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Appendix I. The Precision Rate Plot for Dynamic Questionnaire
Four in Back Propagation of Error Neural Network
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Appendix J. The calculation of the unused attributes values for Dynamic questionnaire three
Due to the space of the page, the researcher shows an example of the calculation of the average values of unused attributes. The unused attributes are highlighted in yellow. The average value of each unused attribute highlighted in green.
Changed all the original values in the attributes to the average values that calculated at above.
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Appendix K. The calculation of the unused attributes values for Dynamic questionnaire four
Due to the space of the page, the researcher shows an example of the calculation of the average values of unused attributes. The unused attributes are highlighted in yellow. The average value of each unused attribute highlighted in green.
Changed all the original values in the attributes to the average values that calculated at above.
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