| Literature DB >> 30363781 |
Abstract
BACKGROUND: In recent decades, considerable research effort has been dedicated to improving mortality forecasting methods. While making valuable contributions to the literature, the bulk of this research has focused on national populations-yet much planning and service delivery occurs at regional and local scales. More attention needs to be paid to subnational mortality forecasting methods.Entities:
Keywords: Australia; Evaluation; Forecast error; Mortality forecast; Regions; Smoothness Index
Year: 2018 PMID: 30363781 PMCID: PMC6182339 DOI: 10.1186/s41118-018-0040-z
Source DB: PubMed Journal: Genus ISSN: 0016-6987
Some broad approaches to regional mortality forecasting
| Approach | Examples |
|---|---|
| 1. Use national or State, or region-type, mortality forecasts | Simply use national or State mortality forecasts for all regions (e.g. Pittenger |
| 2. Trend regional mortality age schedules towards a long-run target | Trend regional mortality age profiles from the base period converging towards (or diverging away from) a very long-run set of target mortality rates (e.g. Van Hoorn and Broekman |
| 3. Apply models developed for single national populations to every region | For every region: |
| 4. Use multi-population models | • Lee-Carter extension for multiple populations (e.g. Li and Lee |
| 5. Use a national or State mortality forecasts and create regional mortality forecasts via simple relationships | • Brass-type relational models (e.g. Brass |
Input data requirements of the eight regional mortality forecasting methods
| Method | National input data | Regional input data |
|---|---|---|
| National Death Rates | National forecast death rates | None |
| SMR Scaling | National base period and forecast death rates | Regional base period SMRs: total deaths by region; ERPs(1) by age and sex by region (Data cells = 41 |
| Broad Age SMR Scaling | National base period and forecast death rates | Regional base period SMRs: deaths by sex and broad age group by region; ERPs by sex and age group by region |
| Mortality Surface | National mortality surface of past and forecast | Projected |
| Brass Relational | National base period and forecast | Regional base period |
| Rate Ratio Scaling | National base period and forecast death rates | Regional base period rate ratios: deaths and ERPs by sex and age group by region |
| Broad Age Rate Ratio Scaling | National base period and forecast death rates | Regional base period broad age rate ratios: deaths and ERPs by sex and broad age group by region |
| TOPALS | National base period and forecast death rates | Regional base period rate ratios: deaths and ERPs by sex and age group by region. (Data cells = 80 |
Notes: (1) ERP = Estimated Resident Population. (2) r = number of regions. (3) If base period regional e0 values are not available they will need to be calculated, requiring deaths and ERPs by age and sex to create life tables. Regional e0 forecasts can be created by assuming they remain a constant proportion of an independent national e0 forecast throughout the forecast horizon
Relative ease of calculation of the eight regional mortality forecast methods
| Method | Ease of calculation |
|---|---|
| National Death Rates | Easy (no regional calculations needed) |
| SMR Scaling | Easy |
| Broad Age SMR Scaling | Easy |
| Mortality Surface | Complex |
| Brass Relational | Complex |
| Rate Ratio Scaling | Easy |
| Broad Age Rate Ratio Scaling | Easy |
| TOPALS | Moderate |
Source: author’s assessment
Relative ease of assumption setting and scenario creation of the eight regional mortality forecast methods
| Method | Ease of assumption setting |
|---|---|
| National Death Rates | Difficult (not really possible) |
| SMR Scaling | Moderate |
| Broad Age SMR Scaling | Moderate |
| Mortality Surface | Moderate |
| Brass Relational | Moderate |
| Rate Ratio Scaling | Difficult |
| Broad Age Rate Ratio Scaling | Difficult |
| TOPALS | Difficult |
Source: author’s assessment
Fig. 1Observed and projected (SMR Scaling) mortality rates for Northern Territory Outback males, 2006–2011. Source: observed mortality age schedule calculated from ABS data
Fig. 2Mean smoothness of forecast mortality rate age profiles across the 2006–11 and 2011–2016 periods across all Australian regions. Note: Mean Smoothness Index values were calculated for each method by averaging the Smoothness Index across all regions and both forecast periods
Summary of death rate errors across all regions of Australia and both 2006–2011 and 2011–2016 periods
| Method | Absolute Total Error (overall mortality) | Total Absolute Error (mortality age profiles) | ||
|---|---|---|---|---|
| Median | 95% | Median | 95% | |
| National Death Rates | 0.035 | 0.105 | 0.054 | 0.117 |
| SMR Scaling | 0.020 | 0.091 | 0.048 | 0.128 |
| Broad Age SMR Scaling | 0.016 | 0.066 | 0.040 | 0.087 |
| Mortality Surface | 0.017 | 0.067 | 0.038 | 0.083 |
| Brass Relational | 0.020 | 0.072 | 0.038 | 0.088 |
| Rate Ratio Scaling | 0.018 | 0.065 | 0.039 | 0.087 |
| Broad Age Rate Ratio Scaling | 0.021 | 0.074 | 0.042 | 0.092 |
| TOPALS | 0.019 | 0.071 | 0.040 | 0.085 |
Note: Absolute Total Error and Total Absolute Error measures were calculated for each method taking into account errors across all regions and both forecast periods
Fig. 3The distribution of mortality rate errors for males by period cohort in 2011–2016, across Australian regions, for selected regional mortality forecasting models
Summary evaluation of the mortality forecasting methods applied to Australian regions
| Method | Regional input data | Ease of calculation | Ease of assumption setting | Plausibility | Smoothness | Accuracy |
|---|---|---|---|---|---|---|
| National Death Rates | None | Easy | Difficult | High | Smooth | Poor |
| SMR Scaling | 41 | Easy | Moderate | Potential problems | Smooth | Poor |
| Broad Age SMR Scaling | 46 | Easy | Moderate | Problems unlikely | Smooth | Reasonable |
| Mortality Surface | 2 | Complex | Moderate | High | Smoothest | Reasonable |
| Brass Relational | 80 | Complex | Moderate | High | Smoothest | Reasonable |
| Rate Ratio Scaling | 80 | Easy | Difficult | Potential zero rates | Less smooth | Reasonable |
| Broad Age Rate Ratio Scaling | 12 | Easy | Difficult | Problems unlikely | Smooth | Reasonable |
| TOPALS | 80 | Moderate | Difficult | Problems unlikely | Smooth | Reasonable |
Note: r refers to the number of regions