Alina Matei
University of Neuchâtel
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Publication
Featured researches published by Alina Matei.
Electronic Journal of Statistics | 2012
Anton Grafström; Lionel Qualité; Yves Tillé; Alina Matei
More than 50 methods have been developed to draw unequal probability samples with fixed sample size. All these methods require the sum of the inclusion probabilities to be an integer number. There are cases, however, where the sum of desired inclusion probabilities is not an integer. Then, classical algorithms for drawing samples cannot be directly applied. We present two methods to overcome the problem of sample selection with unequal inclusion probabilities when their sum is not an integer and the sample size cannot be fixed. The first one consists in splitting the inclusion probability vector. The second method is based on extending the population with a phantom unit. For both methods the sample size is almost fixed, and equal to the integer part of the sum of the inclusion probabilities or this integer plus one.
Computational Statistics & Data Analysis | 2004
Anne-Catherine Favre; Alina Matei; Yves Tillé
The Cox algorithm allows to round randomly and unbiasedly a table of real numbers without modifying the marginal totals. One possible use of this method is the random imputation of a qualitative variable in survey sampling. A modification of the Cox algorithm is proposed in order to take into account a weighting system, which is commonly used in survey sampling. The use of this new method allows to construct a controlled imputation method that reduces the imputation variance.
Journal of Official Statistics | 2015
Anton Grafström; Alina Matei
Abstract Sample coordination seeks to maximize or to minimize the overlap of two or more samples. The former is known as positive coordination, and the latter as negative coordination. Positive coordination is mainly used for estimation purposes and to reduce data collection costs. Negative coordination is mainly performed to diminish the response burden of the sampled units. Poisson sampling design with permanent random numbers provides an optimum coordination degree of two or more samples. The size of a Poisson sample is, however, random. Conditional Poisson (CP) sampling is a modification of the classical Poisson sampling that produces a fixed-size πps sample. We introduce two methods to coordinate Conditional Poisson samples over time or simultaneously. The first one uses permanent random numbers and the list-sequential implementation of CP sampling. The second method uses a CP sample in the first selection and provides an approximate one in the second selection because the prescribed inclusion probabilities are not respected exactly. The methods are evaluated using the size of the expected sample overlap, and are compared with their competitors using Monte Carlo simulation. The new methods provide a good coordination degree of two samples, close to the performance of Poisson sampling with permanent random numbers.
Journal of Statistical Planning and Inference | 2005
Anne-Catherine Favre; Alina Matei; Yves Tillé
Journal of Statistical Planning and Inference | 2009
Alina Matei; Chris J. Skinner
Survey Methodology | 2015
Alina Matei; Maria Giovanna Ranalli
Computational Statistics & Data Analysis | 2007
Alina Matei; Yves Tillé
Scandinavian Journal of Statistics | 2018
Anton Grafström; Alina Matei
Archive | 2016
Yves Till; Alina Matei
World Statistics Congress | 2013
Maria Giovanna Ranalli; Alina Matei; Andrea Neri