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2 Item analysis for data from file E:\LINDA.TXT Page A B * CHECK THE KEY C ? B was specified, C works better D E A B C D E * A B C * D E A * C D A B * CHECK THE KEY C B was specified, E works better D E ? A B C * D E
3 Item analysis for data from file E:\LINDA.TXT Page A B C D * E A B C D * E A B C D * A B * C D E A C D * A B * C D E
4 Item analysis for data from file E:\LINDA.TXT Page A B C * D E Other A B C D * E A B * C D E A B C D * E A B * C D A ? CHECK THE KEY C * C was specified, A works better D E
5 Item analysis for data from file E:\LINDA.TXT Page A B C D * E A * B ? A was specified, B works better D E A B C D * E A C D * A B * B was specified, D works better D ? A * B ? CHECK THE KEY C A was specified, B works better D
6 Item analysis for data from file E:\LINDA.TXT Page A B C * D E A * A was specified, D works better D ? E A B C * D E A B * C D E A B C * D E A B C * D E
7 Item analysis for data from file E:\LINDA.TXT Page A B * C D E A * B ? CHECK THE KEY C A was specified, B works better D A * B C D E A B ? CHECK THE KEY C * C was specified, B works better D A B C D E * A B C D *
8 Item analysis for data from file E:\LINDA.TXT Page A E was specified, D works better D ? E * A B C D * E A B * C D E A * A was specified, E works better D E ? A B C * D E A B * C D E
9 Item analysis for data from file E:\LINDA.TXT Page A B ? E was specified, B works better D E * A B C * D A B C * D E A B C D * E A ? B CHECK THE KEY C D was specified, A works better D * E A ? CHECK THE KEY C * C was specified, A works better D
10 Item analysis for data from file E:\LINDA.TXT Page A B ? E was specified, B works better D E * A * B C D
11 Item analysis for data from file E:\LINDA.TXT Page 10 There were 30 examinees in the data file. Scale Statistics Scale: N of Items 50 N of Examinees 30 Mean Variance Std. Dev Skew Kurtosis Minimum Maximum Median Alpha SEM Mean P Mean Item-Tot Mean Biserial 0.446
12 3 1 Scores for examinees from file E:\LINDA.TXT
050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA
050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA 55555555555555555555555555555555555555555555555555 NYYNNYNNNYNYYYYYNNYNNNNNYNYYYYYNYNNNNYNNYNNNYNNNNN 01 CAEADDBEDEDBABBBBCBDDDBAAAECEEDCDCDBACCACEECACCCEA
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