Here is
PART 1 왕초보 통계 (BASICS)
1-1. 수학 성적을 비교하라 (Comparison of continuous variables) *
1-2. 합격률을 비교하라(Comparison of ratio/proportion ) *
https://tinyurl.com/table2mosaic
1-3. 샘플 수의 계산(Sample Size Calculation) *
https://goo.gl/klfbW5
>> https://tinyurl.com/MY-sample-size
1-4. Randomization
https://tinyurl.com/Simple-Randomization
https://tinyurl.com/Block-Randomization
https://tinyurl.com/Random-Conceal
>> https://tinyurl.com/Adaptive-randomization
1-5. Baseline Table *
https://tinyurl.com/Baseline-Table
>> https://tinyurl.com/crosstable
>>.https://tinyurl.com/D-Baseline
= https://tinyurl.com/D-Baseline2
= https://tinyurl.com/D-Baseline3
>>Explore Plot *
https://tinyurl.com/plot4explore
>> https://tinyurl.com/D-Explorer
= https://tinyurl.com/D-Explorer2
= https://tinyurl.com/D-Explorer3
>>Confidence Intervals
https://tinyurl.com/C-Intervals
1-6. Adverse Events *
https://tinyurl.com/Adverse-Events-plot
1-7. Logistic Regression *
https://tinyurl.com/Logistic-and-OR-plot
= https://tinyurl.com/Logistic-and-OR2
1-8. Sensitivity, Specificity *
https://tinyurl.com/2by2table
= https://tinyurl.com/2by2table-II
PART 2 설문 조사 연구 (Survey Research)
2-1. Correlation 상관분석 *
>>Repeated Measures Correlation *
https://tinyurl.com/Repeated-Correlation
2-2. Partial Correlation 편상관분석
https://tinyurl.com/partial-Correlations
2-3. Canonical Correlation 정준 상관 분석
https://tinyurl.com/Canonical-Correlation
2-4. Factor Analysis 요인 분석 주성분분석
https://tinyurl.com/factor-analysis
>> 주성분분석
https://tinyurl.com/Plot-PCA
>> Local Fisher Discriminant Analysis
https://tinyurl.com/FisherDiscriminant
2-5. Cluster Analysis 군집분석
https://tinyurl.com/K-means-and-plot
https://tinyurl.com/Partitioning-Around-Medoids
https://tinyurl.com/Dendrograms2
http://tinyurl.com/simple-Heatmap
http://tinyurl.com/Heatmap2
2-6. Cronbach alpha *
https://tinyurl.com/Cronbach-al
2-7. Q method
https://tinyurl.com/Q-methodology
Q method.xlsx(https://tinyurl.com/Q-Cards
https://youtu.be/vyQjxh4Vc64
>> Association Analysis 연관 분석
https://tinyurl.com/Asso-Anal
PART 3 탐색적 분석 및 데이터 전처리 (Exploratory Analysis and Data Preparation)
3-1. Table plot 초기 탐색(Initial Exploratory Analysis) *
>>Parallel Coordinate Plot
https://tinyurl.com/Parallel-Plot
>>Alluvial Diagrams
https://tinyurl.com/Alluvial-Diagram
>>Combination Count Plot
https://tinyurl.com/Combi-Plot2
>>Correlation Funnel Plot
https://tinyurl.com/Correlation-Funnel
3-2. Outliers & Missing 이상값과 결측값 *
https://tinyurl.com/Outliers-Mahalanobis
>>See Missing data *
https://tinyurl.com/4Missing
>>How to treat missing data *
https://tinyurl.com/missing-treat
3-3. Grapical Normality test 정규성 검정
https://tinyurl.com/Histogram-QQ
3-4. Homogeneity of Variance 등분산성 검정
https://tinyurl.com/Homogeneity-Variance
3-5. Standardization 표준화
https://tinyurl.com/easy-Standard
3-6. Tukey Ladder of Powers
https://tinyurl.com/Ladder-Powers
3-7. Box Cox Transformation
https://tinyurl.com/BoxCox-Trans
>> https://tinyurl.com/Box-Coxes *
3-8. Dummy 변수 만들기 (Create a dummy variable) *
https://tinyurl.com/Create-dummy
3-9. Frequency data 바꾸기 *
https://tinyurl.com/Original-freqency
추가> https://tinyurl.com/categorical-pivot
추가> https://tinyurl.com/R-Pivot-table *
3-10. 두 데이터 차이 발견하기 (Discovering differences from two data ) *
https://tinyurl.com/Find-Diff-in2
https://youtu.be/4awqs0z9Emw
3-11. 두 데이터 합치기 Merge *
https://tinyurl.com/Data2Merge
. >> https://tinyurl.com/Data-Merge2
3-12. 연속변수를 집단변수로(Replace continuous variables to nominal variables) *
https://tinyurl.com/conti2ord
>> 연속변수를 등구간 연속변수로
https://tinyurl.com/Tile-Plot
3-13. Wide data and Long data *
https://tinyurl.com/wide-long
3-14. Matching tool *
http://tinyurl.com/Matching4Cohort
3-15. Propensity Score Matching *
https://tinyurl.com/PS-Matching
>>https://tinyurl.com/PS-Matching2
>> https://tinyurl.com/PS-Matching3
>>3-16 Random Selection *
>> https://tinyurl.com/Rand-Sel
>> data transformation
다양한 형태의 데이터를 csv로 전환
SPSS, Stata, SAS 데이터 등
https://tinyurl.com/data-trans
PART 4 단변수 분석 (Univariable Analysis)
4-1. Multiple Impute & t-test
>>Bayesian t-test
https://tinyurl.com/Bayes-inf
>> ANOVA alternatives *
>> https://tinyurl.com/ANOVA-alter
4-2. Multifactor ANOVA
https://tinyurl.com/multifactor-ANOVA
>>Nonparametric Two-Way ANOVA
https://tinyurl.com/Nonpara2ANOVA
4-3. ANCOVA
https://tinyurl.com/ANCOVA-plot
4-4. ANOVA, RM ANOVA, Friedman Test
http://tinyurl.com/violins4explorers
>> Durbin test refer to wikipedia
https://tinyurl.com/Durbin-test
4-5. (RM) ANOVA *
https://tinyurl.com/Plot-with-error-bar
= https://tinyurl.com/Plot-error-bar
-> https://tinyurl.com/full-ANOVA
>> Several Nonparametric K-Sample Tests
https://tinyurl.com/Nonparametric-ss
4-6. 비모수 다중 검정 (Nonparametric multiple test)
https://tinyurl.com/Nonpa-mul-test
4-7. 카이제곱 적합도 검정 (Chi-Squared Goodness of Fit Test) *
http://tinyurl.com/Spie-Chart
4-8. 카이제곱검정(I) (Chi-Squared Test) *
https://tinyurl.com/Iceburg-Plot
4-9. 카이제곱검정(II) (Chi-Squared Test)
https://tinyurl.com/castle-plot
>> Barnard test
https://tinyurl.com/Barnard2x2
>>Barnard-Boschloo-Exact_test
https://tinyurl.com/Barnard-Boschloo-test
4-10. Mantel-Haenszel test(I) *
https://tinyurl.com/Mantel-Haenszel-plot
4-11. Mantel-Haenszel test(II)
https://tinyurl.com/Cochran-Mantel-Haenszel
4-12. McNemar and Cochran Q *
https://tinyurl.com/McNemar-Cochran
4-13. Survival Analysis *
https://tinyurl.com/compare-KM-curves
= https://tinyurl.com/compare-KM
= https://tinyurl.com/compare-KM2
> https://tinyurl.com/KMnTable
= https://tinyurl.com/KMnNoRisk
4-14. Restricted Mean Survival Time *
https://tinyurl.com/RMST-RMTL
4-15. Competing Risks *
https://tinyurl.com/Competing-Risks
= https://tinyurl.com/Competing-Risks2
>>https://tinyurl.com/Survival-Curves
4-16. Matrix Correlations *
http://tinyurl.com/matrix-scatterplot3
>>Many Correlations *
https://tinyurl.com/Peasy-Correlation
>> https://tinyurl.com/Many-Correlation
4-17. Sequential Triangular Test *
https://tinyurl.com/Sequential-Triangular
4-18. N-of-1 trials
https://tinyurl.com/Nof1trials
4-19. 기타 잡다한 통계 (Other miscellaneous statistics) *
http://tinyurl.com/Many-tests
Shapiro-Wilk normality test, Cramer-von Mises normality test, Lilliefors (Kolmogorov-Smirnov) normality test, Pearson chi-square normality test, Shapiro-Francia normality test, Anderson Darling Test, Robust Jarque Bera test, Bartels Ratio test, Breusch-Godfrey test, Cochran-Armitage test for trend, Stuart-Maxwell test, Cochran’s Q test, Conover’s test of multiple comparisons, Kruskal-Wallis rank sum test, Log likelihood ratio (G-test) test, Jonckheere-Terpstra test, Kendall Tau A, Kendall Tau B, Moses of Extreme Reactions Nemenyi’s test of multiple comparisons, Page test for ordered alternatives, Friedman rank sum test, Runs Test for Randomness, Wald Wolfowitz runs test. Siegel-Tukey-test for equal variability, Mood two-sample test of scale, Ansari-Bradley test, Dependent-samples Sign-Test, Wilcoxon signed rank test, F test to compare two variances, Fligner-Killeen test of homogeneity of variances, Yuen Two Sample t-test, Yuen Paired t-test, Von Neumann Successive Difference Test
4-20. Text Mining *
https://tinyurl.com/Text-Miner
PART 5 다변수 분석 (Multivariable Analysis)
5-0. VIF *
5-1. Generalized LM *
https://tinyurl.com/Generalized-LM
>> Coefficients Plot
http://tinyurl.com/Coefficients-Plot
>>https://tinyurl.com/Coefficients-Plot2
>> regression table *
>> https://tinyurl.com/regression-table
>>Poisson Regression
>> https://tinyurl.com/Poisson-R
5-2. Residual Plots *
https://tinyurl.com/residual-plots-linear-model
>> https://tinyurl.com/model-diagnostics
>>Diagnostic Plot
http://tinyurl.com/Diagnostic-Plot
5-3. Calibration Plot *
https://tinyurl.com/calibration-plot
>>Modified Hosmer-Lemeshow Test for Large Samples
https://tinyurl.com/Modified-HL
5-4. Logistic Comparison *
https://tinyurl.com/Logistic-Comparison
= https://tinyurl.com/Logistic-Comparison-II
5-5. Conditional Logistic R
https://tinyurl.com/Conditional-Logistic-R
5-6. Multinomial Logistic R
https://tinyurl.com/Multinomial-Logistic
5-7. Ordinal Logistic R
https://tinyurl.com/Ordinal-Logistic
.
5-8. Cox Regression *
https://tinyurl.com/Cox-and-HR-plot
= https://tinyurl.com/Cox-and-HR-plot2
>>Cox regression and Hazard ratio table Plot
https://tinyurl.com/Cox-HR-plot
>> Stratified Cox regression
https://tinyurl.com/Stratified-Cox
>> Aalen's additive regression model for censored data
>> https://tinyurl.com/Aalen-regression
>> Cohort Plot
https://tinyurl.com/Cohort-Plot
5-9. Many survival models
http://tinyurl.com/many-survival
5-10. Nested survival analysis
https://tinyurl.com/Nested-survival
5-11. Time dependent / Recurrent Survival
https://tinyurl.com/Time-depend-Surv
5-12. Nomogram *
https://tinyurl.com/Cox-Logistic-Nomogram
5-13. Poisson Regression
https://tinyurl.com/Poisson-and-OR-plot
5-14. Multiple Imputation
https://tinyurl.com/Multiple-Imputaion-Multivar
5-15. Generalized Estimating Equation
https://tinyurl.com/Spaghetti-Plot-for-longitudial
>> Linear Mixed Effects Model
https://tinyurl.com/EZ-LME
5-16. MANOVA
https://tinyurl.com/2way-MANOVA
>>https://tinyurl.com/2w-MANOVA
https://tinyurl.com/Hotelling-Test
https://tinyurl.com/PERMANOVA
5-17. Dose-response analysis
https://tinyurl.com/dose-response-curve
>> Principal Component and Partial Least Squares Regression
https://tinyurl.com/Prediction-PC-PLS
PART 6 결정나무와 판별분석 (Decision Tree & Discriminant Prediction)
6-1. Discriminant Prediction 판별분석
6-2. Decision Tree 결정나무 *
6-3. Random Forest 예측모형 *
>> 연관 분석 Association Analysis
https://tinyurl.com/Asso-Anal
>> Local Fisher Discriminant Analysis
https://tinyurl.com/FisherDiscriminant
PART 7 진단 관련 (Diagnosis related statistics)
7-1. 민감도 특이도 비교(Sensitivity specificity comparison) *
7-2. Kappa and Agreement *
>> Gwet Scott agreement
https://tinyurl.com/Gwet-Scott
7-3. IntraClass Correlation *
https://tinyurl.com/Bland-Altman
= https://tinyurl.com/Bland-Altman2
>> https://tinyurl.com/BA-plots
>> https://tinyurl.com/SimplyAgree
7-4. ROC curve *
https://tinyurl.com/ROC-pretty
= https://tinyurl.com/ROC-pretty2
>> Understand ROC
https://tinyurl.com/Understand-ROC
https://tinyurl.com/Understand-ROC2
>> many ROC 그림만 그려줌
https://tinyurl.com/many-ROC
>> 여러 ROC 비교 그림있음
https://tinyurl.com/moreROC2
7-5. ROC from LR *
https://tinyurl.com/ROC4table-model
>> Survival data ROC
https://tinyurl.com/survivalROC
>> Time-dependent ROC
https://tinyurl.com/Time-ROC
7-6. Confusion Matrix *
https://tinyurl.com/confusion-matrix
>> Longitudinal Concordance Correlation
https://tinyurl.com/Long-Conc
PART 8 시간 관련 (Time related statistics)
8-1. Seasonal Analysis *
https://tinyurl.com/Seasonal-Plot
8-2. Forecast Plot for ARIMA
https://tinyurl.com/Forecast-best-ARIMA
8-3. Intervention Analysis *
https://tinyurl.com/intervention-analysis
8-4. Segmented Regression *
https://tinyurl.com/segmented-Regression
8-5. Changepoint Line Chart *
https://tinyurl.com/changingpoint
>>Detecting Anomalies in Data
https://tinyurl.com/Anomalies-Data
8-6. Autocorrelation
https://tinyurl.com/autocorrelation-gls
8-7. Trend Test *
https://tinyurl.com/Trend-stat
>> Landmark Analysis (아직 공부가 부족)
https://tinyurl.com/Landmark-Analysis
>> curve fitting *
https://tinyurl.com/fit2curve
Group-Based Multivariate Trajectory Modeling
Group-Based Multivariate Trajectory Modeling.R
Non Parametric Trajectory Clustering
https://tinyurl.com/traject-cluster