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Dive into the research topics where Liya Fu is active.

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Featured researches published by Liya Fu.


Computational Statistics & Data Analysis | 2015

A Gaussian pseudolikelihood approach for quantile regression with repeated measurements

Liya Fu; You-Gan Wang; Min Zhu

To enhance the efficiency of regression parameter estimation by modeling the correlation structure of correlated binary error terms in quantile regression with repeated measurements, we propose a Gaussian pseudolikelihood approach for estimating correlation parameters and selecting the most appropriate working correlation matrix simultaneously. The induced smoothing method is applied to estimate the covariance of the regression parameter estimates, which can bypass density estimation of the errors. Extensive numerical studies indicate that the proposed method performs well in selecting an accurate correlation structure and improving regression parameter estimation efficiency. The proposed method is further illustrated by analyzing a dental dataset.


Phytopathology | 2012

Rank regression for analyzing ordinal qualitative data for treatment comparison

Liya Fu; You-Gan Wang; Chang Liu

ABSTRACT Ordinal qualitative data are often collected for phenotypical measurements in plant pathology and other biological sciences. Statistical methods, such as t tests or analysis of variance, are usually used to analyze ordinal data when comparing two groups or multiple groups. However, the underlying assumptions such as normality and homogeneous variances are often violated for qualitative data. To this end, we investigated an alternative methodology, rank regression, for analyzing the ordinal data. The rank-based methods are essentially based on pairwise comparisons and, therefore, can deal with qualitative data naturally. They require neither normality assumption nor data transformation. Apart from robustness against outliers and high efficiency, the rank regression can also incorporate covariate effects in the same way as the ordinary regression. By reanalyzing a data set from a wheat Fusarium crown rot study, we illustrated the use of the rank regression methodology and demonstrated that the rank regression models appear to be more appropriate and sensible for analyzing nonnormal data and data with outliers.


Statistics in Medicine | 2017

Selection of working correlation structure in generalized estimating equations

You-Gan Wang; Liya Fu

The well-known generalized estimating equations is a very popular approach for analyzing longitudinal data. Selecting an appropriate correlation structure in the generalized estimating equations framework is a key step for estimating parameters efficiently and deriving reliable statistical inferences. We present two new criteria for selecting the best among the candidates with any arbitrary structures, even for irregularly timed measurements. The simulation results demonstrate that the new criteria perform more similarly to EAIC and EBIC as the sample size becomes large. However, their performance is much enhanced when the sample size is small and the number of measurements is large. Finally, three real datasets are used to illustrate the proposed criteria. Copyright


Science & Engineering Faculty | 2012

Statistical Tools for Analyzing Water Quality Data

Liya Fu; You-GanWang

Water quality data are often collected at different sites over time to improve water quality management. Water quality data usually exhibit the following characteristics: non-normal distribution, presence of outliers, missing values, values below detection limits (censored), and serial dependence. It is essential to apply appropriate statistical methodology when analyzing water quality data to draw valid conclusions and hence provide useful advice in water management. In this chapter, we will provide and demonstrate various statistical tools for analyzing such water quality data, and will also introduce how to use a statistical software R to analyze water quality data by various statistical methods. A dataset collected from the Susquehanna River Basin will be used to demonstrate various statistical methods provided in this chapter. The dataset can be downloaded from website http://www.srbc.net/programs/CBP/nutrientprogram.htm.


Biometrics | 2012

Efficient estimation for rank-based regression with clustered data.

Liya Fu; You-Gan Wang

Rank-based inference is widely used because of its robustness. This article provides optimal rank-based estimating functions in analysis of clustered data with random cluster effects. The extensive simulation studies carried out to evaluate the performance of the proposed method demonstrate that it is robust to outliers and is highly efficient given the existence of strong cluster correlations. The performance of the proposed method is satisfactory even when the correlation structure is misspecified, or when heteroscedasticity in variance is present. Finally, a real dataset is analyzed for illustration.


Statistical Methods in Medical Research | 2018

Variable selection in rank regression for analyzing longitudinal data

Liya Fu; You-Gan Wang

In this paper, we consider variable selection in rank regression models for longitudinal data. To obtain both robustness and effective selection of important covariates, we propose incorporating shrinkage by adaptive lasso or SCAD in the Wilcoxon dispersion function and establishing the oracle properties of the new method. The new method can be conveniently implemented with the statistical software R. The performance of the proposed method is demonstrated via simulation studies. Finally, two datasets are analyzed for illustration. Some interesting findings are reported and discussed.


Communications in Statistics - Simulation and Computation | 2018

Variable selection in generalized estimating equations via empirical likelihood and Gaussian pseudo-likelihood

Jianwen Xu; Jiamao Zhang; Liya Fu

ABSTRACT AIC and BIC based on either empirical likelihood (EAIC and EBIC) or Gaussian pseudo-likelihood (GAIC and GBIC) are proposed to select variables in longitudinal data analysis. Their performances are evaluated in the framework of the generalized estimating equations via intensive simulation studies. Our findings are: (i) GAIC and GBIC outperform other existing methods in selecting variables; (ii) EAIC and EBIC are effective in selecting covariates only when the working correlation structure is correctly specified; (iii) GAIC and GBIC perform well regardless the working correlation structure is correctly specified or not. A real dataset is also provided to illustrate the findings.


PLOS ONE | 2016

A Reliability Test of a Complex System Based on Empirical Likelihood

Yan Zhou; Liya Fu; Jun Zhang; Yongchang Hui

To analyze the reliability of a complex system described by minimal paths, an empirical likelihood method is proposed to solve the reliability test problem when the subsystem distributions are unknown. Furthermore, we provide a reliability test statistic of the complex system and extract the limit distribution of the test statistic. Therefore, we can obtain the confidence interval for reliability and make statistical inferences. The simulation studies also demonstrate the theorem results.


Statistical Papers | 2018

Exact test of goodness of fit for binomial distribution

Benchong Li; Liya Fu


School of Mathematical Sciences; Science & Engineering Faculty | 2018

Working correlation structure selection in generalized estimating equations

Liya Fu; Yangyang Hao; You-Gan Wang

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You-Gan Wang

Queensland University of Technology

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Zhidong Bai

Northeast Normal University

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Chang Liu

University of Queensland

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Min Zhu

Queensland University of Technology

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Yudong Zhao

National University of Singapore

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