Probability and Statistics for Data Science

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A01=Norman Matloff
Author_Norman Matloff
BMI Data
Board Game
calculus
Category=PBT
classification
combinatorics
Committee Problem
Continuous Random Variable
Covariance Matrix
Cover Type
Cumulative Distribution Function
data analysis
derivatives
Discrete Random Variable
duality
Dummy Variables
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Forest Cover Data
hidden Markov model
High BMI
Independent Geometric Random Variables
Independent Random Vectors
Indicator Random Variables
Key Word
Log Linear Model
machine learning
Markov chain
Mm Estimate
modeling
Monte Carlo simulation
Multivariate Normal Family
Negative Binomial
Negative Binomial Distribution
Negative Binomial Families
neural networks
predictive learning
predictive modeling
Preferential Attachment Model
probability
probability for computer science
R
Random Variable
Random Vector
social networks
statistical inference
statistical software
statistics
statistics for computer science
Vice Versa

Product details

  • ISBN 9780367260934
  • Weight: 760g
  • Dimensions: 152 x 229mm
  • Publication Date: 25 Jun 2019
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Probability and Statistics for Data Science: Math + R + Data covers "math stat"—distributions, expected value, estimation etc.—but takes the phrase "Data Science" in the title quite seriously:

* Real datasets are used extensively.

* All data analysis is supported by R coding.

* Includes many Data Science applications, such as PCA, mixture distributions, random graph models, Hidden Markov models, linear and logistic regression, and neural networks.

* Leads the student to think critically about the "how" and "why" of statistics, and to "see the big picture."

* Not "theorem/proof"-oriented, but concepts and models are stated in a mathematically precise manner.

Prerequisites are calculus, some matrix algebra, and some experience in programming.

Norman Matloff is a professor of computer science at the University of California, Davis, and was formerly a statistics professor there. He is on the editorial boards of the Journal of Statistical Software and The R Journal. His book Statistical Regression and Classification: From Linear Models to Machine Learning was the recipient of the Ziegel Award for the best book reviewed in Technometrics in 2017. He is a recipient of his university's Distinguished Teaching Award.

Norman Matloff is a professor of computer science at the University of California, Davis, and was formerly a statistics professor there. He is on the editorial boards of the Journal of Statistical Software and The R Journal. His book Statistical Regression and Classification: From Linear Models to Machine Learning was the recipient of the Ziegel Award for the best book reviewed in Technometrics in 2017. He is a recipient of his university's Distinguished Teaching Award.

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