Conditional inference with a complex sampling: exact computations and Monte Carlo estimations
In survey statistics, the usual technique for estimating a population total consists in summing appropriately weighted variable values for the units in the sample. Different weighting systems exit: sampling weights, GREG weights or calibration weights for example. In this article, we propose to use...
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Zusammenfassung: | In survey statistics, the usual technique for estimating a population total
consists in summing appropriately weighted variable values for the units in the
sample. Different weighting systems exit: sampling weights, GREG weights or
calibration weights for example. In this article, we propose to use the inverse
of conditional inclusion probabilities as weighting system. We study examples
where an auxiliary information enables to perform an a posteriori
stratification of the population. We show that, in these cases, exact
computations of the conditional weights are possible. When the auxiliary
information consists in the knowledge of a quantitative variable for all the
units of the population, then we show that the conditional weights can be
estimated via Monte-Carlo simulations. This method is applied to outlier and
strata-Jumper adjustments. |
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DOI: | 10.48550/arxiv.1201.1490 |