Complete convergence of moving-average processes under negative dependence sub-Gaussian assumptions
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Abstract:
The complete convergence is investigated for moving-average processes of doubly infinite sequence of negative dependence sub-gaussian random variables with zero means, finite variances and absolutely summable coefficients. As a corollary, the rate of complete convergence is obtained under some suitable conditions on the coefficients.
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complete convergence of moving-average processes under negative dependence sub-gaussian assumptions
the complete convergence is investigated for moving-average processes of doubly infinite sequence of negative dependence sub-gaussian random variables with zero means, finite variances and absolutely summable coefficients. as a corollary, the rate of complete convergence is obtained under some suitable conditions on the coefficients.
full textcomplete convergence of moving-average processes under negative dependence sub-gaussian assumptions
the complete convergence is investigated for moving-average processes of doubly infinite sequence of negative dependence sub-gaussian random variables with zero means, finite variances and absolutely summable coefficients. as a corollary, the rate of complete convergence is obtained under some suitable conditions on the coefficients.
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Journal title
volume 38 issue 3
pages 843- 852
publication date 2012-09-15
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