Seeing the Forest, Not the Trees – Crowdsourced Data Collection Methods for Sector-Wide Research

IF 1.6 Q3 HOSPITALITY, LEISURE, SPORT & TOURISM Visitor Studies Pub Date : 2023-01-02 DOI:10.1080/10645578.2023.2167404
John Voiklis, Kate Flinner, S. Field, Rupanwita Gupta, J. Fraser, J. T. Dwyer, Shelley Rank, Kathryn M. Nock
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Abstract

ABSTRACT Research that involves a large and broad sample of museums can produce a representative picture of the entire museum sector and lead to global insights that may not be attainable through a more local lens. However, many museum research projects use a small sample of museums, meant to represent the entire field. We propose a research method that distributes data collection across a broad swath of museums to provide local detail that can be used to assemble a collective picture on a topic of interest to the field. This method, called crowdsourced data collection, was used in a yearlong study of zoos and aquariums in North America, in which 95 institutions were asked to collect data for one to two survey modules per month. We hoped this approach would produce data comparable to data gathered with conventional methods and reduce burden on participating institutions. We found the method replicated nationally representative studies with two validated scales. While only one third of the institutions completed all modules, institutions typically did 8-9 modules, with only slight decreases in the probability of completing the study over time. These results suggest researchers can use crowdsourced data collection to reliably study the museum sector. We also discuss the challenges of this method for researchers and institutions participating as data collection sites.
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看到森林,而不是树木——全行业研究的众包数据收集方法
涉及大量博物馆样本的研究可以产生整个博物馆部门的代表性画面,并导致全球见解,这可能无法通过更局部的镜头实现。然而,许多博物馆研究项目使用的是一小部分博物馆样本,意在代表整个领域。我们提出了一种研究方法,该方法将数据收集分布在广泛的博物馆中,以提供可用于在该领域感兴趣的主题上组装集体图片的本地细节。这种方法被称为众包数据收集,在一项为期一年的研究中被用于北美的动物园和水族馆,在这项研究中,95个机构被要求每月收集一到两个调查模块的数据。我们希望这种方法能够产生与传统方法收集的数据相当的数据,并减轻参与机构的负担。我们发现该方法用两种有效的量表复制了具有全国代表性的研究。虽然只有三分之一的院校完成了所有模块,但院校通常会完成8-9个模块,随着时间的推移,完成研究的可能性只会略有下降。这些结果表明,研究人员可以使用众包数据收集来可靠地研究博物馆部门。我们还讨论了作为数据收集点参与的研究人员和机构所面临的挑战。
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来源期刊
Visitor Studies
Visitor Studies HOSPITALITY, LEISURE, SPORT & TOURISM-
CiteScore
2.90
自引率
13.30%
发文量
9
期刊最新文献
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