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A Generalization and Some New Contribution to Pratibha Distribution with Statistical Properties and its Applications
Abstract
This study introduces a novel class of the Pratibha distribution known as the length-biased Pratibha distribution. This new distribution is derived from the classical Pratibha distribution using a length-biasing technique. The characteristics of the new distribution are examined, including various structural properties, and its model parameters are estimated using maximum likelihood estimation. Additionally, the effectiveness and applicability of the new distribution are demonstrated by analysing two real lifetime datasets, highlighting its predictive capability and flexibility.
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ISSN(P) 2350-0174

ISSN(O) 2456-2378

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