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Table 4.1 – Reliability Statistic<br />Cronbach's AlphaN of Items.6608<br />Table 4.2 – Scale if deleted<br />Item-Total StatisticsScale Mean if Item DeletedScale Variance if Item DeletedCorrected Item-Total CorrelationCronbach's Alpha if Item DeletedQ10_1 I can easily use the Web to find information on products/services24.1612.311.389.621Q10_2 I usually have no problems finding specific websites24.5212.350.381.622Q10_3 I feel comfortable searching the World Wide Web on my own24.2812.323.390.621Q10_4 I am able to use the Web on my own to locate career sites24.6512.705.366.627Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it24.7811.331.495.590Q10_6 Among my peers, I am usually one of the first to try out new information technologies25.2811.379.380.623Q10_7 In general, I am hesitant to try out new information technologies25.2214.213.026.711Q10_8 I like to experiment with new information technologies24.7111.828.454.604<br />Table 4.3<br />Descriptive StatisticsMeanStd. DeviationAnalysis NQ10_1 I can easily use the Web to find information on products/services4.07.843361Q10_2 I usually have no problems finding specific websites3.71.845361Q10_3 I feel comfortable searching the World Wide Web on my own3.95.840361Q10_4 I am able to use the Web on my own to locate career sites3.58.775361Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it3.45.936361Q10_6 Among my peers, I am usually one of the first to try out new information technologies2.951.083361Q10_8 I like to experiment with new information technologies3.52.876361<br />Table 4.4<br />KMO and Bartlett's TestKaiser-Meyer-Olkin Measure of Sampling Adequacy..709Bartlett's Test of SphericityApprox. Chi-Square654.296df21Sig..000<br />Table 4.5<br />Total Variance ExplainedFactorInitial EigenvaluesExtraction Sums of Squared LoadingsRotation Sums of Squared LoadingsTotal% of VarianceCumulative %Total% of VarianceCumulative %Total% of VarianceCumulative %12.60837.26037.2602.09629.93829.9381.75125.01525.01521.73624.80062.0601.25617.94447.8821.60122.86747.8823.73510.50072.5604.6499.27081.8305.5107.28589.1156.3825.45094.5657.3805.435100.000Extraction Method: Principal Axis Factoring.<br />Table 4.6<br />Rotated Factor MatrixaFactor12Q10_1 I can easily use the Web to find information on products/services.733Q10_2 I usually have no problems finding specific websites.622Q10_3 I feel comfortable searching the World Wide Web on my own.733Q10_4 I am able to use the Web on my own to locate career sites.491Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it.767Q10_6 Among my peers, I am usually one of the first to try out new information technologies.742Q10_8 I like to experiment with new information technologies.657Extraction Method: Principal Axis Factoring.  Rotation Method: Varimax with Kaiser Normalization.a. Rotation converged in 3 iterations.<br />
Appendix 4   Factor Analysis Q10
Appendix 4   Factor Analysis Q10
Appendix 4   Factor Analysis Q10

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Appendix 4 Factor Analysis Q10

  • 1. Table 4.1 – Reliability Statistic<br />Cronbach's AlphaN of Items.6608<br />Table 4.2 – Scale if deleted<br />Item-Total StatisticsScale Mean if Item DeletedScale Variance if Item DeletedCorrected Item-Total CorrelationCronbach's Alpha if Item DeletedQ10_1 I can easily use the Web to find information on products/services24.1612.311.389.621Q10_2 I usually have no problems finding specific websites24.5212.350.381.622Q10_3 I feel comfortable searching the World Wide Web on my own24.2812.323.390.621Q10_4 I am able to use the Web on my own to locate career sites24.6512.705.366.627Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it24.7811.331.495.590Q10_6 Among my peers, I am usually one of the first to try out new information technologies25.2811.379.380.623Q10_7 In general, I am hesitant to try out new information technologies25.2214.213.026.711Q10_8 I like to experiment with new information technologies24.7111.828.454.604<br />Table 4.3<br />Descriptive StatisticsMeanStd. DeviationAnalysis NQ10_1 I can easily use the Web to find information on products/services4.07.843361Q10_2 I usually have no problems finding specific websites3.71.845361Q10_3 I feel comfortable searching the World Wide Web on my own3.95.840361Q10_4 I am able to use the Web on my own to locate career sites3.58.775361Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it3.45.936361Q10_6 Among my peers, I am usually one of the first to try out new information technologies2.951.083361Q10_8 I like to experiment with new information technologies3.52.876361<br />Table 4.4<br />KMO and Bartlett's TestKaiser-Meyer-Olkin Measure of Sampling Adequacy..709Bartlett's Test of SphericityApprox. Chi-Square654.296df21Sig..000<br />Table 4.5<br />Total Variance ExplainedFactorInitial EigenvaluesExtraction Sums of Squared LoadingsRotation Sums of Squared LoadingsTotal% of VarianceCumulative %Total% of VarianceCumulative %Total% of VarianceCumulative %12.60837.26037.2602.09629.93829.9381.75125.01525.01521.73624.80062.0601.25617.94447.8821.60122.86747.8823.73510.50072.5604.6499.27081.8305.5107.28589.1156.3825.45094.5657.3805.435100.000Extraction Method: Principal Axis Factoring.<br />Table 4.6<br />Rotated Factor MatrixaFactor12Q10_1 I can easily use the Web to find information on products/services.733Q10_2 I usually have no problems finding specific websites.622Q10_3 I feel comfortable searching the World Wide Web on my own.733Q10_4 I am able to use the Web on my own to locate career sites.491Q10_5 If I heard about a new type of information technology, I would look for ways to experiment with it.767Q10_6 Among my peers, I am usually one of the first to try out new information technologies.742Q10_8 I like to experiment with new information technologies.657Extraction Method: Principal Axis Factoring. Rotation Method: Varimax with Kaiser Normalization.a. Rotation converged in 3 iterations.<br />