| Literature DB >> 33267817 |
Daniel Adedayo Adeyinka1,2, Nazeem Muhajarine3,4.
Abstract
BACKGROUND: Accurate forecasting model for under-five mortality rate (U5MR) is essential for policy actions and planning. While studies have used traditional time series modeling techniques (e.g., autoregressive integrated moving average (ARIMA) and Holt-Winters smoothing exponential methods), their appropriateness to predict noisy and non-linear data (such as childhood mortality) has been debated. The objective of this study was to model long-term U5MR with group method of data handling (GMDH)-type artificial neural network (ANN), and compare the forecasts with the commonly used conventional statistical methods-ARIMA regression and Holt-Winters exponential smoothing models.Entities:
Keywords: Artificial intelligence; Autoregressive integrated moving average; Deep learning; Forecasting; GMDH neural network; Holt-Winters exponential smoothing; Nigeria; Sustainable Development Goals; Time series; Under-five mortality rate
Mesh:
Year: 2020 PMID: 33267817 PMCID: PMC7712624 DOI: 10.1186/s12874-020-01159-9
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1(a) Time series plot of under-five mortality rates in Nigeria for ARIMA modeling, 1964–2017 (B) Third order difference of yearly under-five mortality rates (c) Autocorrelation function plot of third order differenced under-five mortality rates (d) Partial autocorrelation function plot of third order differenced under-five mortality rates. D3: third order differencing, U5M: under-five mortality, grey color in plots C and D: 95% Confidence Interval
Fig. 2Diagnostic plots for ARIMA (0,3,2) of under-five mortality rates, Nigeria (1964–2017) (a) Residual plot (b) Inverse roots of MA polynomial (c) Autocorrelations of differenced rates (d) Impulse-response function plot
Fig. 3Residual plots for Holt-Winters exponential smoothing for overall under-five mortality rates, Nigeria (1964–2017)
Fig. 4Residual plots for GMDH-type neural network for overall under-five mortality rates, Nigeria (1964–2017)
Fig. 5Observed (historical), predicted and forecasted under-five mortality rates by modeling techniques (a) in-sample prediction (1964–2017) (b) out-of-sample forecasting (2018–2030) GMDH: Group method of data handling, ARIMA: autoregressive integrated moving averages, Holt-Winters: Holt-Winters exponential smoothing method. All the lines basically overlap in Plot A
Performance measures of time series techniques for under-five mortality rates in Nigeria
| Model | GMDH-type ANN | ARIMA | Holt-Winters exponential smoothing |
|---|---|---|---|
| Best parameters | Training set = 80%, testing set = 20% | α=0.91, β=0.51 | |
| RMSE | 0.09 | 0.23 | 2.87 |
| RMAE | 0.25 | 0.41 | 1.20 |
| Modified NSE | 0.998 | 0.996 | 0.967 |
| DM test statistic | Reference | −3.608* | −4.474* |
significant at p-value < 0.05; p = number of autoregressive terms, d = number of differencing, q = number of moving average terms; RMSE: Root mean squared error; RMAE: Root mean absolute error; α=coefficient for the level smoothing; β= coefficient for the trend smoothing; modified NSE: modified Nash-Sutcliffe model efficiency coefficient; DM: Diebold-Mariano test
Deming regression for comparing GMDH-type ANN, ARIMA and Holt-Winters models
| Reference: Observed historical U5MR | Proportional difference (slope) | Systematic difference (intercept) | ||||
|---|---|---|---|---|---|---|
| β1 (SE) | 95% LCL, UCL | β0(SE) | 95% LCL, UCL | |||
| GMDH-type ANN | 1.000 (0.0004) | 0.999, 1.001 | < 0.001 | 0.004 (0.058) | −0.113, 0.122 | 0.940 |
| ARIMA | 1.000 (0.001) | 0.998, 1.002 | < 0.001 | 0.027 (0.160) | −0.293, 0.348 | 0.865 |
| Holt-Winters | 1.000 (0.013) | 0.969, 1.023 | < 0.001 | 0.890 (2.349) | −3.822, 5.602 | 0.706 |
LCL Lower Confidence Limit, UCL Upper Confidence Limit, SE Jack-knife standard errors