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Evaluating the performance of memory type logarithmic estimators using simple random sampling.

Shashi Bhushan1, Anoop Kumar2, Amani Alrumayh3

  • 1Department of Statistics, University of Lucknow, Lucknow, U.P., India.

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|December 15, 2022
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Summary
This summary is machine-generated.

This study introduces memory type logarithmic estimators for time-based surveys, enhancing survey research by incorporating past and current sample data. These novel estimators improve precision in estimating population parameters.

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Area of Science:

  • Statistics
  • Survey Methodology

Background:

  • Traditional survey estimators often rely solely on current sample data.
  • This limitation can affect the accuracy of population parameter estimation over time.

Purpose of the Study:

  • To propose novel memory type logarithmic estimators for time-based surveys.
  • To enhance estimation accuracy by integrating past and current sample information.

Main Methods:

  • Development of hybrid exponentially weighted moving average estimators.
  • Derivation of the mean square error expression for proposed estimators.
  • Comparative analysis with existing estimators and efficiency condition derivation.

Main Results:

  • Theoretical derivation of mean square error for new estimators.
  • Simulation study and real data application demonstrated improved efficiency.
  • Proposed estimators showed better performance compared to existing methods.

Conclusions:

  • Incorporating past and current sample information significantly improves estimator efficiency.
  • Memory type logarithmic estimators offer a more robust approach for time-based surveys.