Recommendations what to teach and what you should know at different levels in your studies (check the curriculum proposal for the of the American Statistical Association)

Level 1: Statistics 101 (BSc)

  1. Random variable, histograms, sample statistics (incl. median, IQR)
  2. distributions: estimates vs. statistics
  3. PDF, CDF; (mass function)
  4. likelihood, maximum likelihood
  5. correlation & X2-test
  6. GLM, regression
  7. Design of experiments & hypothesis testing philosophy
  8. ANOVA
  9. transformations and ranking; problem of ratios and percentages
  10. power (t-test, ANOVA)
  11. PCA, recursive partitioning (for clustering)

Level 2: Applied and Advanced Statistics (MSc, PhD)

  1. mixed models
  2. zero-inflation
  3. survival analysis (censored data, Cox-prop.hazard, Weibull-> Zucchini, GÖ)
  4. randomisation, bootstrap
  5. clustering (divisive, agglomerative), minimum spanning tree
  6. ordination (PCA, nMDS; RDA, PCoA) and permutation tests
  7. model selection, variance-bias trade-off, cross-validation
  8. optimisation, non-linear models
  9. CART, GAM
  10. prospective power by simulation

Level 3: Specific statistical topics (as separate or combined modules)

  1. Robust statistics & non-parametric statistics
  2. WinBUGS
  3. MCMC, from Metropolis to Gibbs & inverse modelling
  4. multivariate statistics: old school (CA/DCA, CCA) & cutting edge (tests, bioenv, …)
  5. time series analysis (detrending, autoregressive models, stl, spectral analysis, wavelets)
  6. geo- and spatial statistics
  7. ecological statistics (FD, SAR, richness, BDEF)
  8. ecological modelling (ODE, diff eq)
  9. scientific programming in R (for, if, vectorised, OOP, package building, docu)