Despite the popularity and importance, there is limited work on modelling data which come from complex survey design using finite mixture models. In this work, we explored the use of finite mixture regression models when the samples were drawn using a complex survey design. In particular, we considered modelling data collected based on stratified sampling design. We developed a new design-based inference where we integrated sampling weights in the complete-data log-likelihood function. The expectation-maximisation algorithm was developed accordingly. A simulation study was conducted to compare the new methodology with the usual finite mixture of a regression model. The comparison was done using bias-variance components of mean square error. Additionally, a simulation study was conducted to assess the ability of the Bayesian information criterion to select the optimal number of components under the proposed modelling approach. The methodology was implemented on real data with good results.
机构:
Hungarian Res Network HUN REN, Inst Comp Sci & Control SZTAK, H-1111 Budapest, HungaryHungarian Res Network HUN REN, Inst Comp Sci & Control SZTAK, H-1111 Budapest, Hungary
Szentpeteri, Szabolcs
Csaji, Balazs Csanad
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机构:
Hungarian Res Network HUN REN, Inst Comp Sci & Control SZTAK, H-1111 Budapest, Hungary
Eotvos Lorand Univ, Dept Probabil Theory & Stat, H-1053 Budapest, HungaryHungarian Res Network HUN REN, Inst Comp Sci & Control SZTAK, H-1111 Budapest, Hungary
Csaji, Balazs Csanad
IEEE CONTROL SYSTEMS LETTERS,
2024,
8
: 1523
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1528