Spelling suggestions: "subject:"box4enkins forecasting"" "subject:"somjenkins forecasting""
11 |
An application of Box-Jenkins transfer function analysis to consumption-income relationship in South Africa / N.D. MorokeMoroke, N.D. January 2005 (has links)
Using a simple linear regression model for estimation could give misleading results
about the relationship between Yt, and Xt, . Possible problems involve (1) feedback from
the output series to the inputs, (2) omitted time-lagged input terms, (3) an auto correlated
disturbance series and, (4) common autocorrelation patterns shared by Y and X that
can produce spurious correlations. The primary aim of this study was therefore to use
the Box-Jenkins Transfer Function analysis to fit a model that related petroleum
consumption to disposable income> The final Transfer Function Model
z1t=)C(1-w1 B)/((1-δ1 B) B^5 Z(t^((x) +(1-θ1 B)at significantly described the data.
Forecasts generated from this model show that petroleum consumption will hit a record of up to 4.8636 in 2014 if disposable income is augmented. There is 95% confidence that the
forecasted value of petroleum consumption will lie between 4.5276 and 5.1997 in 2014. / Thesis (M. Com. (Statistics) North-West University, Mafikeng Campus, 2005
|
12 |
Forecasting annual tax revenue of the South African taxes using time series Holt-Winters and ARIMA/SARIMA ModelsMakananisa, Mangalani P. 10 1900 (has links)
This study uses aspects of time series methodology to model and forecast major taxes such as Personal Income Tax (PIT), Corporate Income Tax (CIT), Value Added Tax (VAT) and Total Tax Revenue(TTAXR) in the South African Revenue Service (SARS).
The monthly data used for modeling tax revenues of the major taxes was drawn from January 1995 to March 2010 (in sample data) for PIT, VAT and TTAXR. Due to higher volatility and emerging negative values, the CIT monthly data was converted to quarterly data from the rst quarter of 1995 to the rst quarter of 2010. The competing ARIMA/SARIMA and Holt-Winters models were derived, and the resulting model of this study was used to forecast PIT, CIT, VAT and TTAXR for SARS fiscal years 2010/11, 2011/12 and 2012/13. The results show that both the SARIMA and Holt-Winters models perform well in modeling and forecasting PIT and VAT, however the Holt-Winters model outperformed the SARIMA model in modeling and forecasting the more volatile CIT and TTAXR. It is recommended that these methods are used in forecasting future payments, as they are precise about forecasting tax revenues, with minimal errors and fewer model revisions being necessary. / Statistics / M.Sc. (Statistics)
|
13 |
Forecasting annual tax revenue of the South African taxes using time series Holt-Winters and ARIMA/SARIMA ModelsMakananisa, Mangalani P. 10 1900 (has links)
This study uses aspects of time series methodology to model and forecast major taxes such as Personal Income Tax (PIT), Corporate Income Tax (CIT), Value Added Tax (VAT) and Total Tax Revenue(TTAXR) in the South African Revenue Service (SARS).
The monthly data used for modeling tax revenues of the major taxes was drawn from January 1995 to March 2010 (in sample data) for PIT, VAT and TTAXR. Due to higher volatility and emerging negative values, the CIT monthly data was converted to quarterly data from the rst quarter of 1995 to the rst quarter of 2010. The competing ARIMA/SARIMA and Holt-Winters models were derived, and the resulting model of this study was used to forecast PIT, CIT, VAT and TTAXR for SARS fiscal years 2010/11, 2011/12 and 2012/13. The results show that both the SARIMA and Holt-Winters models perform well in modeling and forecasting PIT and VAT, however the Holt-Winters model outperformed the SARIMA model in modeling and forecasting the more volatile CIT and TTAXR. It is recommended that these methods are used in forecasting future payments, as they are precise about forecasting tax revenues, with minimal errors and fewer model revisions being necessary. / Statistics / M.Sc. (Statistics)
|
14 |
Mise en oeuvre de techniques de modélisation récentes pour la prévision statistique et économiqueNjimi, Hassane 05 September 2008 (has links)
Mise en oeuvre de techniques de modélisation récentes pour la prévision statistique et économique. / Doctorat en Sciences / info:eu-repo/semantics/nonPublished
|
15 |
ARIMA forecasts of the number of beneficiaries of social security grants in South AfricaLuruli, Fululedzani Lucy 12 1900 (has links)
The main objective of the thesis was to investigate the feasibility of accurately and precisely fore-
casting the number of both national and provincial bene ciaries of social security grants in South
Africa, using simple autoregressive integrated moving average (ARIMA) models. The series of the
monthly number of bene ciaries of the old age, child support, foster care and disability grants from
April 2004 to March 2010 were used to achieve the objectives of the thesis. The conclusions from
analysing the series were that: (1) ARIMA models for forecasting are province and grant-type spe-
ci c; (2) for some grants, national forecasts obtained by aggregating provincial ARIMA forecasts
are more accurate and precise than those obtained by ARIMA modelling national series; and (3)
for some grants, forecasts obtained by modelling the latest half of the series were more accurate
and precise than those obtained from modelling the full series. / Mathematical Sciences / M.Sc. (Statistics)
|
16 |
ARIMA forecasts of the number of beneficiaries of social security grants in South AfricaLuruli, Fululedzani Lucy 12 1900 (has links)
The main objective of the thesis was to investigate the feasibility of accurately and precisely fore-
casting the number of both national and provincial bene ciaries of social security grants in South
Africa, using simple autoregressive integrated moving average (ARIMA) models. The series of the
monthly number of bene ciaries of the old age, child support, foster care and disability grants from
April 2004 to March 2010 were used to achieve the objectives of the thesis. The conclusions from
analysing the series were that: (1) ARIMA models for forecasting are province and grant-type spe-
ci c; (2) for some grants, national forecasts obtained by aggregating provincial ARIMA forecasts
are more accurate and precise than those obtained by ARIMA modelling national series; and (3)
for some grants, forecasts obtained by modelling the latest half of the series were more accurate
and precise than those obtained from modelling the full series. / Mathematical Sciences / M.Sc. (Statistics)
|
Page generated in 0.0654 seconds