Navigation und Service

Zielgruppeneinstiege

Hinweis zur Verwendung von Cookies

Mit dem Klick auf "Erlauben" erklären Sie sich damit einverstanden, dass wir Ihren Aufenthalt auf der Seite anonymisiert aufzeichnen. Die Auswertungen enthalten keine personenbezogenen Daten und werden ausschließlich zur Analyse, Pflege und Verbesserung unseres Internetauftritts eingesetzt. Weitere Informationen zum Datenschutz erhalten Sie über den folgenden Link: Datenschutz

OK

Abstract zur Publikation: A bagging-based correction for the mixture model estimator of population size

Kuhnert R, Del Rio Vilas VJ, Gallagher J, Böhning D (2008): A bagging-based correction for the mixture model estimator of population size
Biometr. J. 50 (6): 993-1005.

Estimation of a population size by means of capture-recapture techniques is an important problem occurring in many areas of life and social sciences. We consider the frequencies of frequencies situation, where a count variable is used to summarize how often a unit has been identified in the target population of interest. The distribution of this count variable is zero-truncated since zero identifications do not occur in the sample. As an application we consider the surveillance of scrapie in Great Britain. In this case study holdings with scrapie that are not identified (zero counts) do not enter the surveillance database. The count variable of interest is the number of scrapie cases per holding. For count distributions a common model is the Poisson distribution and, to adjust for potential heterogeneity, a discrete mixture of Poisson distributions is used. Mixtures of Poissons usually provide an excellent fit as will be demonstrated in the application of interest. However, as it has been recently demonstrated, mixtures also suffer under the so-called boundary problem, resulting in overestimation of population size. It is suggested here to select the mixture model on the basis of the Bayesian Information Criterion. This strategy is further refined by employing a bagging procedure leading to a series of estimates of population size. Using the median of this series, highly influential size estimates are avoided. In limited simulation studies it is shown that the procedure leads to estimates with remarkable small bias.

Zusatzinformationen

Gesundheits­monitoring

In­fek­ti­ons­schutz

Forschung

Kom­mis­sio­nen

Ser­vice

Das Robert Koch-Institut ist ein Bundesinstitut im Geschäftsbereich des Bundesministeriums für Gesundheit

© Robert Koch-Institut

Alle Rechte vorbehalten, soweit nicht ausdrücklich anders vermerkt.