Effect of Age Group Length, Growth rate, & Degree of Development on the Aggregate & Disaggregate population forecasting Methods
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Date
2014
Authors
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Publisher
Neelain University
Abstract
Abstract
This research investigates the performance of selected aggregate and disaggregate
methods for population forecasts. The data used is that given by the United Nations
Population Division- Department of Economic and Social Affairs and covers the period
1950-2010. Also, we used simulated data that were generated by Mathematical packages.
The objective, with respect to the disaggregate methods, is to determine their
performance under various age group length, degree of development, gender & growth
rate. It is found that for all methods the precision of the forecast decreases with increase
in age group length & growth rate and increase with the degree of development. Forecast
of female population is in general more precise than of male population. The cohort
component method proved to be the best among the disaggregate methods in forecasting
population for individual age groups. The exponential smoothing method, which as far as
the author knows, is used for the first time as a disaggregate methods, provided the best
forecast for the population total, followed by the cohort component method. As to the
aggregate methods the cubic method showed the best performance. The sensitivity of the
aggregate methods to the various factors is such that the precision of forecast decreases
with increase in growth rate &increases with the degree of development.
Looking at both aggregate & disaggregate methods the results confirm that the
exponential smoothing method, suggested by the author, provided the best performance
for forecast is the population total.
Description
A Thesis Submitted in accordance with the requirements for degree
‘ of Doctor of philosophy in Demography
Keywords
forecasting Methods