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1Àå. ¸ÞŸºÐ¼® meta analysis
1. ºñÀ²ÀÇ ºñ±³
2. Ãâ°£ ÆíÇâ
3. Æò±ÕÀÇ ºñ±³
4. ¡°meta¡±ÀÇ ´Ù¸¥ ±â´É

2Àå. ÀáÀç Ãþ ºÐ¼® latent class analysis
1. ¹üÁÖÇü ÀÀ´ä°ú ÀÌ¿¡ ´ëÇÑ Åë°èÀû ¸ðÇü
2. values »ç·Ê¿Í ¸ðÇü ¼±ÅÃ
3. ÀáÀç Ãþ ȸ±Í ¸ðÇü
4. ÀÀ¿ë: ÀáÀç Ãþ¿¡ ´ëÇÑ ·ÎÁö½ºÆ½ ȸ±Í
5. ±× ¹ÛÀÇ È¥ÇÕºÐÆ÷ ¸ðÇü

3Àå. ¼ºÇâÁ¡¼ö ¸ÂÃß±â propensity score matching
1. ¹èÈÄ¿äÀÎÀÇ ¼öÁØ Â÷ÀÌ
2. ¼ºÇâÁ¡¼ö ¸ðÇü
3. ÃÖ±ÙÁ¢ ÀÌ¿ô ¸ÂÃß±â
4. ºÎ±¸°£ ¸ÂÃß±â
5. »ç·Ê: Lalonde ÀÚ·á
6. ±× ¹ÛÀÇ ¸ÂÃ߱⠱â¹ý°ú R ÆÑÅ°Áö

4Àå. ÃÖÀûÈ­ ¾Ë°í¸®Áò optimization algorithm
1. ÃÖ´ë°¡´Éµµ ÃßÁ¤
2. ºñ¼±Çü ȸ±Í
3. TSP (traveling salesman problem)

5Àå. °áÃø°ª ´ëü missing value imputation
1. °áÃø°ª ´ëü
2. ´ëü ÀÚ·áÀÇ È°¿ë
3. ´ëü ¹æ¹ý°ú ¼Õ½Ç
4. MAR »óȲ

6Àå. ´ÙÂ÷¿ø ôµµÈ­ multidimensional scaling
1. °Å¸® Çà·Ä
2. °íÀüÀû MDS
3. ºñ°è·®Çü MDS
4. iso map
5. Â÷¿øÀÇ °áÁ¤

7Àå. Ç¥º»Å©±â¿Í °ËÁ¤·Â sample size and power
1. Á¤±ÔºÐÆ÷ÀÇ Áß½É
2. t-°ËÁ¤
3. ºñÀ²ÀÇ °ËÁ¤
4. »ó°üÀÇ °ËÁ¤
5. ±× ¹ÛÀÇ °ËÁ¤

8Àå. º×½ºÆ®·¦ ¹æ¹ý bootstrap method
1. º×½ºÆ®·¦ ¹æ¹ýÀ̶õ?
2. º×½ºÆ®·¦ »ç·Ê: »ó°ü°è¼ö
3. º×½ºÆ®·¦ »ç·Ê: ·ÎÁö½ºÆ½ ȸ±Í
4. º×½ºÆ®·¦ »ç·Ê: µÎ µ¶¸³Ç¥º»ÀÇ Á᫐ °£ Â÷ÀÌ

9Àå. ·Î¹ö½ºÆ® ȸ±Í¿Í ºÐÀ§¼ö ȸ±Í robust and quantile regression
1. ·Î¹ö½ºÆ® ȸ±Í
2. ºÐÀ§¼ö ȸ±Í

10Àå. ÀϹÝÈ­¼±Çü¸ðÇü generalized linear model
1. ÀϹÝÈ­¼±Çü¸ðÇüÀ̶õ?
2. Æ÷¾Æ¼Û ȸ±Í
3. ·ÎÁö½ºÆ½ ȸ±Í
4. °¨¸¶ ȸ±Í
5. ¿ä¾à

11Àå. ±¹¼ÒÀû ȸ±Í LOESS
1. ±¹¼Ò °¡ÁßÄ¡
2. ±¹¼Ò ¼±ÇüÀÌÂ÷½ÄÀÇ ÀûÇÕ
3. Engine Exhaust Emissions »ç·Ê
4. Sulfate Deposits »ç·Ê
5. ±â¼úÀû ¼¼ºÎ »çÇ×

12Àå. ÀϹÝÈ­°¡¹ý¸ðÇü generalized additive model
1. ±âº» »ç·Ê¿Í ¹æ¹ý·Ð
2. Áظð¼öÀû ȸ±Í¸ðÇü
3. ¸ðÀÇÀÚ·á »ç·Ê

13Àå. R Ä÷¯¿Í »êÁ¡µµ r colors and scatterplot
1. RÀÇ Ä÷¯
2. »êÁ¡µµ ÀÀ¿ë: Á¦3ÀÇ º¯¼ö
3. »êÁ¡µµ ÀÀ¿ë:
4. »êÁ¡µµ ÀÀ¿ë: lowess ÆòÈ°

14Àå. Åë°è ±×·¡ÇÁ 1 statistical graph
1. ³ª¹« Áöµµ
2. ¸ðÀÚÀÌÅ© Ç÷Ô
3. ¿­ Áöµµ

15Àå. Åë°è ±×·¡ÇÁ 2 statistical graph
1. 2º¯·® ÀÚ·áÀÇ ¹Ðµµ
2. 3º¯·® ÀÚ·áÀÇ ½Ã°¢È­
3. ´Ùº¯·® ÀÚ·áÀÇ ½Ã°¢È­

16Àå. Çà·Äµµ¿Í ´ëÀÀºÐ¼® biplot and correspondence analysis
1. Çà·Äµµ
2. ´ëÀÀºÐ¼®
3. ´ÙÁß´ëÀÀºÐ¼®

17Àå. SVM (Support Vector Machine)
1. ¼±Çü SVM ºÐ·ù
2. ºñ¼±Çü SVM ºÐ·ù
3. ¼±Çü ¹× ºñ¼±Çü SVM ȸ±Í

18Àå. ³ª¹« ¾Ë°í¸®Áò tree algorithm
1. CART
2. ·£´ý Æ÷¸®½ºÆ®

19Àå. KPCA¿Í LLE (kernel PCA and locally linear embedding)
1. Ä¿³Î PCA
2. LLE

20Àå. ¿¹ÃøÇÔ¼öÀÇ ½Ã°¢È­ visualizing predictive functions
1. Á¶°ÇºÎ ¿¹Ãø ±×·¡ÇÁ
2. ȸ±Í¸ðÇüÀÇ °æ¿ì
3. ¼³¸íº¯¼ö°¡ ¸¹Àº °æ¿ì

ºÎ·Ï I. R¿¡¼­ µ¥ÀÌÅͼ¼Æ® ´Ù·ç±â (ÃʱÞ) manipulating datasets in R
ºÎ·Ï II. R¿¡¼­ µ¥ÀÌÅͼ¼Æ® ´Ù·ç±â (°í±Þ) manipulating datasets in R

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