2021
DOI: 10.12930/nacada-21-13
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A Strength-based Inventory for Assessing the Needs for Academic Advising of University Students in Hong Kong

Abstract: This study aims to develop and validate a strength-based instrument for assessing the academic advising needs of university students in Hong Kong using the Appreciative Advising Inventory (AAI) as a blueprint. We reviewed the content validity and cultural relevance of the AAI and developed a 37-item AAI Hong Kong Version (AAI-HK). We conducted Rasch analysis and principal component analysis. The AAI-HK has four stable and reliable factors (social competence and support; positive identity and participation; pos… Show more

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“…The existing literature shows that there are many evaluation studies on university academic counseling advice [ 25 ] and empirical research cases on academic counseling [ 26 ] that have been carried out in different regions, but there have only been a few studies on academic counseling needs [ 27 ]. Moreover, most of the literature on academic advising has been conducted in the context of European and American universities [ 7 ].…”
Section: Introductionmentioning
confidence: 99%
“…The existing literature shows that there are many evaluation studies on university academic counseling advice [ 25 ] and empirical research cases on academic counseling [ 26 ] that have been carried out in different regions, but there have only been a few studies on academic counseling needs [ 27 ]. Moreover, most of the literature on academic advising has been conducted in the context of European and American universities [ 7 ].…”
Section: Introductionmentioning
confidence: 99%