Appendix A. Touchpoint Counting Patterns

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1 Ax A C P 0

2 O O,,, O,, O,,, q O,,,,, 1

3 x, x O,, x O,, x, 7, 8 O,, x, C, O,, x,, 9 A,

4 APPENDIX B A 3

5 A E A U OUCH MAH q N,,8 E B U N 3,,7 E C C N 1,4,

6 APPENDIX C A P W

7 A P W N #

8

9 APPENDIX D B P W 8

10 B P W N

11

12 APPENDIX E C P W 1

13 C P W N #

14

15 APPENDIX F C D P 4

16 C D P CONEQUENCE L q I W, 1998 A q 1,, 3 M E D C W, I, IME OU RULE

17 APPENDIX G R R B P A W # 1 B W # 1

18 R P A W # 1 I LA L D R M + P A # 1 R N R R R R R OAL CORREC OAL INCORREC 7

19 B A # 1 R N R R R R R N D N + x 100 R 8

20 R P B W # 1 I LA L D R M + P B # 1 R N R R R R R OAL CORREC OAL INCORREC 9

21 B B W # 1 R N R R R R R N D N + x 100 R 70

22 APPENDIX H R Aq 71

23 R Aq I LA L D NOE C = 100% Mx / A A M + N N N N 7

24 APPENDIX I 73

25 74 I A B R L A L D F _ M M x ; E I O, j H x + B C M / + W, A? A / C I B

26 7 I A B R L A L D F _ M M x ; E I O, j H x + B C M / + W, A? A / C I B

27 7 I A A / C B R I B C + N P + L O N x, K?,, C + N + H x + L M Y C I,,,

28 77 I A A / C B R I B C + N P + L,, C +

29 APPENDIX J 78

30 79 I A B R L A L D F M A x ; E I O, j 3 + I I x I N I W, A A / C I B

31 80 I A A / C B R I B D H I? P 3 N? P H? C 3 + N P 3 + U,, C 3 + P,,

32 APPENDIX K P R P P Aq A M A 81

33 P R P O D P M I OK D D I, x P P P G M, P D C N D 13 X 100 P 8

34 P R Aq O D Aq M A N D 9 X 100 P 83

35 A M M P A P R A M O D N D 17 X 100 P 84

36 P R A O D A M A N D 18 X 100 P 8

37 APPENDIX L 8

38 N C I +3 I +3 87

39 R A, & R, M D 1974 E J A B A, 7, 717 B, A J 1989 M A, 37, 4 B, F F, W, O R, & M, R 1980 P A x B A,, 941 B, J 1981 Ex x A I D D, 1, B, V A 199 I 4 E L, MI N C R L ERIC D R N ED B, J K 1998 M F G A K G C, CO I L C C, J R, H, C M, & Mzz, J 000 NAEP 1999 U D E O E R I N C E O A /////1999/00049 C, J F, BKz,, & U, A 199 x Ex C, 4,

40 C, J F, Fz, A M,, R, K, H, & B, H, III 1979 LD A L D Q,, 944 C, J F, & M, J H 1989 C A? J L D, 3, 0 4, 9 Dx, B 1994 R E P, 13, 47 Dx, R C, & C, D W 1990 I M I A D I N, 10, 14 Dx, R C, C, D W, L, D, W, J, & C, D 1998 R C R q x O A ///~/// E, R 199 A q L D A M J,, 91 E, D, & C, D 1990 M A D I N, 10, 48 F, J 199 B, MD G H, I 89

41 F, F, FM, J, G, H P, G, C, M, J,, W 1998! C, CO I L C, I F, J E, G, K, &, M 198 P F L P M, 4, 47 F, J E, & M, M A 1997 M M P R,, F, J E, Nz, M B, & Mz, E 1987 D J L D, 0, 1417 F, A, & K, M R 199 M A W, CA C M, I G, K, & F, J E 1983 Az L D Q,, 330 G, R, P, J W, & Mz, D L 1988 Ex C I,, 3 Gz, P, C, C, J, L, M, K K, D, A,, W,, &, W 000 P x C U,

42 N C E, U D E O A //// G, J, &, P 1977 K D A P, 14, 78 J, R N, 199 W E, 11, 71 J, G A,, C A, &, M A 198 A x J L D, 18, 3193 K, J M 1997 C U R, NJ M/P H K D E C C M A O A ////// 30 K D E L G A Ex O A /////P/ /x K, M M, & N, C M 00 4 C, OH C E M K, 197 A E M R, 10,

43 K,, & K, D A 1973 A E M R, 8, M, L G, & C, N L 199 L D R & P, 11, 8 ML, M, & A, W 198 L L D Q,, M, C D 1997 U R, NJ MP H M, C D, J, L, & M, P 1994 I J E, 8, 9030 M, P & M, C D 1997 E J L D, 30, 47 M, P & M, C D 1997 I & C, 3, M, J H & M, C P 1987 M L D R,, 1191 N C Ex E A O A ////NAR/ 9

44 P, W M E D C 1 G E, IL C M, I, K 1993 M Ex, 4, 97111, E J 1989 E J R M E, 0, 4980, P, R, M, & W, R J 198 A E C, 8, 77, M N, & H, J L 1977 A E L, MI N C R L ERIC D R N ED 0 1, J W & G, D L 1984 j C, OH C E M, J A & J, P A 1980 M j x J R M E, 11, U, R G, U, A E, & H, J W 1980 D C, OH M 93

45 W, M M, A, GR,, JB, D, DD, & C, FL 1980 A A, x R N 13 L U K C R L W, M, A, M J, & D, P M 199 M D U W P, NY L P G W, M M 1978 j J A B A, 11, 0314 W, H K, & W, R 1998 F D M V, CA H K W P, I Y, K 1991 M M E L, MI N C R L ERIC D R N ED

Lecture 26 Section 8.4. Mon, Oct 13, 2008

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