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  • ¹ßÇà : 2020³â 01¿ù 10ÀÏ
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PART 1. ¿ÕÃʺ¸ Åë°è
1-1. ¼öÇÐ ¼ºÀûÀ» ºñ±³Ç϶ó
1-2. ÇÕ°Ý·üÀ» ºñ±³Ç϶ó
1-3. »ùÇà ¼öÀÇ °è»ê
1-4. Randomization
1-5. Baseline Table
1-6. Adverse Events
1-7. Logistic Regression
1-8. Sensitivity, Specificity

PART 2. ¼³¹® Á¶»ç ¿¬±¸
2-1. Correlation »ó°üºÐ¼®
2-2. PART ial Correlation Æí»ó°üºÐ¼®
2-3. Canonical Correlation Á¤ÁØ »ó°ü ºÐ¼®
2-4. Factor Analysis ¿äÀÎ ºÐ¼®
2-5. Cluster Analysis ±ºÁýºÐ¼®
2-6. Cronbach alpha
2-7. Q method

PART 3. Ž»öÀû ºÐ¼® ¹× µ¥ÀÌÅÍ Àüó¸®
3-1. Table plot Ãʱâ Ž»ö
3-2. Outliers & Missing À̻󰪰ú °áÃø°ª
3-3. Grapical Normality test Á¤±Ô¼º °ËÁ¤
3-4. Homogeneity of Variance µîºÐ»ê¼º
3-5. Standardization Ç¥ÁØÈ­
3-6. Tukey Ladder of Powers
3-7. Box Cox Transformation
3-8. Dummy º¯¼ö ¸¸µé±â
3-9. Freqency data ¹Ù²Ù±â
3-10. µÎ µ¥ÀÌÅÍ Â÷ÀÌ ¹ß°ßÇϱâ
3-11. µÎ µ¥ÀÌÅÍ ÇÕÄ¡±â Merge
3-12. ¿¬¼Óº¯¼ö¸¦ Áý´Üº¯¼ö·Î
3-13. Wide data and Long data
3-14. Matching tool
3-15. Propensity Score Matching

PART 4. ´Üº¯¼ö ºÐ¼®
4-1. Multiple Impute & t-test
4-2. Multifactor ANOVA
4-3. ANCOVA
4-4. RM ANOVA, Friedman Test
4-5. (RM) ANOVA
4-6. ºñ¸ð¼ö ´ÙÁß °ËÁ¤
4-7. Ä«ÀÌÁ¦°ö ÀûÇÕµµ °ËÁ¤
4-8. Ä«ÀÌÁ¦°ö°ËÁ¤(I)
4-9. Ä«ÀÌÁ¦°ö°ËÁ¤(II)
4-10. Mantel-Haenszel test(I)
4-11. Mantel-Haenszel test(II)
4-12. McNemar and Cochran Q
4-13. Survival Analysis
4-14. Restricted Mean Survival Time
4-15. Competing Risks
4-16. Matrix Correlations
4-17. Sequential Triangular Test
4-18. N-of-1 trials
4-19. ±âŸ Àâ´ÙÇÑ Åë°è
4-20. Text Miner

PART 5. ´Ùº¯¼ö ºÐ¼®
5-1. Generalized LM
5-2. Residual Plots
5-3. Calibration Plot
5-4. Logistic Comparison
5-5. Conditional Logistic R
5-6. Multinomial Logistic R
5-7. Ordinal Logistic R
5-8. Cox Regression
5-9. Many survival models
5-10. Nested survival analysis
5-11. Time dependent / Recurrent Survival
5-12. Nomogram
5-13. Poisson Regression
5-14. Multiple Imputation
5-15. Generalized Estimating Equation
5-16. MANOVA
5-17. Dose-response analysis

PART 6. °áÁ¤³ª¹«¿Í ÆǺ°ºÐ¼®
6-1. Discriminant Prediction ÆǺ°ºÐ¼®
6-2. Decision Tree °áÁ¤³ª¹«
6-3. Random Forest ¿¹Ãø¸ðÇü

PART 7. Áø´Ü °ü·Ã
7-1. ¹Î°¨µµ ƯÀ̵µ ºñ±³
7-2. Kappa and Agreement
7-3. IntraClass Correlation
7-4. ROC curve
7-5. ROC from LR
7-6. Confusion Matrix

PART 8. ½Ã°£ °ü·Ã
8-1. Seasonal Analysis
8-2. Forecast Plot for ARIMA
8-3. Intervention Analysis
8-4. Segmented Regression
8-5. Changepoint Line Chart
8-6. Autocorrelation495
8-7. Trend Test503

PART 1. ¿ÕÃʺ¸ Åë°è
1-1. ¼öÇÐ ¼ºÀûÀ» ºñ±³Ç϶ó
1-2. ÇÕ°Ý·üÀ» ºñ±³Ç϶ó
1-3. »ùÇà ¼öÀÇ °è»ê
1-4. Randomization
1-5. Baseline Table
1-6. Adverse Events
1-7. Logistic Regression
1-8. Sensitivity, Specificity
PART 2. ¼³¹® Á¶»ç ¿¬±¸
2-1. Correlation »ó°üºÐ¼®
2-2. Partial Correlation Æí»ó°üºÐ¼®
2-3. Canonical Correlation Á¤ÁØ »ó°ü ºÐ¼®
2-4. Factor Analysis ¿äÀÎ ºÐ¼®
2-5. Cluster Analysis ±ºÁýºÐ¼®
2-6. Cronbach alpha
2-7. Q method
PART 3. Ž»öÀû ºÐ¼® ¹× µ¥ÀÌÅÍ Àüó¸®
3-1. Table plot Ãʱâ Ž»ö
3-2. Outliers & Missing À̻󰪰ú °áÃø°ª
3-3. Grapical Normality test Á¤±Ô¼º °ËÁ¤
3-4. Homogeneity of Variance µîºÐ»ê¼º
3-5. Standardization Ç¥ÁØÈ­
3-6. Tukey Ladder of Powers
3-7. Box Cox Transformation
3-8. Dummy º¯¼ö ¸¸µé±â
3-9. Freqency data ¹Ù²Ù±â
3-10. µÎ µ¥ÀÌÅÍ Â÷ÀÌ ¹ß°ßÇϱâ
3-11. µÎ µ¥ÀÌÅÍ ÇÕÄ¡±â Merge
3-12. ¿¬¼Óº¯¼ö¸¦ Áý´Üº¯¼ö·Î
3-13. Wide data and Long data
3-14. Matching tool
3-15. Propensity Score Matching
PART 4. ´Üº¯¼ö ºÐ¼®
4-1. Multiple Impute & t-test
4-2. Multifactor ANOVA
4-3. ANCOVA
4-4. RM ANOVA, Friedman Test
4-5. (RM) ANOVA
4-6. ºñ¸ð¼ö ´ÙÁß °ËÁ¤
4-7. Ä«ÀÌÁ¦°ö ÀûÇÕµµ °ËÁ¤
4-8. Ä«ÀÌÁ¦°ö°ËÁ¤(I)
4-9. Ä«ÀÌÁ¦°ö°ËÁ¤(II)
4-10. Mantel-Haenszel test(I)
4-11. Mantel-Haenszel test(II)
4-12. McNemar and Cochran Q
4-13. Survival Analysis
4-14. Restricted Mean Survival Time
4-15. Competing Risks
4-16. Matrix Correlations
4-17. Sequential Triangular Test
4-18. N-of-1 trials
4-19. ±âŸ Àâ´ÙÇÑ Åë°è
4-20. Text Miner
PART 5. ´Ùº¯¼ö ºÐ¼®
5-1. Generalized LM
5-2. Residual Plots
5-3. Calibration Plot
5-4. Logistic Comparison
5-5. Conditional Logistic R
5-6. Multinomial Logistic R
5-7. Ordinal Logistic R
5-8. Cox Regression
5-9. Many survival models
5-10. Nested survival analysis
5-11. Time dependent / Recurrent Survival
5-12. Nomogram
5-13. Poisson Regression
5-14. Multiple Imputation
5-15. Generalized Estimating Equation
5-16. MANOVA
5-17. Dose-response analysis
PART 6. °áÁ¤³ª¹«¿Í ÆǺ°ºÐ¼®
6-1. Discriminant Prediction ÆǺ°ºÐ¼®
6-2. Decision Tree °áÁ¤³ª¹«
6-3. Random Forest ¿¹Ãø¸ðÇü
PART 7. Áø´Ü °ü·Ã
7-1. ¹Î°¨µµ ƯÀ̵µ ºñ±³
7-2. Kappa and Agreement
7-3. IntraClass Correlation
7-4. ROC curve
7-5. ROC from LR
7-6. Confusion Matrix
PART 8. ½Ã°£ °ü·Ã
8-1. Seasonal Analysis
8-2. Forecast Plot for ARIMA
8-3. Intervention Analysis
8-4. Segmented Regression
8-5. Changepoint Line Chart
8-6. Autocorrelation495
8-7. Trend Test503

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