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Sara Dolnicar

Researcher at University of Queensland

Publications -  396
Citations -  16406

Sara Dolnicar is an academic researcher from University of Queensland. The author has contributed to research in topics: Tourism & Market segmentation. The author has an hindex of 68, co-authored 366 publications receiving 13559 citations. Previous affiliations of Sara Dolnicar include University of Vienna & Vienna University of Economics and Business.

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Artificial binary data scenarios

TL;DR: This manual describes artificial binary data scenarios that can be used to compare the performance of algorithms for market segmentation.
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Assessing the carbon footprint of tourism businesses using environmentally extended input-output analysis

TL;DR: In this paper, an alternative approach, the Environmentally Extended Input-Output Analysis (EIEA), is proposed to estimate the indirect carbon emissions of the tourism industry, which is the key to identifying target areas for improvement.
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Can publicly visible pro-environmental initiatives improve the organic environmental image of destinations?

TL;DR: In this article, the authors propose that the way tourists perceive a destination, the destination image, affects tourists' destination choice, and propose an organic destination image formation theory based on the concept of destination image.
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PROGRESS IN FIELD EXPERIMENTATION FOR ENVIRONMENTALLY SUSTAINABLE TOURISM – A knowledge map and research agenda

TL;DR: In this article , the authors present a review of intervention experiments in tourism and hospitality aimed at making tourist behaviour more sustainable, highlighting that past intervention studies were limited to only a small number of relevant target behaviours and intervention types.

Segmenting the Volunteer Market: Learnings from an Australian Study

TL;DR: In this article, the authors segment the volunteering market into homogeneous subgroups based on peoples' motivations to volunteer, and identify three segments with distinctive motivational patterns: social volunteers, community volunteers and altruistic volunteers.