2017
DOI: 10.1111/jiec.12537
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The Corruption Footprints of Nations

Abstract: Summary In this study, we innovatively apply multiregional input‐output analysis to calculate corruption footprints of nations and show the details of commodities that use the most employment affected by corruption (EAC), as they flow between countries. Every country's corruption footprint includes its domestic corruption and the corruption imported by global supply chains to meet final demand. Our results show that, generally, the net corruption exporters are developing countries, with the exception of Italy … Show more

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Cited by 32 publications
(21 citation statements)
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References 45 publications
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“…It demonstrates Feenstra (2007) hypothesis about the outsourcing of lower-skilled jobs. It also reaffirms the so-called 'race to the bottom' observed by Xiao et al (2017a).…”
Section: The Socioeconomic Impact Of European Policies: An Indicator-supporting
confidence: 75%
“…It demonstrates Feenstra (2007) hypothesis about the outsourcing of lower-skilled jobs. It also reaffirms the so-called 'race to the bottom' observed by Xiao et al (2017a).…”
Section: The Socioeconomic Impact Of European Policies: An Indicator-supporting
confidence: 75%
“…However, due to a lack of detailed social data for sectors and regions, coupling of such data with an MRIO table comes with its challenges. For example, for the case of corruption, Xiao and colleagues () applied an assumption that the higher the number of people employed by a sector, the higher the corruption in that sector. In the absence of detailed data, this might be satisfactory as a first cut exercise; however, for informing policy making, further deliberation of data for informing such an analysis is crucial.…”
Section: Discussionmentioning
confidence: 99%
“…The county's overall corruption risk is applied to each sector, and since the number of workers in each sector is known, the percentage of workers affected by corruption can be translated into a number of workers. One obvious outcome of this method is that more workers means more corruption (Xiao et al ), which may or may not be the case.…”
mentioning
confidence: 99%
“…The range of aspects to consider for candidate locations is wide. Think of corruption (Xiao et al 2018) and water stress (Settanni et al 2019) to name a few. Probably enough to start questioning strategies based on back-ofthe-envelope calculations.…”
Section: So What Other Factors Determine a Good Manufacturing Location?mentioning
confidence: 99%