Probability and Statistics for Computer Science Front Cover

Probability and Statistics for Computer Science

  • Length: 367 pages
  • Edition: 1st ed. 2018
  • Publisher:
  • Publication Date: 2018-01-15
  • ISBN-10: 3319644092
  • ISBN-13: 9783319644097
  • Sales Rank: #1206369 (See Top 100 Books)
Description

This textbook is aimed at computer science undergraduates late in sophomore or early in junior year, supplying a comprehensive background in qualitative and quantitative data analysis, probability, random variables, and statistical methods, including machine learning.

With careful treatment of topics that fill the curricular needs for the course, Probability and Statistics for Computer Science features:

  • A treatment of random variables and expectations dealing primarily with the discrete case.
  • A practical treatment of simulation, showing how many interesting probabilities and expectations can be extracted, with particular emphasis on Markov chains.
  • A clear but crisp account of simple point inference strategies (maximum likelihood; Bayesian inference) in simple contexts. This is extended to cover some confidence intervals, samples and populations for random sampling with replacement, and the simplest hypothesis testing.
  • A chapter dealing with classification, explaining why it’s useful; how to train SVM classifiers with stochastic gradient descent; and how to use implementations of more advanced methods such as random forests and nearest neighbors.
  • A chapter dealing with regression, explaining how to set up, use and understand linear regression and nearest neighbors regression in practical problems.
  • A chapter dealing with principal components analysis, developing intuition carefully, and including numerous practical examples. There is a brief description of multivariate scaling via principal coordinate analysis.
  • A chapter dealing with clustering via agglomerative methods and k-means, showing how to build vector quantized features for complex signals.

Illustrated throughout, each main chapter includes many worked examples and other pedagogical elements such as boxed Procedures, Definitions, Useful Facts, and Remember This (short tips). Problems and Programming Exercises are at the end of each chapter, with a summary of what the reader should know.

Instructor resources include a full set of model solutions for all problems, and an Instructor’s Manual with accompanying presentation slides.

Table of Contents

Part I Describing Datasets
Chapter 1 First Tools For Looking At Data
Chapter 2 Looking At Relationships
Part II Probability
Chapter 3 Basic Ideas In Probability
Chapter 4 Random Variables And Expectations
Chapter 5 Useful Probability Distributions
Part III Inference
Chapter 6 Samples And Populations
Chapter 7 The Significance Of Evidence
Chapter 8 Experiments
Chapter 9 Inferring Probability Models From Data
Part IV Tools
Chapter 10 Extracting Important Relationships In High Dimensions
Chapter 11 Learning To Classify
Chapter 12 Clustering: Models Of High Dimensional Data
Chapter 13 Regression
Chapter 14 Markov Chains And Hidden Markov Models
Part V Mathematical Bits and Pieces
Chapter 15 Resources And Extras

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