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ArtikelA Model Selection Method for S-Estimation  
Oleh: Preminger, Arie ; Sakata, Shinichi
Jenis: Article from Journal - ilmiah internasional
Dalam koleksi: The Econometrics Journal vol. 10 no. 2 (2007), page 294–319.
Topik: estimation; data cleaning; partial identification; law of the iterated logarithm
Fulltext: 294.pdf (588.04KB)
Ketersediaan
  • Perpustakaan Pusat (Semanggi)
    • Nomor Panggil: EE39.3
    • Non-tandon: 1 (dapat dipinjam: 0)
    • Tandon: tidak ada
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Isi artikelCleaning data or removing some data periods in least squares (LS) regression analysis is not unusual. This practice indicates that a researcher sometimes desires to estimate the parameter value, with which the regression function fits a large fraction of individuals or events in the population (behind the original data set), possibly exhibiting poor fits to some atypical individuals or events. The S - estimators are a class of estimators that are consistent with the researcher's desire in such situations. In this paper, we propose a method of model selection suitable in the S - estimation. The proposed method chooses a model that minimizes a criterion named the penalised S - scale criterion (PSC), which is decreasing in the sample S - scale of fitted residuals and increasing in the number of parameters. We study the large sample behavior of the PSC in non linear regression with dependent, heterogeneous data, to establish sets of conditions sufficient for the PSC to consistently select the best - fitting, most parsimonious model. Our analysis allows for partial unidentifiability, which is an important possibility when selecting one among non - linear regression models. We conduct Monte Carlo simulations to verify that a particular PSC called the PSC - S is at least as trustworthy as the Schwarz information criterion, often used in the LS regression.
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