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1 050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA NYYNNYNNNYNYYYYYNNYNNNNNYNYYYYYNYNNNNYNNYNNNYNNNNN 01 CAEADDBEDEDBABBBBCBDDDBAAAECEEDCDCDBACCACEECACCCEA 02 BECABCEADBDECEEEBCEEDDAACDCBCCBACCEDDDBACDECDDDABA 03 BDEABCDEDBDCBCCCBCCEDDDAEEADAAEAEADDAECECBECBEDCEA 04 EECADBDDDBDBCDBDBCDEDDBACACBCCBCCCEDADBACBBCBDDCEC 05 BDCABEECDADCAECEBCAEEDAADDCCCECCDCBDACCAACACACDCEC 06 DDBADCDADBDDDEDEBEDADDAAADBEBAEABCDDAAAADCEADADCEB 07 BECABCDDBDDBCDBDBCDADDDACDCBCCBAACEBADBECDBBCDECEA 08 DECACCDEDCDEEAEABCEEDDBACDDDDCEACCEDABAECBECEBDCEA 09 BCCABAEBDBDABDADBCBEEDBAEDADAABAECCDAEDEDCECBEDCEA 10 EEBADADDBADCCBCBBCDEDDBAEAEECCECDCEDADBACDACADBCEC 11 BCAADABEDEDBEABABCADDDBAEADBDDDCCCCBABEACEEAEBDCEA 12 BDEAECDDDBDBCDBDBCDEDDAACDABCCBCCCEDADBACBACCDDCEC 13 CEDABDDDDBDBCDBDBCDEDDBACDCDCCBABCEDADBECBECCDACEA 14 CECABCDDDBDBCDBDBCEECDBACDCBCCBABCEBEABEEBBCADBCEB 15 BBEABBAABDDBQDBDBCEEADBCADCACCBAACADEDEEDDACADDCEA 16 BEDAACAEBDDBCDBDBCEADDAACDCBCCBAACEBADBEAAECCDACEA 17 BECABCDDDBDACEBDBAEADDBACDCBCCBAABEDDDBACBECCDDCEA 18 AEDAACDDDBDBCDBDBCEADDDACDBBCCBAACEDADBEABEBCDDCEA 19 BABABDDEDCDDCCDCBCDDDDBACDCBCCAAECEDADBEEDECBDBCEA 20 BECAEDDDDBDDCDBDBCDEDDBACDCBCCBAACEDADBECBECADECEA 21 BECABCDDDBDBCDBDBCEECDBACDCBCCBABBEDEDBECBECCDACEB 22 BECABCDDDBDDCDBDBCDEDDBBCDCBCCBBACEDADBECBECCDACEA 23 BDEABBDDDBDBDDBDBCCEEDBAEEBDBBDABACDAADECBEBDAECEA 24 BBCABCADDDDBBAAABCAEADBCBDCACABAACADEDEEBAECADDCEA 25 CECABCDDDBDBCDBDBCDBDDAACDCBECBACCEDADBACBECCDACEA 26 BECABBDDDBDBCDBDBCDEDDBACDCBCCBBBCEDADBECBECADDCEA 27 CECABCDDDBDBCDBDBADEDDBACDCBCCBBACEDADBECDECADACEA 28 BECAACDDDBDBCDBDBCDDDDBACDCBDCAAABEBADBACBEACDCCEA 29 EBCABECBDEDEDBEBBCBEBDBABDCBCBBABCBDEABEBCACAADCEA 30 ADAABCCCDADDECDCBCCABDBADDCCCDCACCBBABCABAECBBDCEA

2 Item analysis for data from file lindaoke.txt Page A B C D E * A B C * D E A B C * D E A B * C D E A B * C D E A B C * D E Other

3 Item analysis for data from file lindaoke.txt Page A B C D * E A B * C D E A B C D * E A B C D * E A B C * D E A B C * D E

4 Item analysis for data from file lindaoke.txt Page A B * C D E A B C * D E A B C * D E A B * C D E A * B C D E A B C D * E

5 Item analysis for data from file lindaoke.txt Page A B C * D E A B C * D E

6 Item analysis for data from file lindaoke.txt Page 5 There were 30 examinees in the data file. Scale Statistics Scale: N of Items 20 N of Examinees 30 Mean Variance Std. Dev Skew Kurtosis Minimum Maximum Median Alpha SEM Mean P Mean Item-Tot Mean Biserial 0.788

050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA

050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA 050 0 N 03 BECABCDDDBDBCDBDBCDADDBACACBCCBAACEDEDBACBECCDDCEA 55555555555555555555555555555555555555555555555555 YYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYYY 01 CAEADDBEDEDBABBBBCBDDDBAAAECEEDCDCDBACCACEECACCCEA

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