摘要
Empirical-likelihood-based inference for the parameters in a partially linear single-index model with randomly censored data is investigated. We introduce an estimated empirical likelihood for the parameters using a synthetic data approach and show that its limiting distribution is a mixture of central chi-squared distribution. To attack this difficulty we propose an adjusted empirical likelihood to achieve the standard X2-1imit. Furthermore, since the index is of norm 1, we use this constraint to reduce the dimension of parameters, which increases the accuracy of the confidence regions. A simulation study is carried out to compare its finite-sample properties with the existing method. An application to a real data set is illustrated.
Empirical-likelihood-based inference for the parameters in a partially linear single-index model with randomly censored data is investigated. We introduce an estimated empirical likelihood for the parameters using a synthetic data approach and show that its limiting distribution is a mixture of central chi-squared distribution. To attack this difficulty we propose an adjusted empirical likelihood to achieve the standard X2-1imit. Furthermore, since the index is of norm 1, we use this constraint to reduce the dimension of parameters, which increases the accuracy of the confidence regions. A simulation study is carried out to compare its finite-sample properties with the existing method. An application to a real data set is illustrated.
基金
Supported by National Social Science Foundation of China (Grant No. 11CTJ004)
National Natural Science Foundation of China (Grant Nos. 11171012 and 11101452)
National Natural Science Foundation of Beijing (Grant No. 1102008)
Natural Science Foundation Project of CQ CSTC (Grant No. cstcjjA00014)
Research Foundation of Chongqing Municipal Education Commission (Grant No. KJ110720)
Natural Science Foundation of Guangxi (Grant No. 2010GXNSFB013051)