.3 Conditional Expectation
  • 2.4 The Geometric Distribution
  • 2.4.1 Example: Coupon Collector’s Problem
  • 2.5 Application: The Expected Run-Time of Quicksort
  • 2.6 Exercises
  • 3 Moments and Deviations
  • 3.1 Markov’s Inequality
  • 3.2 Variance and Moments of a Random Variable
  • 3.2.1 Example: Variance of a Binomial Random Variable
  • 3.3 Chebyshev’s Inequality
  • 3.3.1 Example: Coupon Collector’s Problem
  • 3.4 Median and Mean
  • 3.5 Application: A Randomized Algorithm for Computing the Median
  • 3.5.1 The Algorithm
  • 3.5.2 Analysis of the Algorithm
  • 3.6 Exercises
  • 4 Chernoff and Hoeffding Bounds
  • 4.1 Moment Generating Functions
  • 4.2 Deriving and Applying Chernoff Bounds
  • 4.2.1 Chernoff Bounds for the Sum of Poisson Trials
  • 4.2.2 Example: Coin Flips
  • 4.2.3 Application: Estimating a Parameter
  • 4.3 Better Bounds for Some Special Cases
  • 4.4 Application: Set Balancing
  • 4.5 The Hoeffding Bound
  • 4.6* Application: Packet Routing in Sparse Networks
  • 4.6.1 Permutation Routing on the Hypercube
  • 4.6.2 Permutation Routing on the Butterfly
  • 4.7 Exercises
  • 5 Balls, Bins, and Random Graphs
  • 5.1 Example: The Birthday Paradox
  • 5.2 Balls into Bins
  • 5.2.1 The Balls-and-Bins Model
  • 5.2.2 Application: Bucket Sort
  • 5.3 The Poisson Distribution
  • 5.3.1 Limit of the Binomial Distribution
  • 5.4 The Poisson Approximation
  • 5.4.1* Example: Coupon Collector’s Problem, Revisited
  • 5.5 Application: Hashing
  • 5.5.1 Chain Hashing
  • 5.5.2 Hashing: Bit Strings
  • 5.5.3 Bloom Filters
  • 5.5.4 Breaking Symmetry
  • 5.6 Random Graphs
  • 5.6.1 Random Graph Models
  • 5.6.2 Application: Hamiltonian Cycles in Random Graphs
  • 5.7 Exercises
  • 5.8 An Exploratory Assignment
  • 6 The Probabilistic Method
  • 6.1 The Basic Counting Argument
  • 6.2 The Expectation Argument
  • 6.2.1 Application: Finding a Large Cut
  • 6.2.2 Application: Maximum Satisfiability
  • 6.3 Derandomization Using Conditional Expectations
  • 6.4 Sample and Modify
  • 6.4.1 Application: Independent Sets
  • 6.4.2 Application: Graphs with Large Girth
  • 6.5 The Second Moment Method
  • 6.5.1 Application: Threshold Behavior in Random Graphs
  • 6.6 The Conditional Expectation Inequality
  • 6.7 The Lovász Local Lemma
  • 6.7.1 Application: Edge-Disjoint Paths
  • 6.7.2 Application: Satisfiability
  • 6.8* Explicit Constructions Using the Local Lemma
  • 6.8.1 Application: A Satisfiability Algorithm
  • 6.9 Lovász Local Lemma: The General Case
  • 6.10* The Algorithmic Lovász Local Lemma
  • 6.11 Exercises
  • 7 Markov Chains and Random Walks
  • 7.1 Markov Chains: Definitions and Representations
  • 7.1.1 Application: A Randomized Algorithm for 2-Satisfiability
  • 7.1.2 Application: A Randomized Algorithm for 3-Satisfiability
  • 7.2 Classification of States
  • 7.2.1 Example: The Gambler’s Ruin
  • 7.3 Stationary Distributions
  • 7.3.1 Example: A Simple Queue
  • 7.4 Random Walks on Undirected Graphs
  • 7.4.1 Application: An s–t Connectivity Algorithm
  • 7.5 Parrondo’s Paradox
  • 7.6 Exercises
  • 8 Continuous Distributions and the Poisson Process
  • 8.1 Continuous Random Variables
  • 8.1.1 Probability Distributions in R
  • 8.1.2 Joint Distributions and Conditional Probability
  • 8.2 The Uniform Distribution
  • 8.2.1 Additional Properties of the Uniform Distribution
  • 8.3 The Exponential Distribution
  • 8.3.1 Additional Properties of the Exponential Distribution
  • 8.3.2* Example: Balls and Bins with Feedback
  • 8.4 The Poisson Process
  • 8.4.1 Interarrival Distribution
  • 8.4.2 Combining and Splitting Poisson Processes
  • 8.4.3 Conditional Arrival Time Distribution
  • 8.5 Continuous Time Markov Processes
  • 8.6 Example: Markovian Queues
  • 8.6.1 M/M/1 Queue in Equilibrium
  • 8.6.2 M/M/1/K Queue in Equilibrium
  • 8.6.3 The Number of Customers in an M/M/∞ Queue
  • 8.7 Exercises
  • 9 The Normal Distribution
  • 9.1 The Normal Distribution
  • 9.1.1 The Standard Normal Distribution
  • 9.1.2 The General Univariate Normal Distribution
  • 9.1.3 The Moment Generating Function
  • 9.2* Limit of the Binomial Distribution
  • 9.3 The Central Limit Theorem
  • 9.4* Multivariate Normal Distributions
  • 9.4.1 Properties of the Multivariate Normal Distribution
  • 9.5 Application: Generating Normally Distributed Random Values
  • 9.6 Maximum Likelihood Point Estimates
  • 9.7 Application: EM Algorithm For a Mixture of Gaussians
  • 9.8 Exercises
  • 10 Entropy, Randomness, and Information
  • 10.1 The Entropy Function
  • 10.2 Entropy and Binomial Coefficients
  • 10.3 Entropy: A Measure of Randomness
  • 10.4 Compression
  • 10.5* Coding: Shannon’s Theorem
  • 10.6 Exercises
  • 11 The Monte Carlo Method
  • 11.1 The Monte Carlo Method
  • 11.2 Application: The DNF Counting Problem
  • 11.2.1 The Naïve Approach
  • 11.2.2 A Fully Polynomial Randomized Scheme for DNF Counting
  • 11.3 From Approximate Sampling to Approximate Counting
  • 11.4 The Markov Chain Monte Carlo Method
  • 11.4.1 The Metropolis Algorithm
  • 11.5 Exercises
  • 11.6 An Exploratory Assignment on Minimum Spanning Trees
  • 12 Coupling of Markov Chains
  • 12.1 Variation Distance and Mixing Time
  • 12.2 Coupling
  • 12.2.1 Example: Shuffling Cards
  • 12.2.2 Example: Random Walks on the Hypercube
  • 12.2.3 Example: Independent Sets of Fixed Size
  • 12.3 Application: Variation Distance Is Nonincreasing
  • 12.4 Geometric Convergence
  • 12.5 Application: Approximately Sampling Proper Colorings
  • 12.6 Path Coupling
  • 12.7 Exercises
  • 13 Martingales
  • 13.1 Martingales
  • 13.2 Stopping Times
  • 13.2.1 Example: A Ballot Theorem
  • 13.3 Wald’s Equation
  • 13.4 Tail Inequalities for Martingales
  • 13.5 Applications of the Azuma–Hoeffding Inequality
  • 13.5.1 General Formalization
  • 13.5.2 Application: Pattern Matching
  • 13.5.3 Application: Balls and Bins
  • 13.5.4 Application: Chromatic Number
  • 13.6 Exercises
  • 14 Sample Complexity, VC Dimension, and Rademacher Complexity
  • 14.1 The Learning Setting
  • 14.2 VC Dimension
  • 14.2.1 Additional Examples of VC Dimension
  • 14.2.2 Growth Function
  • 14.2.3 VC dimension component bounds
  • 14.2.4 ε-nets and ε-samples
  • 14.3 The ε-net Theorem
  • 14.4 Application: PAC Learning
  • 14.5 The ε-sample Theorem
  • 14.5.1 Application: Agnostic Learning
  • 14.5.2 Application: Data Mining
  • 14.6 Rademacher Complexity
  • 14.6.1 Rademacher Complexity and Sample Error
  • 14.6.2 Estimating the Rademacher Complexity
  • 14.6.3 Application: Agnostic Learning of a Binary Classification
  • 14.7 Exercises
  • 15 Pairwise Independence and Universal Hash Functions
  • 15.1 Pairwise Independence
  • 15.1.1 Example: A Construction of Pairwise Independent Bits
  • 15.1.2 Application: Derandomizing an Algorithm for Large Cuts
  • 15.1.3 Example: Constructing Pairwise Independent Values Modulo a Prime
  • 15.2 Chebyshev’s Inequality for Pairwise Independent Variables
  • 15.2.1 Application: Sampling Using Fewer Random Bits
  • 15.3 Universal Families of Hash Functions
  • 15.3.1 Example: A 2-Universal Family of Hash Functions
  • 15.3.2 Example: A Strongly 2-Universal Family of Hash Functions
  • 15.3.3 Application: Perfect Hashing
  • 15.4 Application: Finding Heavy Hitters in Data Streams
  • 15.5 Exercises
  • 16 Power Laws and Related Distributions
  • 16.1 Power Law Distributions: Basic Definitions and Properties
  • 16.2 Power Laws in Language
  • 16.2.1 Zipf’s Law and Other Examples
  • 16.2.2 Languages via Optimization
  • 16.2.3 Monkeys Typing Randomly
  • 16.3 Preferential Attachment
  • 16.3.1 A Formal Version
  • 16.4 Using the Power Law in Algorithm Analysis
  • 16.5 Other Related Distributions
  • 16.5.1 Lognormal Distributions
  • 16.5.2 Power Law with Exponential Cutoff
  • 16.6 Exercises
  • 17 Balanced Allocations and Cuckoo Hashing
  • 17.1 The Power of Two Choices
  • 17.1.1 The Upper Bound
  • 17.2 Two Choices: The Lower Bound
  • 17.3 Applications of the Power of Two Choices
  • 17.3.1 Hashing
  • 17.3.2 Dynamic Resource Allocation
  • 17.4 Cuckoo Hashing
  • 17.5 Extending Cuckoo Hashing
  • 17.5.1 Cuckoo Hashing with Deletions
  • 17.5.2 Handling Failures
  • 17.5.3 More Choices and Bigger Bins
  • 17.6 Exercises
  • Further Reading
  • Index

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