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The solution of stochastic integral relations for strongly-consistent estimators of an unknown distribution function from a sample subject to variable censoring and truncation

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Trabajos de estadistica y de investigacion operativa

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References

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Barton, D.E. The solution of stochastic integral relations for strongly-consistent estimators of an unknown distribution function from a sample subject to variable censoring and truncation. Trab. Estad. Invest. Oper. 19, 51–73 (1968). https://doi.org/10.1007/BF03019446

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