Framing the Theory of Sampling in risk assessment: a compelling perspective for the future

Sampling is necessary every time inferences are to be made to take informed, optimal decisions in science, technology, industry, trade and commerce. For reasons extensively addressed over the last two decades, application fields where good sampling practices are a source of economic gain-and bad sam...

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Veröffentlicht in:Spectroscopy Europe 2022-11, Vol.34 (8), p.36
Hauptverfasser: Esbensen, Kim, Paoletti, Claudia
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description Sampling is necessary every time inferences are to be made to take informed, optimal decisions in science, technology, industry, trade and commerce. For reasons extensively addressed over the last two decades, application fields where good sampling practices are a source of economic gain-and bad sampling performance results in significant but unnecessary loss of money, such as the mining/minerals/metals industrial sectors-explicate the role of sampling more than others. In stark contrast to other fields (the realm of food and feed safety assessment is a prime example), sampling is largely perceived as an economic burden and a technical necessity to be fulfilled because of regulatory demands, rather than a vehicle with which to ensure reliable evidence to support management and regulatory decisions. Risk assessment and sampling are both probabilistic disciplines, the first devoted to estimate and minimise economic, safety and other risks, the latter devoted to estimate and mitigate sampling risks (the effects of sampling errors). Here we offer an exposé showing that the Theory of Sampling is an essential discipline and practical tool needed to ensure the best possible estimation of risks in support of both narrow economic objectives (industry, technology, trade, commerce), as well as broader safety decision-making and risk management environmental and biological sciences, and society at large. This contribution offers a novel perspective arguing for proper sampling, one where the economic argument ("what's in it for me") for proper sampling is demonstrated in practically all contexts, hereby complementing the compelling 25-author "Economic Arguments for Representative Sampling".1
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subjects Commerce
Decision making
Economic impact
Environmental management
Industrial safety
Occupational safety
Risk assessment
Risk management
Safety management
Sampling
Sampling error
title Framing the Theory of Sampling in risk assessment: a compelling perspective for the future
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