On Estimating Flexible Weibull Parameters with Type I Progressive Interval Censoring with Random Removal Using Data of Cancerous Tumors in Blood
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چکیده
Censoring is very common in life tests in the past several decades; the experimenter may be unable to obtain complete information on failure times of all experimental items. For this reason, Aggarwalla [1] suggested a useful type of censoring, namely, a progressively Type I interval censored data, which is a union of Type I interval and progressive censoring. This method of lifetime data collection can be useful to a biological experimenter, particularly when the experimental units are humans, as continuous monitoring is often not possible to implement, and withdrawal rates from such studies may high.
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