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ALMOST SURE CONVERGENCE FOR LINEAR PROCESS GENERATED BY ASYMPTOTICALLY LINEAR NEGATIVE QUADRANT DEPENDENCE PROCESSES
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 Title & Authors
ALMOST SURE CONVERGENCE FOR LINEAR PROCESS GENERATED BY ASYMPTOTICALLY LINEAR NEGATIVE QUADRANT DEPENDENCE PROCESSES
CAI, GUANG-HUI;
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 Abstract
In this paper, we obtain strong law of large numbers for linear process generated by asymptotically linear negative quadrant dependence processes.
 Keywords
strong law of large numbers;linear process;asymptotically linear negative quadrant dependence;
 Language
English
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