D-Score - with out practice Blocks


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Sabi
Sabi
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Dear All


After many discussions with my supervisor i am all confused :(


Am i correct with the assumption that a high D-Score always stands for the associationstrength of the compatible Block?


In My Script i have the following components (i used the Inquisit-Script and just changed the items for the two attributes and the two targets - see the attachment):


AttributeA: Postive


Attribute B: Negative


TargetA: Generation


TargetB: Agegroup


This means the higher my D-Score the higher is the preference of a subject for its Generation in contrast to its age group? -> preference for TargetA-Attribute A?



My second question concerns the modification of the Inquisit Syntax-File: I want to calculate the D-Score without the practice Blocks. Therefor I deleted everything which concerns the test1 (practice blocks) and modified the D-bieb (see the syntax below - changes are bold and underlined):




VALUE LABELS blocknum


 1 'Target practice'


 2 'Attribute practice'


 3 'First pairing practice'


 5 'First pairing test'


 6 'Reversed target practice'


 7 'Second pairing practice'


 9 'Second pairing test' .



IF (MOD(subject,2) = 1) ORDER = 1 .


IF (MOD(subject,2) = 0) ORDER = 2 .



COMPUTE PAIRING = 0.


IF ((ORDER=1) and (blocknum=3|blocknum=5)) PAIRING = 1.


IF ((ORDER=1) and (blocknum=7|blocknum=9)) PAIRING = 2.


IF ((ORDER=2) and (blocknum=7|blocknum=9)) PAIRING = 1.


IF ((ORDER=2) and (blocknum=3|blocknum=5)) PAIRING = 2.



COMPUTE TEST = 0.


IF (blocknum=3|blocknum=7) TEST = 1.


IF (blocknum=5|blocknum=9) TEST = 2.



VALUE LABELS 


   TEST 0 'single-task practice' 1 '1st combined block' 2 '2nd combined block'


 / correct 0 'error' 1 'correct' .



VARIABLE LABELS 


   correct  "0=error, 1=correct"


 / blocknum "block number"


 / trialnum "trial number"


 / ORDER "order of combined tasks"


 / PAIRING "paired categories"


 / TEST "1st or 2nd combined block".



VALUE LABELS 


   PAIRING 


    0 'single task practice'


    1 'compatible'


    2 'incompatible'


 / ORDER 


    1 'compatible first' 


    2 'incompatible first'.



COMPUTE error = 100*(1 - correct).



* Save data to re-use for computing other measures .


SAVE OUTFILE = 'temp.sav'  .



DESCRIPTIVES ALL . 



SUMMARIZE TABLES latency BY TEST BY PAIRING.



GET FILE = 'temp.sav' .



* Use data for Blocks 3,5,7, and 9 (i.e., TEST = 1 or 2) .


SELECT IF (TEST=2) .



* Mark trials with latency < 300 ms (for possible subject discard) .


COMPUTE FLAG_300 = 0 .


IF (LATENCY < 300) FLAG_300 = 1 .


* Mark trials with latency < 400 ms (to provide a count of these) .


COMPUTE FLAG_400 = 0 .


IF (LATENCY < 400) FLAG_400 = 1 .


* Mark trials with latency > 10000 ms (to provide a count of these) .


COMPUTE FLAG_10K = 0 .


IF (LATENCY GT 10000) FLAG_10K = 1 .



* Following line can be used to check frequencies of fast & slow responses & errors .


FREQUENCIES FLAG_300 FLAG_400 FLAG_10K ERROR .



* Record criteria for potential use in subject discards .


* This count can later be used as the basis for subject discard .


AGGREGATE OUTFILE = 'CRITERIA.SAV'


 / BREAK = SUBJECT ORDER


 / PCT_300 = PGT(FLAG_300,0) 


 / PCT_400 = PGT(FLAG_400,0)


 / PCT_10K = PGT(FLAG_10K,0)


 / AVELTNCY ERRORPCT = MEAN (LATENCY ERROR)


 / NTRIALS = N .



* Drop trials slower than 10000 ms for LATENCY .


SELECT IF (LATENCY LE 10000) .



*Drop dummy trials at beginning of blocks .


SELECT IF (trialnum gt 1).



* The following line deletes latencies less than 300. To prevent these trials from being


* discarded, add an asterisk before the next line to comment it out.


* SELECT IF (LATENCY GE 300) .



DESCRIPTIVES ALL.



* The following aggregate command computes block means and SDs needed for the D measures.


AGGREGATE OUTFILE = *


 / BREAK = SUBJECT BLOCKNUM ORDER PAIRING TEST


 / MEAN_LAT MEAN_ERR = MEAN(latency error) / SD_LAT = SD(latency)


 / NTRIALS = N .



DESCRIPTIVES ALL.



*Save this as a record of this stage of analysis .


SAVE OUTFILE = 'BIEP.ALL_MEANS&SDs.SAV' .



IF (PAIRING = 1) N1 = NTRIALS .


IF (PAIRING = 2) N2 = NTRIALS .


IF (PAIRING = 1) M1 = MEAN_LAT .


IF (PAIRING = 2) M2 = MEAN_LAT .


IF (PAIRING = 1) ERR1 = MEAN_ERR .


IF (PAIRING = 2) ERR2 = MEAN_ERR .


IF (PAIRING = 1) SD1 = SD_LAT .


IF (PAIRING = 2) SD2 = SD_LAT .



AGGREGATE OUTFILE = *


 / BREAK = SUBJECT ORDER TEST 


 / M1 M2 ERR1 ERR2 N1 N2 SD1 SD2 =


  FIRST(M1 M2 ERR1 ERR2 N1 N2 SD1 SD2) .



*Save this as a record of this stage of analysis .


SAVE OUTFILE = 'BIEP.MEANS&SDS.SAV' .



IF(TEST=2) ERR1b = ERR1 .


IF(TEST=2) ERR2b = ERR2 .



* These are the numerator components in millisecond units.




IF(TEST=2) M1b = M1 .


IF(TEST=2) M2b = M2 .




IF(TEST=2) SD1b = SD1 .


IF(TEST=2) SD2b = SD2 .




IF(TEST=2) N1b = N1 .


IF(TEST=2) N2b = N2 .



COMPUTE D_asis_num = M2 - M1.



*Use SD based on all responses (StanDevX) as denominator for D_biep .


COMPUTE D_asis_denom = SQRT( ( ((N1-1) * SD1**2 + (N2-1) * SD2**2)


                   + ((N1+N2) * ((M1-M2)**2) / 4) ) / (N1 + N2 - 1) ) .



IF (TEST=2) D_BIEP_b = D_asis_num / D_asis_denom .


IF (TEST=2) Nb = N1+N2 .



DESCRIPTIVES ALL . 



AGGREGATE OUTFILE = *


 / BREAK = SUBJECT ORDER


 / D_biep_a D_biep_b M1a M2a M1b M2b ERR1a ERR2a ERR1b ERR2b Na Nb = 


   FIRST(D_biep_a D_biep_b M1a M2a M1b M2b ERR1a ERR2a ERR1b ERR2b Na Nb).



VARIABLE LABELS


 D_biep_b 'd score 2nd blocks' 


 / Na '# trials, 1st combined blocks'


 / Nb '# trials, 2nd combined blocks'


 / M1a 'Mn Lat. 1st block, pairing 1'


 / M2a 'Mn Lat. 1st block, pairing 2' 


 / M1b 'Mn Lat. 2nd block, pairing 1' 


 / M2b 'Mn Lat. 2nd block, pairing 2' 


 / ERR1a 'Error %  1st block, pairing 1'


 / ERR2a 'Error %  1st block, pairing 2' 


 / ERR1b 'Error %  2nd block, pairing 1' 


 / ERR2b 'Error %  2ns block, pairing 2' 


 / SUBJECT 'Session ID' .



COMPUTE ERR_1 = (ERR1a + ERR1b) / 2 .


COMPUTE ERR_2 = (ERR2a + ERR2b) / 2 .



VARIABLE LABELS


   ERR_1 'Error % for Pairing 1 (both combined tasks)'


 / ERR_2 'Error % for Pairing 2 (both combined tasks)' .



*Compute unweighted combination of measures based on first and second blocks


  of combined tasks.


* !! Do this even if there are fewer trials in the first block because the 


*  first block has been found to have as good or better validity, even with 


*  fewer trials (see Greenwald, Nosek, & Banaji, JPSP 2003) .



COMPUTE D_biep = (D_biep_b) .


EXECUTE.


VARIABLE LABELS


   D_biep   'd score all blocks' .




I am so sorry to bug you with the IAT - but i would appreciate any help!


Best regards


Sabi


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Fertiger IAT.exp (234 views, 17.00 KB)
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Sabi - 13 Years Ago
Sabi - 13 Years Ago
Dave - 13 Years Ago
Dave - 13 Years Ago
nathangardner - 12 Years Ago
Dave - 12 Years Ago
nathangardner - 12 Years Ago
Dave - 12 Years Ago
                         Yes and Yes....
nathangardner - 12 Years Ago
                             If this is true, then it ought to compute pairing.
Dave - 12 Years Ago
                         Oddly, it's assigning values to test, but only for the 5/7...
nathangardner - 12 Years Ago
                             I don't know either, but you might want to talk to SPSS support. This...
Dave - 12 Years Ago

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