Stats terms
AIC: for prediction
Assumptions
Asymptotic: if n —>∞
Bayesian
Bias
BIC: consistent, for explanation
BLUE (best linear unbiased estimate)
Calibration: rms
CLT: if n —>∞, then an iid data distr is gaussian
Conditional
Confidence interval
Consistency: asymptotic unbiasedness
Crossvalidation: caret, rms
Data reduction: pca
Descriptive
Distribution: exponential, gamma, lognormal, normal
Efficiency: precision
Estimator
Finite sample
Gauss-Markov theorem
GEE
GLM
Hyperparameter: ML tuning
Inferential: unbiased point estimate, correct CI
Law of large numbers: if n —>∞, then x̄ =μ
Linear
Marginal
Multivariate (> 2 Ys): canonical correlation, factor analysis, mvreg, pca
Nonlinear: kernel, krls, mars (earth), splines, npreg
Nonparametric
OLS: if ε is gaussian distr, then it is a MLE
Parameter: a fixed unknown population value, e.g. mean, var
Population
Post-hoc
Prediction interval
Random variable
Regression
Sample: a random realization of infinite ways of sampling an infinite population
Sampling distribution (of a statistic, e.g. mean)
SEM
Semiparametric
Smoothing: kernel (gaussian or rbf, polynomial), local polynomial (loess), splines
Splines: B, natural, restricted cubic (rms: rcs)
Variance
留言
張貼留言