ࡱ>  \[bjbjߍ &8d_h"   @@@)^+^+^+^+^+^+^,a8dW^@@@@@W^  4^@  )^@)^V1\Ihb6X4^^0_XLddh1\1\@@@W^W^@@@_d@@@@@@@@@ |:    What is  Correlation ? The Pearson r  correlation coefficient is a summary statistic that indicates both the strength and direction of the relationship between two variables It has a value of between 1 and +1  Values less than zero (e.g 0.8) indicate a negative correlation Values greater than zero (e.g. +0.8) indicate a positive correlation Examples of Correlational Research Hypotheses The number of outpatient therapy sessions utilized is positively correlated with the extent of depression as measured by the total score of the Beck Depression Inventory The 242 final exam score is positively correlated with the number of hours students spend preparing for the exam The number of behavioral incidents by children in residential care is negatively correlated with the number of strength based supportive comments from staff Compare to other statistical hypotheses& " Chi Square:  The variables are associated&  " t test:  The group means differ&  " One way ANOVA:  The group means differ Correlation: There is a positive [or negative] correlation between the two variables. Multiple Regression: The independent variable is predictive of the dependent variable, controlling for additional factors Scatter plots (a.k.a. scattergrams) Scatter plot: the graphic representation of the relationship between two ratio or interval variables, plotting the value of one variable against another with one dot Useful as a preliminary step in visually inspecting data: Seeing strength and direction of relationship Seeing how linearly the variables are related Seeing outliers Scattergrams: Examples of Various Correlations What is Correlation? Correlation tests the relationship between a continuous independent variable and a continuous dependent variable. Correlation tests produce an r value and a p value. The r value is always between -1 and +1 A negative r value indicates that as the value of one variable increases, the value of the other variable decreases (referred to as a negative correlation) Example of a Graph with a Negative Correlation:  A positive r value indicates that as one variable increases, the other variable also increases (referred to as a positive correlation) Example of a Graph with a Positive Correlation:  An r value of zero indicates no relationship between variables Example of a graph indicating no correlation between variables  What are the Requirements to use r? The Pearson r is a parametric statistic. Why?  The variables should be normally distributed in the population " For larger samples there can be some relaxation of this requirement " There are non parametric tests for non normally distributed variables, and those other than continuous  Also, the variables should be related linearlyeither positively or negatively Why is this important? (Hint: see previous slides) Inference Testing in Correlation The r statistic can be located in a table of critical values The logic of inference testing is the same as other statistics: If the p value given by SPSS is equal to or less than the alpha, then we reject the Null Hypothesis We also need to interpret the correlation coefficient (r) and inspect the scatter plot: Is it in the same direction as hypothesized? Does the strength of the correlation support the alternate hypothesis? Are the variables linearly related? Can We Imply Causality from Correlation? Remember the requirements for causality: 1. Time ordering (The IV should precede the DV chronologically) 2. Correlation between variables 3. No other rival hypothesis (effect of 3rd variable) What might be missing in the correlation? --Other confounding variables! Multivariate Regression Statistics What are multivariate statistics? Multivariate statistics allow you to determine the impact of an independent variable on a dependent variable while factoring out the influence of potentially confounding (i.e. extraneous) variables. Types of multivariate statistics: Bivariate: It predicts the value of a dependent (or outcome) variable from an observed independent (or predictor) variable Multivariate: It predicts the value of a dependent (or outcome) variable from an observed independent (or predictor) variable,controlling for other variables Coding in Multiple Linear Regression and Binomial Logistic Regression: If an independent/control variable is categorical, then dummy coding (AKA creating indicator variables) is necessary. This involves creating a separate variable for each category within the categorical variable and using a baseline category to compare categories. For instance, race/ethnicity is a very common demographic variable that is included in many multivariate statistical tests. We normally think of race/ethnicity as one categorical variable with multiple categories within it (i.e. White, African American, Latino, Asian/Pacific Islander etc). However, to include race/ethnicity in a multivariate model, we need to use a procedure called dummy coding (AKA creating indicator variables). To do this, the one variable of race/ethnicity is re-coded (in SPSS) into 4 indicator variables: White: Value labels: 0 = Not White 1 = White African American: Value Labels: 0 = Not African American 1 = African American Latino: Value labels: 0 = Not Latino, 1 = Latino Asian/Pacific Islander: Value labels: 0 = Not API, 1 = API One indicator variable is chosen as the baseline to which all other racial/ethnic categories are then compared. For instance, if White is chosen as the baseline, then the statistical output provided by SPSS will indicate a comparison between African Americans and Whites, Latinos and Whites, and APIs and Whites with respect to the dependent variable. Sample size requirements for multivariate statistics General rule of thumb is there needs to be at least 10 people in the sample for every independent or control variable included in the model. What Does Controlling For Mean? Controlling for a variable (e.g. gender or race) means: 1. We collect data on that variable 2. We include that variable in the list of independent variables in our model 3. The regression analysis separates out the effects of each attribute (male, female) 4. You can 02 ` a z | > ? ͸uhVF11(h\0h&5B* CJ(OJQJaJ(phh&h&5CJ(OJQJaJ("h\05B*CJHOJQJaJHphh\05CJ,OJQJaJ,,hKh&5B* CJ8OJQJ^JaJ8ph(hKh&5B* CJ8OJQJaJ8ph,h\0h&5B* CJ8OJQJ^JaJ8ph(h\0h&5B* CJ8OJQJaJ8phh&h&5CJ,OJQJaJ,(h\0h&5B*CJHOJQJaJHphh&5CJHOJQJaJH02b d   ` a | > ?  ^`gd&$ ^a$gd\0 ^gd\0 & F >^`>gd& >^`>gd& gd& $ a$gd& \ ^ cd  XZ ^`gd\Q |^`|gd&$ ^`a$gd& ^`gd& X Z  h j    DzǍxaxaxaxL<h&h&5CJ8OJQJaJ8(h\0h&5B*CJHOJQJaJHph,h\0h&5B* CJ4OJQJ^JaJ4ph(h\0h&5B* CJ4OJQJaJ4phh&h&5CJ,OJQJaJ,(h\0h&5B*CJ,OJQJaJ,ph(h\0h&5B*CJ@OJQJaJ@phh&5CJ,OJQJaJ,,h\0h&5B* CJ8OJQJ^JaJ8ph(h\0h&5B* CJ8OJQJaJ8ph6:Jdfjl­p^G0,hKh\05B* CJ8OJQJ^JaJ8ph,hKh\Q5B* CJ8OJQJ^JaJ8ph#h\0h\Q5CJOJQJ^JaJ/h\0h\Q5B* CJHOJQJ\^JaJHph,h\0h\Q5B* CJHOJQJ^JaJHphh\QCJOJQJ^JaJ(h\0h\Q5B*CJHOJQJaJHph(hKh\Q5B* CJ8OJQJaJ8ph(hKh&5B* CJ8OJQJaJ8ph%hKh&B* CJ8OJQJaJ8phZ68:dfRT  1$7$8$H$gd\Q & F T01$7$8$H$^T`0gd\Q 1$7$8$H$gd\Q$ ^a$gd\Q ^`gd\Q & F ^`gd\QlPRTXZ ",0һuuһudO:)h\0h\QB*CJ8OJQJ^JaJ8ph)h\0h\0B*CJ8OJQJ^JaJ8ph h\Qh\QCJ8OJQJ^JaJ8/hKh\Q5B* CJ8OJQJ\^JaJ8ph,hKh\05B* CJ8OJQJ^JaJ8ph,hKh\Q5B* CJ8OJQJ^JaJ8ph,hKh\Q5B* CJOJQJ^JaJph,hKh\Q5B* CJ8OJQJ^JaJ8ph,hKh\Q5B* CJ8OJQJ^JaJ8ph0R234NVXbcdefgҽjTjE0)jhiBah\QCJOJQJU^JaJhiBahf&CJOJQJaJ+h\0h^|56B*CJ,OJQJaJ,ph+h\0h56B*CJ,OJQJaJ,ph.h\0h\Q56>*B*CJ,OJQJaJ,ph+h\0h\Q56B*CJ,OJQJaJ,phhiBahCJOJQJaJ)h\0h\QB*CJ8OJQJ^JaJ8ph)h\0h\QB*CJ8OJQJ^JaJ8ph/h\0h\Q5B*CJ8OJQJ\^JaJ8ph 34deg !#$Bdfgd $^a$gd38h^hgd $h^ha$gd^|^gdaW^gd\Q $7$8$H$a$gd^| $^a$gd^|^gd & F 01$7$8$H$`0gd\Qgiyz   !첥yayKy;h\Qh\Q>*CJ,OJQJaJ,+h\0h^|56B*CJ,OJQJaJ,ph.h\0h3856>*B*CJ,OJQJaJ,ph+h\0h56B*CJ,OJQJaJ,ph+h\0h3856B*CJ,OJQJaJ,phh\Q>*CJ,OJQJaJ,h^|hCJOJQJaJ(h\0h5B*CJ8OJQJaJ8ph+h\0h5>*B*CJ8OJQJaJ8ph%h\0hB*CJ8OJQJaJ8ph!"$'67ABdfȲȊt\tL7+hyCJOJQJaJ)jhiBahKCJOJQJU^JaJh38h38>*CJ,OJQJaJ,.h\0h56>*B*CJ,OJQJaJ,ph+h\0h56B*CJ,OJQJaJ,ph%h\0h38B*CJ8OJQJaJ8ph(h\0h5B*CJ8OJQJaJ8ph+h\0h5>*B*CJ8OJQJaJ8ph%h\0hB*CJ8OJQJaJ8phhiBahCJOJQJaJ)jhiBahKCJOJQJU^JaJfDE{ >^`>gdy ^`gd\0 ^`gdygdy$a$gdy $7$8$H$a$gd^|$a$gd^|02bdDE{|DZǡkTkTkDD8hyCJ8OJQJaJ8h\0hy5CJOJQJaJ,hKhy5B*CJ0OJQJ^JaJ0phf(hKhy5B*CJ0OJQJaJ0phfh\0hy5OJQJ(hKhy5B* CJ4OJQJaJ4phh\0hy5CJ$OJQJaJ$+hKhy56B* CJ8OJQJaJ8ph(hKhy5B* CJ8OJQJaJ8phhyhyCJOJQJaJ(hKhy5B*CJHOJQJaJHph !̷̢l]H8#(hRIh\05B* CJ8OJQJaJ8phh\0h\05CJ$OJQJaJ$(hRIh\05B* CJ8OJQJaJ8phh\0h\0CJ0OJQJaJ0(hKh\05B*CJHOJQJaJHphh\0CJ0OJQJaJ0(hKh\05B*CJ0OJQJaJ0phf(hKhy5B*CJ0OJQJaJ0phf(hKhy5B* CJ0OJQJaJ0phh\0hy5CJ0OJQJaJ0(hKhy5B* CJ0OJQJaJ0phhyhyCJ0OJQJaJ0  !\]<=st p0^p`0gd\0$F^F`a$gd\0 F^F`gd\0 ^`gdygdyfhstְֆs^L^=*%hRIhc\B* CJ8OJQJaJ8phhiBahc\CJOJQJaJ"hYr5B*CJHOJQJaJHph(hRIhc\5B*CJHOJQJaJHph%hKhyB*CJ0OJQJaJ0phf(hRIhRI5B* CJ8OJQJaJ8ph(hRIh\05B* CJ8OJQJaJ8phh\0h\05CJ$OJQJaJ$+hRIh\05B* CJ8H*OJQJaJ8ph(hRIh\05B* CJ8OJQJaJ8ph(hRIh\05B* CJ$OJQJaJ$phrs~^gdF $ ^$ `gdYr8^8gdaW $ $ ^$ `gdRI & F  $ $ ^$ `gdRIgd^gdRIh^hgdc\ $^a$gdRI $^a$gdRI F^F`gd\0uvʵkVDV/(hYrh@I5B* CJ0OJQJaJ0ph"hYr5B* CJ0OJQJaJ0ph(hYrhYr5B* CJ0OJQJaJ0ph(hRIhRI5B* CJ(OJQJaJ(phhiBahaWCJOJQJaJ%hRIhaWB* CJ8OJQJaJ8ph%hRIhB* CJ$OJQJaJ$ph(hYrhc\5B* CJ0OJQJaJ0phhRIhCJOJQJaJ%hRIhc\B* CJ8OJQJaJ8ph%hRIhra7B* CJ8OJQJaJ8ph Q\]gi}!~!!!!˸q]J7$hGhF5B* CJ$^JaJ$ph$hGh.5B* CJ$^JaJ$ph'hGhF5>*B* CJ$^JaJ$phhGhE5CJ^JaJ$hGhE5B* CJ(^JaJ(ph$hGhaW5B* CJ(^JaJ(ph$hGhF5B* CJ(^JaJ(ph$hGhaW5B*CJ^JaJph$hGhaW5B*CJ8^JaJ8ph$hGhG5B*CJ8^JaJ8phhiBahF>*CJ^JaJ]hi}!~!!!!!."/"l"m"n"o"p"q"r" 7$8$H$gdF^gdE^gdE & F gdE^gdG 8d`gdG & F 88d^8`gdG $^a$gdG!!!!!!!!"""-"."/"E"G"l"m"n"r"s"ƳxƳh[N>hiBahG5CJOJQJaJhG5CJOJQJaJhF5CJOJQJaJhiBahF5CJOJQJaJ'hGh.5>*B* CJ$^JaJ$ph'hGhE5>*B* CJ^JaJph$hGhF5B* CJ$^JaJ$ph$hGh.5B* CJ$^JaJ$ph'hGhF5>*B* CJ$^JaJ$ph$hGhE5B* CJ^JaJph$hGhE5B* CJ$^JaJ$phr"s"## $ $$$$$$$$$$ d7$8$H$gdYr$ vd7$8$H$^a$gdYr$d7$8$H$^a$gdYr  >^ `>gdG8^8gdE^gdGgdE & F  Z e md7$8$H$^e `mgd 7$8$H$gdFs"## $ $$$$$$$$$$ƶteYG2&hYrCJ(OJQJaJ((hYrhYr5B*CJ(OJQJaJ(ph"hPY5B*CJ(OJQJaJ(phhYrCJOJQJaJhiBahECJOJQJaJhGhECJ$OJQJaJ$$hGhE5B* CJ$^JaJ$phhYr5B* CJ$^JaJ$phhG5B* CJ$^JaJ$phhGhE5CJ$OJQJaJ$(hGhE5B* CJ0OJQJaJ0phhGhc\5CJ$OJQJaJ$(hGhF5B* CJ$OJQJaJ$ph $$%%(%)%w%x%%%bXcXdXYYtYvYwYxY$d7$8$H$`a$gdPYpd7$8$H$^p`gdPY F@d7$8$H$^`gdYrd7$8$H$^gdYrd7$8$H$^gdYr$%%%%%XbXcXdXYYYYsYtYxYYYYYYY?Z@ZZZ5[6[ͺͺwgTTTTTLjhmyU%hPYhPYB* CJ(OJQJaJ(phhPYB* CJHOJQJaJHph(hPYhPY5B*CJ(OJQJaJ(phhPYB* CJ(OJQJaJ(phh~gB* CJ(OJQJaJ(phhYrCJ(OJQJaJ(U%hYrhYrB* CJ(OJQJaJ(phhYrhYrCJ(OJQJaJ(hPYB* CJ(OJQJaJ(ph%hYrhYrB* CJ(OJQJaJ(phinterpret the resulting statistics for all other variables as if by saying regardless of gender Even though only some variables might be labeled control variables in the hypothesis, multiple regression analysis uses the same process on all independent variables in the model: You can say about any variable, controlling for the effects of all other variables Typical Uses While regression can be used to predict outcomes, the procedure is most often used to: Determine whether the relationship between the IV and DV is likely due to sampling error Determine the strength and direction of the relationship between the primary IV and DV (as in correlation) Determine the effects of other independent variables (such as control variables) in the relationship between the primary IV and DV     PAGE  PAGE 16 xYYYYYYY?Z@ZAZZZZ5[7[8[:[;[=[>[@[A[ d7$8$H$^ `gdPYpd7$8$H$^p`gdPY$d7$8$H$`a$gdPY6[8[9[;[<[>[?[A[B[H[I[J[L[M[S[T[V[W[X[Z[[[\[%hPYhPYB* CJ(OJQJaJ(phhPY0JmHnHuhYr hYr0JjhYr0JUjhmyUhmyA[J[K[L[X[Y[Z[[[\[ d7$8$H$^ `gdPYh]hgdz &`#$gd51h0:p&= /!`"`#`$`%  HH@Re(HH(dh com.apple.print.PageFormat.FormattingPrinter com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.FormattingPrinter Lexmark_Pro800_Pro900_Series com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMHorizontalRes com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMHorizontalRes 72 com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMOrientation com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMOrientation 2 com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMScaling com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMScaling 1 com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMVerticalRes com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMVerticalRes 72 com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMVerticalScaling com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMVerticalScaling 1 com.apple.print.ticket.stateFlag 0 com.apple.print.subTicket.paper_info_ticket PMPPDPaperCodeName com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray PMPPDPaperCodeName Letter com.apple.print.ticket.stateFlag 0 PMPPDTranslationStringPaperName com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray PMPPDTranslationStringPaperName US Letter com.apple.print.ticket.stateFlag 0 PMTiogaPaperName com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray PMTiogaPaperName na-letter com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMAdjustedPageRect com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMAdjustedPageRect 0 0 576 751.20001220703125 com.apple.print.ticket.stateFlag 0 com.apple.print.PageFormat.PMAdjustedPaperRect com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PageFormat.PMAdjustedPaperRect -18 -4.79998779296875 594 787.20001220703125 com.apple.print.ticket.stateFlag 0 com.apple.print.PaperInfo.PMCustomPaper com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PaperInfo.PMCustomPaper com.apple.print.ticket.stateFlag 0 com.apple.print.PaperInfo.PMPaperName com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PaperInfo.PMPaperName na-letter com.apple.print.ticket.stateFlag 0 com.apple.print.PaperInfo.PMUnadjustedPageRect com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PaperInfo.PMUnadjustedPageRect 0 0 751.20001220703125 576 com.apple.print.ticket.stateFlag 0 com.apple.print.PaperInfo.PMUnadjustedPaperRect com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PaperInfo.PMUnadjustedPaperRect -4.79998779296875 -18 787.20001220703125 594 com.apple.print.ticket.stateFlag 0 com.apple.print.PaperInfo.ppd.PMPaperName com.apple.print.ticket.creator com.apple.jobticket com.apple.print.ticket.itemArray com.apple.print.PaperInfo.ppd.PMPaperName Letter com.apple.print.ticket.stateFlag 0 com.apple.print.ticket.APIVersion 00.20 com.apple.print.ticket.type com.apple.print.PaperInfoTicket com.apple.print.ticket.APIVersion 00.20 com.apple.print.ticket.type com.apple.print.PageFormatTicket Dd $@0  # A"[\v˃x7D@=/\v˃xָ%pZHxZklTE>wvk[ZRꃶH)E)H (F~)Q+])!1 $$ &5$">G@ ̘JўQ2Y/@'F[vK-;tD.Q.B3PJ$Ŭ'+ +D/yP/ <,Q-~ =GnwhK e*<ko${ܨ @?jkE-FSh&4^OKi1-XI5րo94ⷁixe,GsY3 ͞,jN>UCc0ngf)j5{G3|K=gCgBW~;4Wd5N)=Zo_ i|o]ZW J>w.~V^+bnkZ6zE­P!NYPmΙwƬ:%=?WϞ{ 9 &$,$JkZʼnHiB<Y%*+yD/k?1Y kh#}_n>/koxw5~o^bK {XKgg9%o~'ozԷ3[_̋ǿX> T9ˇq;>#cNZܼO GJnymO剌#x< r4y-+y⨄D}I|MT+KɆFtoB+6oByYc,kfȪe^ɲ>P~g3q3󙳚z>u}f;e-B9F2DMB}$߿{_gޙc߭-|$C=IÉ AwC$}'AD@:Xҿ-0Cо~ Bw#/(EI{Y%ZyE՟u>:s>A+Gkv,w($)084Y]⼸rp@7'̆.[6fC쾒s \j!sciDs!3_קJzx7N 6Nk%ߠ$s0 ~2앫(/xzn$r}vo^s-$p6qDd $@ ^0  # A"],udov\;9#@=1,udov\;%pZHxZklTE>wv׶Rꃶ@)Ei E)Q0R^W RCLcTHH L D|Cy%Rw.3{^-ٙsf3sΜ9so5"zp MQ>|F ΜFU,ՠ-lm;:ep(3.R3XJ$լz: ɏøg|Z3{潣>|jlrGfFoi {zӡSˁ! [*R[ Vk3hԖQiZ2 D'^p6@-3Ԇ+bEۋMp[$6bo}~1Ts*T f0fY/iogbG/xv[~]55qÚa?4ywzf #a"E%} v߫Y>w-}=-wNnTw}'|׳ F ^ɲ&kz-^y,-!Y|=s;s=9kM_7gFHSv"Szt C+Թ;,N;?҉ui0J7W`/|2sC@y`פB5iC% t5N{Kzz]QV XJ58wI1ğB{d9DuО#;Pߎr  =KқVȼrh@$ʭ^9nL'evI5K\?B1M346L'闋DYsiCQ K9oʈ.a΀%}'0X.%ID`QhJ3HvW8=Ƚf~s *zݿ{&'[̙G7]}c5 Dd $@0  # A"Жw3^@=VЖw3 'pZH$xZklTE>wKm)mym)mWREUj( V0c F-1Q!P D%?P MGFF17{ν{/[9333gfܻ =: zCTҟ[:fM'R(XJV|dy eֲ_~O,d@8͔|5g(ˊ YX||>ʓ<̥ΧI\m\ eIE k5W󣘜ʽ1$зA3j*M>o&M9`ZAh9-bBZ rjFUhӄTFK2 Q eOfgA=~=j5Cy hSړI$/ G'Zep*O4E<&w% 4}tO|I!XR}P7GZsduwxr#UZàwF9v$I:3d +xY޴yuYRB%cKUHuWo73Ʀ(.kDϓ)9Y?fh!h Ƣ|H)$w? &%>M()LiXJ!M$¤FFiz|`>/J:MFw&bwk ڣRnuLֵFtU׿ʲ57ۭ.wzu}Fu~c]M6Ivccα{ϱAHZ}.b>v1N89.-J{ XyV7.gMGv8dGv8/3NTGv8c^Y~.=׮b>j7qD_ſOt_l?>˙楜Ŀ]ǿ%DK_ѽK7d11ٗ~Ⱥe]/^q:c2F~MQ4]uJoUG6 /g#x3G>B9OSǛ=|o!ݽSܒEn26ېI!wFwWy723 f<?GflF]Bzh!I;+ӇgaC y-AC ^tBċ)lw &AE!f(t5@@ C~ v y1΁نXfxlONfϖL3 'gǟlL7hcR!/*~. ~C.`m (Ő]½tϐg)Wb_Ez!ɌsVpVz8 笧֋{춻r;}R-rb="?G[2 0@P`p2( 0@P`p 0@P`p 0@P`p 0@P`p 0@P`p 0@P`p8XV~8XV~_HmH nH sH tH @`@ ~NormalCJ_HaJmH sH tH DA`D Default Paragraph FontRiR  Table Normal4 l4a (k (No List TC@T Body Text Indent 8^8OJQJ^JaJ4@4 zHeader  !.)@. z Page Number4 "4 RFooter  !: `: &Index 1^`: `: &Index 2^`: `: &Index 3^`: `: &Index 4^`:`: &Index 5^`:`: &Index 6^`:`: &Index 7^`:`: &Index 8^`:`: &Index 9p^p`6! 26 & Index HeadingPK!pO[Content_Types].xmlj0Eжr(΢]yl#!MB;.n̨̽\A1&ҫ QWKvUbOX#&1`RT9<l#$>r `С-;c=1g~'}xPiB$IO1Êk9IcLHY<;*v7'aE\h>=^,*8q;^*4?Wq{nԉogAߤ>8f2*<")QHxK |]Zz)ӁMSm@\&>!7;wP3[EBU`1OC5VD Xa?p S4[NS28;Y[꫙,T1|n;+/ʕj\\,E:! t4.T̡ e1 }; [z^pl@ok0e g@GGHPXNT,مde|*YdT\Y䀰+(T7$ow2缂#G֛ʥ?q NK-/M,WgxFV/FQⷶO&ecx\QLW@H!+{[|{!KAi `cm2iU|Y+ ި [[vxrNE3pmR =Y04,!&0+WC܃@oOS2'Sٮ05$ɤ]pm3Ft GɄ-!y"ӉV . `עv,O.%вKasSƭvMz`3{9+e@eՔLy7W_XtlPK! ѐ'theme/theme/_rels/themeManager.xml.relsM 0wooӺ&݈Э5 6?$Q ,.aic21h:qm@RN;d`o7gK(M&$R(.1r'JЊT8V"AȻHu}|$b{P8g/]QAsم(#L[PK-!pO[Content_Types].xmlPK-!֧6 -_rels/.relsPK-!kytheme/theme/themeManager.xmlPK-!!Z!theme/theme/theme1.xmlPK-! ѐ'( theme/theme/_rels/themeManager.xml.relsPK]# 6b7b %%%%%( l0g!!s"$6[\[ "$%')+/ Z fr"$xYA[\[!#&(*.0 !(!!@ @H 0(  0( t-warningWhen u B S  ? lx47JQry' . B D D G   vzSXej47::::::::::::::::::::A5 x E9pĴR<Kl+ ^'Pn:o]T+$~8W{w%V D%`8v1RxDM޸~fO0xh/1PU p xz[«S>[F`lgc0ef#AgxKhg%Wh\2j*~HT ^`OJQJo( 8^8`OJQJo(^`OJQJ^Jo(o  p^ `OJQJo(  @ ^ `OJQJo( x^x`OJQJo(H^H`OJQJ^Jo(o ^`OJQJo( ^`OJQJo(h^`^`5o(.aa^a`o(. pLp^p`LhH. @ @ ^@ `hH. ^`hH. L^`LhH. ^`hH. ^`hH. PLP^P`LhH.^`OJQJo(hH^`OJQJ^Jo(hHopp^p`OJQJo(hH@ @ ^@ `OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHoPP^P`OJQJo(hH808^8`05o(. ^`hH. pLp^p`LhH.@ @ ^@ `o(.  % %^ %`5OJQJo(hH L^`LhH. ^`hH. ^`hH. PLP^P`LhH.88^8`o(.^`5o()  L ^ `LhH.   ^ `hH. xx^x`hH. HLH^H`LhH. ^`hH. ^`hH. L^`LhH.^`o() ^`hH. pLp^p`LhH. @ @ ^@ `hH. ^`hH. L^`LhH. ^`hH. ^`hH. PLP^P`LhH.8^`OJQJo(hH8^`OJQJ^Jo(hHo8  ^ `OJQJo(hH8  ^ `OJQJo(hH8xx^x`OJQJ^Jo(hHo8HH^H`OJQJo(hH8^`OJQJo(hH8^`OJQJ^Jo(hHo8^`OJQJo(hH  ^ `o(.   ^ `hH. xLx^x`LhH. HH^H`hH. ^`hH. L^`LhH. ^`hH. ^`hH. X LX ^X `LhH. ^`OJQJo(hH pp^p`OJQJ^Jo(hHo @ @ ^@ `OJQJo(hH ^`OJQJo(hH ^`OJQJ^Jo(hHo ^`OJQJo(hH ^`OJQJo(hH PP^P`OJQJ^Jo(hHo   ^ `OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHopp^p`OJQJo(hH@ @ ^@ `OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHoPP^P`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHo((^(`OJQJo(hH@ @ ^@ `OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHoPP^P`OJQJo(hH ^`OJQJo(hH v v ^v `OJQJ^Jo(hHo F F ^F `OJQJo(hH ^`OJQJo(hH ^`OJQJ^Jo(hHo ^`OJQJo(hH ^`OJQJo(hH VV^V`OJQJ^Jo(hHo &&^&`OJQJo(hH^`OJQJo(hH  ^ `OJQJ^Jo(hHo  ^ `OJQJo(hHxx^x`OJQJo(hHHH^H`OJQJ^Jo(hHo^`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hH   ^ `OJQJo(hH \ \ ^\ `OJQJ^Jo(hHo ,,^,`OJQJo(hH ^`OJQJo(hH ^`OJQJ^Jo(hHo ^`OJQJo(hH ll^l`OJQJo(hH <<^<`OJQJ^Jo(hHo  ! !^ !`OJQJo(hH^`o(.^`o()$ $ ^$ `5o(.   ^ `OJQJo(hH ^`hH. L^`LhH. ^`hH. ^`hH. PLP^P`LhH.808^8`0o(.^`o(.   ^ `OJQJo(hH   ^ `OJQJo(hH   ^ `OJQJo(hH L^`LhH. ^`hH. ^`hH. PLP^P`LhH.^`OJQJo(hH^`OJQJ^Jo(hHo((^(`OJQJo(hH@ @ ^@ `OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHoPP^P`OJQJo(hH YY^Y`OJQJo(hH ^`OJQJ^Jo(hHo ^`OJQJo(hH   ^ `OJQJo(hH QQ^Q`OJQJ^Jo(hHo !!^!`OJQJo(hH ^`OJQJo(hH ^`OJQJ^Jo(hHo ^`OJQJo(hH   ^ `OJQJo(hH / / ^/ `OJQJ^Jo(hHo ^`OJQJo(hH ^`OJQJo(hH ^`OJQJ^Jo(hHo oo^o`OJQJo(hH ??^?`OJQJo(hH ^`OJQJ^Jo(hHo   ^ `OJQJo(hH808^8`05o(.^`o(. $ $ ^$ `OJQJo(@ @ ^@ `.^`OJPJQJ^J)L^`L.^`.^`.PLP^P`L.^`5o()   ^ `hH.\ \ ^\ `o(. xx^x`hH. HH^H`hH. L^`LhH. ^`hH. ^`hH. L^`LhH.0^`0OJPJQJ^Jo( ^`OJQJ^Jo(hHo ^ `OJQJo(hH ^ `OJQJo(hHx^x`OJQJ^Jo(hHoH^H`OJQJo(hH^`OJQJo(hH^`OJQJ^Jo(hHo^`OJQJo(hHS>[Khg~fO D%E9`8v1+ {w%xz[o]PngcR</1PU%Wh5 +$AgxDMj*~ $cY       (r        p,  :i~Z      }ط                S                 ~Z        (r        (r (r      ~Z        (r        ~Z         F*x ~Z     p,~Z~Z~Z    (r (r      ~Z        ~Z        L:F`R >w    `y a      *8        sr&D,@ ed -4GYS{~gX$&cp&ZX/02+C4ra7Q9i9XA>vDFWF8iHioH@IRI{M\Q-+Q WaW%XPY#^V^b`iBa@,b}gIirYrCUt5wwzz^|W}$y6D=Ehf&+:qqz62k-YPO38K3c\Q`o?;m.3qh"qNwn/ Xo\Gmy`=D|ZbgE5RvuFf !R~A" OC\0@"z| 6@ @(@0@@Unknown G*Ax Times New Roman5Symbol3 *Cx ArialO oAmerican Typewriter3Times7@ Calibri7Nj-3 0000? *Cx Courier New;WingdingsA$BCambria Math"qhxhhN0202``924 3qHP ?+C42! xx San Jose State University No Register Chico Cath                   Oh+'0|  8 D P\dlt'San Jose State University No Register Normal.dotm Chico Cat7Microsoft Macintosh Word@T @Pb?S@yb0 ՜.+,0 hp|  '2 San Jose State University Title  !"#$%&'()*+,-./0123456789:;<=>?ABCDEFGHIJKMNOPQRSTUVWXYZ[\]^_`abcdefghijklmnopqrstuvwxyz{|}~Root Entry Fc7ibData @1TableL$eWordDocumentSummaryInformation(DocumentSummaryInformation8CompObj` F Microsoft Word 97-2004 DocumentNB6WWord.Document.8