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OUTLIER TEST IN RANDOMIZED LINEAR MODEL 被引量:2
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作者 XIANGLIMING SHILEI 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 1994年第1期65-75,共11页
In this papert we give an approach for detecting one or more outliers inrandomized linear model.The likelihood ratio test statistic and its distributions underthe null hypothesis and the alternative hypothesis are giv... In this papert we give an approach for detecting one or more outliers inrandomized linear model.The likelihood ratio test statistic and its distributions underthe null hypothesis and the alternative hypothesis are given. Furthermore,the robustnessof the test statistic in a certain sense is proved. Finally,the optimality properties of thetest are derived. 展开更多
关键词 randomized linear model.Outliers Likelihood Ratio Test UNIFORMLY
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Mapping Soil Organic Carbon Stocks of Northeastern China Using Expert Knowledge and GIS-based Methods 被引量:2
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作者 SONG Xiaodong LIU Feng +4 位作者 JU Bing ZHI Junjun LI Decheng ZHAO Yuguo ZHANG Ganlin 《Chinese Geographical Science》 SCIE CSCD 2017年第4期516-528,共13页
The main aim of this paper was to calculate soil organic carbon stock(SOCS) with consideration of the pedogenetic horizons using expert knowledge and GIS-based methods in northeastern China.A novel prediction process ... The main aim of this paper was to calculate soil organic carbon stock(SOCS) with consideration of the pedogenetic horizons using expert knowledge and GIS-based methods in northeastern China.A novel prediction process was presented and was referred to as model-then-calculate with respect to the variable thicknesses of soil horizons(MCV).The model-then-calculate with fixed-thickness(MCF),soil profile statistics(SPS),pedological professional knowledge-based(PKB) and vegetation type-based(Veg) methods were carried out for comparison.With respect to the similar pedological information,nine common layers from topsoil to bedrock were grouped in the MCV.Validation results suggested that the MCV method generated better performance than the other methods considered.For the comparison of polygon based approaches,the Veg method generated better accuracy than both SPS and PKB,as limited soil data were incorporated.Additional prediction of the pedogenetic horizons within MCV benefitted the regional SOCS estimation and provided information for future soil classification and understanding of soil functions.The intermediate product,that is,horizon thickness maps were fluctuant enough and reflected many details in space.The linear mixed model indicated that mean annual air temperature(MAAT) was the most important predictor for the SOCS simulation.The minimal residual of the linear mixed models was achieved in the vegetation type-based model,whereas the maximal residual was fitted in the soil type-based model.About 95% of SOCS could be found in Argosols,Cambosols and Isohumosols.The largest SOCS was found in the croplands with vegetation of Triticum aestivum L.,Sorghum bicolor(L.) Moench,Glycine max(L.) Merr.,Zea mays L.and Setaria italica(L.) P.Beauv. 展开更多
关键词 soil organic carbon stock model-then-calculate random forest linear mixed model northeastern China
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Random Weighting T-Statistics in Linear Regression Models
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作者 Shi Jian Zheng Zhongguo Department of Probability and Statistics Peking University Beijing, 100871 China 《Acta Mathematica Sinica,English Series》 SCIE CSCD 1995年第2期188-199,共12页
In this paper, we have constructed a random weighting statistic to approximate the distribution of studentized least square estimator in a linear regression model with ideal accuracy o(n<sup>-1/2</sup>). T... In this paper, we have constructed a random weighting statistic to approximate the distribution of studentized least square estimator in a linear regression model with ideal accuracy o(n<sup>-1/2</sup>). Thus, we have provided a more practical distribution approximating method. 展开更多
关键词 Random Weighting T-Statistics in linear Regression models
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Joint Modeling of Failure Time Data with Transformation Model and Longitudinal Data When Covariates are Measured with Errors
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作者 Xi-ming CHENG Qi GONG 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2012年第4期663-672,共10页
Semiparametric transformation models provide a class of flexible models for regression analysis of failure time data. Several authors have discussed them under different situations when covariates are time- independe... Semiparametric transformation models provide a class of flexible models for regression analysis of failure time data. Several authors have discussed them under different situations when covariates are time- independent (Chen et al., 2002; Cheng et al., 1995; Fine et al., 1998). In this paper, we consider fitting these models to right-censored data when covariates are time-dependent longitudinal variables and, furthermore, may suffer measurement errors. For estimation, we investigate the maximum likelihood approach, and an EM algorithm is developed. Simulation results show that the proposed method is appropriate for practical application, and an illustrative example is provided. 展开更多
关键词 EM algorithm linear random effects model maximum likelihood estimation measurement error
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