The problem of Small Area Estimation is the non-availability of sample data in areas of interest. The idea behind this study is to adopt and modify some calibration estimators that could produce reliable estimates with minimum mean square error in small areas to determine the pattern of household consumption-expenditure in Nigeria before, during and after COVID-19 pandemic. A combined direct and synthetic ratio/regression estimators are used in the formulation of the longitudinal estimators. The bias and mean square errors of the estimators are derived using Taylor's series approximation techniques different from the existing estimators. It is observed that the calibrated estimators have provided more reliable estimates against the instability of the existing synthetic estimators and the higher variance of the existing direct estimators. Consequently, the gains made on the performance of the modified estimators cannot be overemphasized. From the empirical results, the performance of the suggested estimators are outstanding using the average mean square error, average relative bias and average coefficient of variation across the survey periods (WAVEs) of 2019, 2020 and 2021. This indicates that the use of auxiliary variable (income) into the existing estimators by calibration technique has yielded the desirable result which agrees with the literature. Again, this result is validated since the modified calibrated estimators provide estimates within the acceptable region of 25% benchmark of the average coefficient of variation in the area of interest. In addition, the performance of the estimators in predicting the estimates of the population mean expenditure are also carried out. The pattern of household consumption-expenditure signifies that households in Nigeria consumed more during COVID-19 period while at home and the consumption burden lessens after the pandemic. This study has established the use of auxiliary variable that is strongly correlated with the study variable in domain estimation where there is small/no sample data in areas of interest.
Published in | Science Journal of Applied Mathematics and Statistics (Volume 13, Issue 4) |
DOI | 10.11648/j.sjams.20251304.11 |
Page(s) | 63-75 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2025. Published by Science Publishing Group |
Auxiliary Variable, Calibration, COVID-19, Domain Estimation, Longitudinal Survey
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 2577.157 | 2015.51 | 34683.49 | 34720.94 | 44568.35 | 43248.92 |
AMSE | 1309547910 | 1378131713 | 287718902 | 288046917 | 642199144 | 625137340 |
ARB | 0.9357807 | 0.9340782 | 0.1771801 | 0.1991829 | 0.3373016 | 0.1606586 |
ACV | 0.9357807 | 0.9340782 | 0.5082464 | 0.5090257 | 0.3329459 | 0.322272 |
| 39282.73 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 2178.997 | 2208.07 | 40178.4 | 40027.83 | 38493.16 | 35490.35 |
AMSE | 1386350590 | 1748851321 | 550436965 | 546505645 | 455246660 | 482783142 |
ARB | 0.9444336 | 0.9389944 | 0.1481006 | 0.1699649 | 0.1919592 | 0.05885609 |
ACV | 0.9444336 | 0.9142011 | 0.3601048 | 0.3575546 | 0.2292409 | 0.2547304 |
| 40545.98 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 1273.127 | 1510.836 | 24060.98 | 24115.95 | 24619.51 | 23859.38 |
AMSE | 548963629 | 754299143 | 144487937 | 144552210 | 54491744 | 64321232 |
ARB | 0.9618719 | 0.942419 | 0.059321 | 0.029888 | 0.09293 | 0.034675 |
ACV | 0.9618719 | 0.917871 | 0.308376 | 0.308372 | 0.20121 | 0.21209 |
27066.87 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 3591.126 | 4090.677 | 71765.07 | 71920.58 | 65215.42 | 63894.74 |
AMSE | 12034853638 | 4136670273 | 872370420 | 876983729 | 370357420 | 375904744 |
ARB | 0.9691173 | 0.9265719 | 0.1668074 | 0.1927824 | 0.2211566 | 0.02324393 |
ACV | 0.9691173 | 0.9265719 | 0.3626012 | 0.3640058 | 0.226493 | 0.2387889 |
68125.18 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 2877.962 | 3099.407 | 59054.76 | 59075.77 | 56846.09 | 55346.86 |
AMSE | 4245321488 | 450340476502 | 438061756359 | 438061811658 | 438812099301 | 438901849839 |
ARB | 0.9504211 | 0.9435805 | 0.003031283 | 0.01510526 | 0.07992032 | 0.05786398 |
ACV | 0.9504211 | 0.9435805 | 0.3335228 | 0.3336408 | 0.1694406 | 0.1621179 |
61961.9 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 3457.075 | 3622.027 | 59961.07 | 59279.41 | 67578.26 | 65086.97 |
AMSE | 5044134292 | 4213740517 | 647710500 | 644994313 | 252824732 | 213196627 |
ARB | 0.9526255 | 0.9437981 | 0.05997906 | 0.05852164 | 0.03490459 | 0.01047999 |
ACV | 0.9526255 | 0.9201944 | 0.276252 | 0.2749713 | 0.1820564 | 0.1674836 |
66306.01 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 3540.935 | 3731.182 | 64751.25 | 64518.61 | 71761.71 | 68599.05 |
AMSE | 4671464540 | 5017727857 | 776371953 | 775853458 | 234529499 | 255142698 |
ARB | 0.9562904 | 0.943985 | 0.01867075 | 0.008393917 | 0.08672708 | 0.01442189 |
ACV | 0.9562904 | 0.9189337 | 0.2930774 | 0.2919856 | 0.150288 | 0.1563659 |
69369.19 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 2039.53 | 6386.783 | 123297.2 | 123025.9 | 131436.6 | 123849.2 |
AMSE | 14198268143 | 12994022704 | 2869261614 | 2854990305 | 1861227650 | 1838743398 |
ARB | 0.9899013 | 0.9422168 | 0.06667438 | 0.08294576 | 0.0474055 | 0.06375305 |
ACV | 0.98172353 | 0.9422168 | 0.3418827 | 0.341164 | 0.2841045 | 0.311278 |
116682.6 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 2026.005 | 5623.038 | 105641.4 | 105652 | 117592.9 | 113097.5 |
AMSE | 11486839433 | 11270120207 | 2645228863 | 2645580100 | 1043052037 | 1025665996 |
ARB | 0.9801287 | 0.94534 | 0.03357499 | 0.04656683 | 0.06105538 | 0.07066468 |
ACV | 0.9801287 | 0.9201338 | 0.394137 | 0.3941594 | 0.2422864 | 0.2320182 |
106581.5 |
STATES | ||||||
---|---|---|---|---|---|---|
AVE | 1127.653 | 3663.538 | 62406.66 | 62619.98 | 67594.14 | 67302.54 |
AMSE | 5567310780 | 4500549019 | 790417659 | 790608619 | 208194739 | 258796222 |
ARB | 0.9827764 | 0.9420642 | 0.03440734 | 0.07937525 | 0.08019187 | 0.01224156 |
ACV | 0.9827764 | 0.9178592 | 0.3701064 | 0.3716396 | 0.1887388 | 0.1903148 |
66540.06 |
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APA Style
Udeme, U. B., Joshua, I. M., Okon, B. M. (2025). Small Area Estimation of Household Consumption-expenditure Pattern in Nigeria During COVID-19 Pandemic. Science Journal of Applied Mathematics and Statistics, 13(4), 63-75. https://doi.org/10.11648/j.sjams.20251304.11
ACS Style
Udeme, U. B.; Joshua, I. M.; Okon, B. M. Small Area Estimation of Household Consumption-expenditure Pattern in Nigeria During COVID-19 Pandemic. Sci. J. Appl. Math. Stat. 2025, 13(4), 63-75. doi: 10.11648/j.sjams.20251304.11
@article{10.11648/j.sjams.20251304.11, author = {Udofia Blessing-Oxford Udeme and Iseh Matthew Joshua and Bassey Mbuotidem Okon}, title = {Small Area Estimation of Household Consumption-expenditure Pattern in Nigeria During COVID-19 Pandemic }, journal = {Science Journal of Applied Mathematics and Statistics}, volume = {13}, number = {4}, pages = {63-75}, doi = {10.11648/j.sjams.20251304.11}, url = {https://doi.org/10.11648/j.sjams.20251304.11}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.sjams.20251304.11}, abstract = {The problem of Small Area Estimation is the non-availability of sample data in areas of interest. The idea behind this study is to adopt and modify some calibration estimators that could produce reliable estimates with minimum mean square error in small areas to determine the pattern of household consumption-expenditure in Nigeria before, during and after COVID-19 pandemic. A combined direct and synthetic ratio/regression estimators are used in the formulation of the longitudinal estimators. The bias and mean square errors of the estimators are derived using Taylor's series approximation techniques different from the existing estimators. It is observed that the calibrated estimators have provided more reliable estimates against the instability of the existing synthetic estimators and the higher variance of the existing direct estimators. Consequently, the gains made on the performance of the modified estimators cannot be overemphasized. From the empirical results, the performance of the suggested estimators are outstanding using the average mean square error, average relative bias and average coefficient of variation across the survey periods (WAVEs) of 2019, 2020 and 2021. This indicates that the use of auxiliary variable (income) into the existing estimators by calibration technique has yielded the desirable result which agrees with the literature. Again, this result is validated since the modified calibrated estimators provide estimates within the acceptable region of 25% benchmark of the average coefficient of variation in the area of interest. In addition, the performance of the estimators in predicting the estimates of the population mean expenditure are also carried out. The pattern of household consumption-expenditure signifies that households in Nigeria consumed more during COVID-19 period while at home and the consumption burden lessens after the pandemic. This study has established the use of auxiliary variable that is strongly correlated with the study variable in domain estimation where there is small/no sample data in areas of interest.}, year = {2025} }
TY - JOUR T1 - Small Area Estimation of Household Consumption-expenditure Pattern in Nigeria During COVID-19 Pandemic AU - Udofia Blessing-Oxford Udeme AU - Iseh Matthew Joshua AU - Bassey Mbuotidem Okon Y1 - 2025/07/23 PY - 2025 N1 - https://doi.org/10.11648/j.sjams.20251304.11 DO - 10.11648/j.sjams.20251304.11 T2 - Science Journal of Applied Mathematics and Statistics JF - Science Journal of Applied Mathematics and Statistics JO - Science Journal of Applied Mathematics and Statistics SP - 63 EP - 75 PB - Science Publishing Group SN - 2376-9513 UR - https://doi.org/10.11648/j.sjams.20251304.11 AB - The problem of Small Area Estimation is the non-availability of sample data in areas of interest. The idea behind this study is to adopt and modify some calibration estimators that could produce reliable estimates with minimum mean square error in small areas to determine the pattern of household consumption-expenditure in Nigeria before, during and after COVID-19 pandemic. A combined direct and synthetic ratio/regression estimators are used in the formulation of the longitudinal estimators. The bias and mean square errors of the estimators are derived using Taylor's series approximation techniques different from the existing estimators. It is observed that the calibrated estimators have provided more reliable estimates against the instability of the existing synthetic estimators and the higher variance of the existing direct estimators. Consequently, the gains made on the performance of the modified estimators cannot be overemphasized. From the empirical results, the performance of the suggested estimators are outstanding using the average mean square error, average relative bias and average coefficient of variation across the survey periods (WAVEs) of 2019, 2020 and 2021. This indicates that the use of auxiliary variable (income) into the existing estimators by calibration technique has yielded the desirable result which agrees with the literature. Again, this result is validated since the modified calibrated estimators provide estimates within the acceptable region of 25% benchmark of the average coefficient of variation in the area of interest. In addition, the performance of the estimators in predicting the estimates of the population mean expenditure are also carried out. The pattern of household consumption-expenditure signifies that households in Nigeria consumed more during COVID-19 period while at home and the consumption burden lessens after the pandemic. This study has established the use of auxiliary variable that is strongly correlated with the study variable in domain estimation where there is small/no sample data in areas of interest. VL - 13 IS - 4 ER -