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(PATH ANALYSIS)


          533JCe 202
          533JCe 214
              533JCe
                 216
PATH ANALYSIS

  



  

  

  

  

  

  
PATH ANALYSIS





                  3



               PATH







(








(Path analysis)



(Regression analysis)
Path Analysis

1.
(PATH
ANALYSIS)




(Causal Analysis)
    (Causal Relationship Model)
         description
        explanation            prediction)
               control)



Bollen 1989, 72-77                  , 5-7
 Experimental Research
                    , Non-Experimental Research
                                             9

2.
10
X
X        Y
             Y
    X1           X1       X1

    X2                         11
(Causal or Relationship Model)
  Manifest(Observed) / Latent
  (Unobserved)
  Recursive / Non- Recursive
Manifest(Observed) Multiple Regression
 Analysis, Path Analysis
Latent (Unobserved) Factor Analysis
Recursive          Non- Recursive
                                    12
13
Regression Model
Path Model
Factor Analysis Model
๏EFM
๏CFM
 Covariance Structure Model
= LISREL                      14
Regression Model
Model :
Multiple regression


                      X   b        e
                          b
                      X       Y
                          b
                      X           15
Path Model
 Model :                        Y=
XB+e
                            X1 - X4
    X1                     Exogenous
V.)
X -X X2 = p21X1 + e2
 Endogenous X1 +
     X3 = p31V.
      p32X2 + e3
     X4 = p42X2 +                16

      p43X3 + e4
Factor Analysis Model
EFM Exploratory Factor Model: EFM
 Model :




                                    17
Factor Analysis Model

CFM   Confirmatory Factor Model: CFM
 Model :




                                  18
Covariance Structure Model
        LISREL
           (Structural Relation)


Path Analysis    Confirmatory Facto
Model: CFM

                                   19
Covariance Structure Model   LISREL




                        (Cross Table Analysis)
                  (Loglinear Model)
                       (Correlation Analysis)
                               (Classical Path 20
Analysis)
AMOS




       21
EQS




      22
GREEK ALPHABETS




                  23
2537: 29




    /
(2542: 40
(2544 : 65
(direct effect)
(indirect effect)
                    (chronological

                 (Path Analysis with
Correlation :PAR)



    (Path Analysis with Q Statistic : PAQ)



                                        (Path
          Analysis with LISREL : PAL)
(DUNCAN)


            (Pearson Correlation)




                       (Path
Analysis with Correlation : PAR)
(SPECHT)

(Q Statistic)
                     (Path Analysis with
Q Statistic : PAQ)
       (Liscomp)
   (EQS)
    (LISREL)
(PATH ANALYSIS WITH LISREL : PAL)




                           (Maximum
Likelihood : ML)
1.



2.




3.
(r)



                          (Direct Effect
: DE)         (Indirect Effect : IE)
          (Spurious Relationship :
SR)     (Joint Effect : JE)

(              :
1.                      (true Correlation)
2.                     (Spurious
     Relationship)
3.
                     (Intervening Variable)
4.                           (No Correlation)
5.
     (Directed & Indirect Effect)
6.
     (Reciprocal Causal Relationship)
1.
       (TRUECORRELATION)

1.                         (True
     Correlation)

            2       Z

        X                          Y
2.
      ( SPURIOUS RELATIONSHIP
 2.

 ( Spurious Relationship

                                2


                           Z

       X
                                Y
3.

     (INTERVENING VARIABLE)

3.


 (Intervening Variable)

        2
        X              Z      Y
4.                      (NO
     CORRELATION)

4.                      (No
 Correlation)
          2
                    Z

      X
                              Y
5.

     (DIRECT EFFECT AND INDIRECT
     EFFECT)
5.


 (Direct Effect And Indirect Effect)

                    Z


     X
                                   Y
6.

     (RECIPROCAL CAUSAL RELATIONSHIP)


6.




          X                      Y
1.                    (Exogenous
     Variable)
2.                   (Endogenous
     Variable)
3.                      (Residual
     Variable : e)
e1
                              e4
                     e3
X1


                X3        Y



 X2


           e2
1.
 (EXOGENOUS VARIABLE)



(Exogenous Variable)
2.
     (ENDOGENOUS VARIABLE)


 (Endogenous Variable)
3.
   (RESIDUAL VARIABLE : E)




(Residual Variable : e)
2

1.          (Latent or
 unobserved variable)
2.               (observed
 variable)
X1


     X3        Y



X2        X1


          x2
(Structural
Equations)
(
e1           e3
                                   e4
1          p31              p41


    p21          3                      4
          p32                p43

2                    p42


    e2
1.                             (Exogenous Variable)


     (Residual Variable : e)




                    Z2= P21Z1+e1



              Z3 = P31Z1+ P32Z2+e3
                           (Cross
 Table Analysis)

(Log linear Model)

(Classical Path Analysis)

(CROSS TABLE ANALYSIS)
(LOGLINEAR MODEL)
(CLASSICAL PATH ANALYSIS)




       (path Coefficient : P)




(Standardized Regression Coeffcient
(MODERN PATH ANALYSIS)
(PAR)
1.



2.



3.               (Residual
     Variable)
1.




2.
PATH

ANALYSIS
           Path Analysis

1.
2.


3.


4.
PATH
ANALYSIS



           :




               :









LISREL




     Path analysis
confirm model
          LISREL
        LISREL
          Path
http://academic.cmru.ac.th/wijai/




                                69
           .(2534).
               :

            .(2552).
    4
        :

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Path analysis