2015
DOI: 10.1371/journal.pone.0138237
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The Role of Google Scholar in Evidence Reviews and Its Applicability to Grey Literature Searching

Abstract: Google Scholar (GS), a commonly used web-based academic search engine, catalogues between 2 and 100 million records of both academic and grey literature (articles not formally published by commercial academic publishers). Google Scholar collates results from across the internet and is free to use. As a result it has received considerable attention as a method for searching for literature, particularly in searches for grey literature, as required by systematic reviews. The reliance on GS as a standalone resourc… Show more

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Cited by 1,358 publications
(967 citation statements)
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References 29 publications
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“…However, it should also be kept in mind that there is only limited research available that has empirically determined the effect of any shortcuts or deviations from systematic review standards (Tsertsvadze et al, 2015). Only a few studies have investigated the incremental value of specific systematic review methods (Dickersin, Scherer, and Lefebvre, 1994;Moher et al, 2000;Bushman and Wells, 2001;Horsley, Dingwall, and Sampson, 2011;Giustini and Boulos, 2013;Selph, Ginsburg, and Chou, 2014;and Haddaway et al, 2015) or have tested the validity of the end product by comparing the conclusions reached in rapid reviews versus systematic reviews (Watt et al, 2008a;Watt et al, 2008b;and Hartling et al, 2015a). Hence, we know very little about the impact of deviating from full systematic review methodology.…”
Section: Transparency Of Review Methodsmentioning
confidence: 99%
“…However, it should also be kept in mind that there is only limited research available that has empirically determined the effect of any shortcuts or deviations from systematic review standards (Tsertsvadze et al, 2015). Only a few studies have investigated the incremental value of specific systematic review methods (Dickersin, Scherer, and Lefebvre, 1994;Moher et al, 2000;Bushman and Wells, 2001;Horsley, Dingwall, and Sampson, 2011;Giustini and Boulos, 2013;Selph, Ginsburg, and Chou, 2014;and Haddaway et al, 2015) or have tested the validity of the end product by comparing the conclusions reached in rapid reviews versus systematic reviews (Watt et al, 2008a;Watt et al, 2008b;and Hartling et al, 2015a). Hence, we know very little about the impact of deviating from full systematic review methodology.…”
Section: Transparency Of Review Methodsmentioning
confidence: 99%
“…they order results using an unknown and often changing algorithm, [14]) and are restricted in their scope or in the number of results that can be viewed by the user (Google Scholar). Google Scholar has been shown not to be suitable as a standalone resource in systematic reviews but it remains a valuable tool for supplementing bibliographic searches [6,19] and to obtain full-text PDF of articles. BASE Bielefeld academic search engine (https://www.base-search.net) is developed by the University of Bielefeld (Germany) and gives access to a wide range of information, including academic articles, audio files, maps, theses, newspaper articles, and datasets.…”
Section: Electronic Bibliographic Sourcesmentioning
confidence: 99%
“…Search strings needs to be tailored to the search engine of each electronic bibliographic source to be searched (e.g. [19]). To build up the string, the team should rely on the syntax that is available in the help pages of the bibliographic sources, including the use of Boolean operators, where applicable.…”
Section: Building the Search Stringmentioning
confidence: 99%
“…One such study that merits our attention is that published by Haddaway et al (2015), who, after investigating the usefulness of Google Scholar as a database in systematic reviews and grey literature, calculated a total rate of duplicate records due to parsing errors of around 5%, because of the following factors:…”
Section: A) Absurd Authorsmentioning
confidence: 99%