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The statistical implications of autocorrelation for detection
in environmental health assessment
M. Power
Department of Agricultural Economics, University of Manitoba,
Winnipeg, Manitoba, R3T 2N2, Canada
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Abstract
Many environmental health and risk assessment techniques
and models aim at estimating the fluctuations of selected biological
endpoints through the time domain as a means of assessing changes
in the environment or the probability of a particular measurement
level occurring. In either case, estimates of the sample variance
and mean of the sample variance are crucial to making appropriate
statistical inferences. The commonly employed statistical techniques
for estimating both measures presume the data were generated by
a covariance stationary process. Ta such cases, the observations
are treated as independently and identically distributed and classical
statistical testing methods are applied. However, if the assumption
of covariance stationarity is violated, the resulting sample variance
and variance of the sample mean estimates are biased. The bias compromises
statistical testing procedures by increasing the probability of
detecting significance in tests of mean and variance differences.
This can lead to inappropriate decisions being made about the severity
of environmental damage. Accordingly, it is argued that data sets
be examined for correlation in the time domain and appropriate adjustments
be made to the required estimators before they are used in statistical
hypothesis testing. Only then can credible and scientifically defensible
decisions be made by environmental decision makers and regulators.
Keywords: environmental assessment, detection, time series
analysis, non-stationarity
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