2023
DOI: 10.29407/intensif.v7i1.18538
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Analysis of E-Government Health Application Features Acceptance on Partner Applications During COVID-19

Abstract: This study analyzes the factors that influence public acceptance of E-Government Health Application feature on partner applications. The current phenomenon in the health sector is the emergence of COVID-19 which has a very fast rate of human-to-human spread. To handle these cases, the government evaluates and looks for new innovations by cooperating with new partners and making E-Government Health Application feature accessible through partner applications to make it easier for the public. The successful use o… Show more

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“…Outer model measurements are assessed based on three criteria: convergent validity, discriminant validity, and composite reliability [36]. Convergent validity is based on the loading factor value (correlation of item scores with construct scores) in each construct; the ideal loading factor value is > 0.7 [37]. Meanwhile, discriminant validity testing is assessed by comparing the AVE root value in each construct with the correlation between one construct and another in the model; the minimum accepted AVE value is 0.50 [38].…”
Section: Qs1mentioning
confidence: 99%
“…Outer model measurements are assessed based on three criteria: convergent validity, discriminant validity, and composite reliability [36]. Convergent validity is based on the loading factor value (correlation of item scores with construct scores) in each construct; the ideal loading factor value is > 0.7 [37]. Meanwhile, discriminant validity testing is assessed by comparing the AVE root value in each construct with the correlation between one construct and another in the model; the minimum accepted AVE value is 0.50 [38].…”
Section: Qs1mentioning
confidence: 99%