ABSTRACT
This thesis
undertakes a forecast of liquidity ratio of commercial banks in Nigeria, using
autoregressive fractionally integrated moving average (ARFIMA) model. The
research work employs monthly data for the period of 2004 to 2015 (12years).
The Augmented Dickey Fuller (ADF) test was conducted to test for stationarity
and it showed that the liquidity ratio data was stationary at first difference.
The long lasting autocorrelation function of the data showed the presence of
long memory structure and Hurst exponent test confirmed the presence of long
'li memory structure. The Geweke and Porter-Hudak method of estimation was used
to obtain the ':I. long memory parameter d of the ARFIMA model. The optimal lag
lengths for both the AR and MA of the ARFIMA model were obtained using the
Akaike Information Criteria (AIC) and the log-likelihood test. ARFIMA(5,0.12,3)
was identified and fitted. Similarly, a suitable ARIMA } model was fined for
the liquidity ratio data. ARIMA(l,1,1) was identified and fitted. The l
autocorrelation function of the residual of both the ARFIMA and ARIMA models
were j .· computed and it was found that none of these autocorrelation
functions was significantly _different from zero at any reasonable level.
Forecasting liquidity ratio of commercial banks was done using the identified
models. The predicted values were compared with the observed values. The
results showed that ARFIMA (5,0.12,3) model is valid, adequate and good since
its j predicted values are much closer to the observed values than the ARIMA(
1, I, I) model. 1j Similarly, the graph of the forecast obviously showed that
the predicted values of ARFIMA { model are closer to the observed values than
those of ARIMA model. To this end, forecast ·i,·_ evaluation for the two models
were carried out using root mean square error (RMSE), and it was j concluded
that the ARFIMA model is a much better model in this regard.
MICHAEL, U (2023). Forecasting Liquidity Ratios Of Commercial Banks In Nigeria Using Autoregressive Fractionally Integrated Moving Average(ARFIMA) Model. Mouau.afribary.org: Retrieved Dec 27, 2024, from https://repository.mouau.edu.ng/work/view/forecasting-liquidity-ratios-of-commercial-banks-in-nigeria-using-autoregressive-fractionally-integrated-moving-averagearfima-model-7-2
UNIVERSITY, MICHAEL. "Forecasting Liquidity Ratios Of Commercial Banks In Nigeria Using Autoregressive Fractionally Integrated Moving Average(ARFIMA) Model" Mouau.afribary.org. Mouau.afribary.org, 12 Jul. 2023, https://repository.mouau.edu.ng/work/view/forecasting-liquidity-ratios-of-commercial-banks-in-nigeria-using-autoregressive-fractionally-integrated-moving-averagearfima-model-7-2. Accessed 27 Dec. 2024.
UNIVERSITY, MICHAEL. "Forecasting Liquidity Ratios Of Commercial Banks In Nigeria Using Autoregressive Fractionally Integrated Moving Average(ARFIMA) Model". Mouau.afribary.org, Mouau.afribary.org, 12 Jul. 2023. Web. 27 Dec. 2024. < https://repository.mouau.edu.ng/work/view/forecasting-liquidity-ratios-of-commercial-banks-in-nigeria-using-autoregressive-fractionally-integrated-moving-averagearfima-model-7-2 >.
UNIVERSITY, MICHAEL. "Forecasting Liquidity Ratios Of Commercial Banks In Nigeria Using Autoregressive Fractionally Integrated Moving Average(ARFIMA) Model" Mouau.afribary.org (2023). Accessed 27 Dec. 2024. https://repository.mouau.edu.ng/work/view/forecasting-liquidity-ratios-of-commercial-banks-in-nigeria-using-autoregressive-fractionally-integrated-moving-averagearfima-model-7-2