For the fixed design regression model Y-i=x(i) beta+g(t(i))+e(i), i=1, 2,..., n, when Y-i are randomly censored on the right, the estimators of unknown parameter beta and regression function g(.) from censored observations ari defined in the two cases where the censored distribution is known and unknown, respectively. Moreover, the sufficient conditions under which these estimators are strongly consistent and pth (p greater than or equal to 2) mean consistent are also established.Mathematics, AppliedMathematicsSCI(E)122163-1763
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