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Autor
Artem Shcherbina (National Taras Shevchenko University of Kyiv), Rostyslav Maiboroda (National Taras Shevchenko University of Kyiv)
Tytuł
Finite Mixtures Model Approach to Sensitive Questions in Surveys
Źródło
Statistics in Transition, 2011, vol. 12, nr 2, s. 331-344, rys., bibliogr. 12 poz.
Słowa kluczowe
Estymatory, Metoda największej wiarygodności, Badania ankietowe, Estymacja
Estimators, Maximum likelihood estimation, Questionnaire survey, Estimation
Uwagi
Materiały z The Third Baltic-Nordic Conference on Survey Statistics.
summ.
Abstrakt
Observations from mixtures of different subpopulations are common in biological and sociological studies. We consider the case, when the observations are taken from a set of groups containing subjects, which belong to different subpopulations. Proportion of each subpopulation in a group is known and can vary from group to group. Our aim is to estimate the means of an observed variable for subjects, which belong to each subpopulation. In this paper we consider the case, when subpopulations are defined by answers on so called "sensitive questions". We consider some parametric and nonparametric estimates of the subpopulation means, such as weighted means, maximum likelihood and weighted least squares estimates. Finite sample properties of these estimates are analyzed. Mean square errors of the estimates are compared on simulated data. Some asymptotic results are also given. (original abstract)
Dostępne w
Biblioteka Główna Uniwersytetu Ekonomicznego w Krakowie
Biblioteka SGH im. Profesora Andrzeja Grodka
Biblioteka Główna Uniwersytetu Ekonomicznego w Katowicach
Biblioteka Główna Uniwersytetu Ekonomicznego w Poznaniu
Biblioteka Główna Uniwersytetu Ekonomicznego we Wrocławiu
Pełny tekst
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Bibliografia
Pokaż
  1. BOROVKOV A.A. (1998). Mathematical statistics, Gordon and Breach Science Publishers, Amsterdam.
  2. CHRISTOPHER C. HEYDE (1997) Quasi- Likelihood And Its Application: A General Approach to Optimal Parameter Estimation, Springer.
  3. CHRISTOPHER G. SMALL, JINFANG WANG, (2003), Numerical Methods for Nonlinear Estimating Equations, Oxford.
  4. COUTTS E. & JANN B. (2011), Sensitive Questions in Online Surveys: Experimental Results for the Randomized Response Technique (RRT) and the Unmatched Count Technique (UCT), Sociological Methods & Research, 40, 169- 193.
  5. KERKVLIET J. (1994) Cheating by economics students: A comparison of survey results. The Journal of Economic Education, Vol. 25, No. 2, p. 121 -133.
  6. MAIBORODA R. (1996) Estimates for distributions of components of mixtures with varying concentrations. Ukrainian Mathematical Journal, 48(4), 618-622.
  7. MAIBORODA R. (1999) An asymptotically effective probability estimator constructed from observations of a mixture. Theory Probab. Math. Stat. 59, 121-128
  8. MAIBORODA R. & SUGAKOVA O. (2008) Estimation and classification by observations from mixtures, Kyiv University Publishers, Kyiv (in Ukrainian).
  9. McLACKLAN G. J., PEEL D. (2000). Finite Mixture Models, Wiley, New York.
  10. ONG A.D. and WEISS D.J. The Impact of Anonymity on Responses to Sensitive Questions. Journal of Applied Social Psychology. Volume 30, Issue 8, p. 1691-1708.
  11. SHCHERBINA A. (2011) Mean value estimation in the model of mixture with varying concentrations. Teor. Imovir. Ta Matem. Statyst., No. 84, pp. 142154. (In Ukrainian, English translation to appear in Theory Probab. Math. Stat).
  12. SHCHERBINA A. (2011a) Estimation of parameters of binomial distribution in mixture model. Teor. Imovir. Ta Matem. Statyst. (In Ukrainian, English translation to appear in Theory Probab. Math. Stat).
Cytowane przez
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ISSN
1234-7655
Język
eng
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