Skip to content

Latest commit

 

History

History

Spatial

Folders and files

NameName
Last commit message
Last commit date

parent directory

..
 
 
 
 
 
 
 
 
 
 

Courses

Course material for USC PM522b Statistical Inference, USC PM569 Spatial Statistics and USC PM566 Introduction to Health Data Science.

Statistical Inference:

Course text Casella and Berger Statistical Inference, 2nd ed. 2002
  • Slides 1: Random sampling, sampling distributions, order statistics.
  • Slides 2: Sufficiency principle (sufficient, minimal sufficient, complete sufficient statistics), ancillary statistics, Basu's Theorem, Likelihood principle.
  • Slides 3: Methods for finding point estimators including maximum likelihood, numerical methods for maximum likelihood, moment generating functions, method of moments.
  • Slides 4: Evaluating estimators -- bias, MSE, MVUE
  • Slides 5: Hypothesis testing and interval estimation
  • Slides 6: Asymptotic evaluations -- consistency, effeciency, robustness, asymptotic LRT, asymptotic interval estimates, bootstrap.
  • Slides 7: ANOVA and linear regression

Spatial Statistics:

  • Introduction: spatial data and spatial data types
  • Geostatistics 1: spatial semivariance and covariance
  • Geostatistics 2: fitting semivariogram and covariance functions
  • Geostatistics 3: kriging and spatial interpolation
  • Areal 1: neighbourhoods and adjacency
  • Areal 2: global and local measures of association
  • Areal 3: spatial autoregressive models
  • Point pattern 1: Poisson processes and complete spatial randomness
  • Point pattern 2: Point process modeling and cluster detection
  • Point pattern 3: Markov modeling and inhibition processes

Data Science:

  • Check out the course here