Mathematical Modelling of the Number of Philippines Population
Bonifacio Jr. Giangan
Saint Mary’s University – Bayombong, DOST – SEI (CBPSME)
ABSTRACT: The population of the Philippines keep increasing and many other aspects that affects from the growth of the population. This study focused on what best fits models being used to predict the main variable which the population in specific year. The researcher uses different statistical tool that is available in Microsoft Excel Data Analysis ToolPack to create a model. From that result, the researcher easily chooses where the best fit model is and predicts the main variable. Also, the researcher uses simple linear regression and multiple linear regressions to determine if the main variable has statistically significant relationship to the other variable. Based on the results, the best fit models are the polynomial which is sextic. As a result, the research found out that every year the population increase inconsistently.
KEYWORDS: Mathematical Modeling, Best Fit Model, Population, Regression
INTRODUCTION
The elements that affect population structure and growth are crucial to sustainable development. Numerous nations have previously voiced their worries about rapid population expansion and begun drafting reproductive health legislation (UNFPA, 2012). Bremmer et al (2010) stressed that unbalanced population expansion puts strain on the environment, human well-being, and global warming. However, the decreased population growth rates are causing worry in industrialized nations and several middle-income economies. Due to this scenario, the number of people in working age has decreased, the population is aging quickly, and there are issues with the labor force’s ability to be renewed and the viability of the social security and healthcare systems (UN DESA, 2011). It is important to note that the wavering official stance on the importance of reducing fertility rates continues to this day.
The Philippines had the 12th-highest population in the world in 2011. (CIA, 2013). The Philippines’ population growth rate is higher than that of the 11 most populous nations, with the exception of Nigeria (UN DESA, 2012). The Philippines’ slowing population growth rate is still greater than the 1.19 percent global average (UN DESA, 2012; POPCOM, 2013). Jones (2013) stated that even India and China will have slower population growth than the Philippines. The Philippines will see Southeast Asia’s largest relative population growth during the following 20 years, nonetheless. The Philippines’ gradual fall in population growth and persistently high total fertility rate can be attributed to this (Pastrana and Harris, 2011; NSO, 2012a). High fertility is caused by unwelcome pregnancy and a desire for a larger family beyond two kids (Bongaarts and Bruce, 1998).
The 1987 Philippine Constitution, which expressly guarantees “the right of couples to form their family and freely choose the number of their children based on their religious beliefs and the demands of responsible parenthood,” continues to be the basis for population policies and programs in the Philippines (Osias et al., 2010). According to an assessment by the Philippines Institute of Development Studies, the Philippine government’s population policies, which target fertility and population increase, did not remain consistent under several administrations (Herrin, 2002).
The RH Bill ensures that all people have access to reproductive health services and products, such as contraception, family planning, health and sexuality education, prenatal care, and maternal care (Senate, 2009). The RH Bill has effects on population growth and fertility even if its primary goal is to address whole family health. The original RH Bill (Section 20) states that while encouraging families to have two children and the State shall promote in achieving the desired size of families. However, having more than two children is not punishable and this is neither necessary nor compulsory (Congress, 2013). In general, Virola and Martinez (2007) emphasized that having two children is ideal for eventually taking care of your aging parents. Researchers think that there is a correlation between poverty and household size for the majority of cases in the Philippines. Hence, this study focusses on the best fit model to predict the population in the Philippines on certain year.
STAEMENT OF THE PROBLEM
This study aimed to determine the best fit model to predict the main variable. Specifically, this aimed to:
- Determine the trend of the number of population from the government expenditures to employment rate.
- Find if the number of population has significant linear relationship with following variables;
- Government Expenditures
- Inflation Rate
- Employment Rate
- Construct time series model of the main variable using the following models to predict the percentage for 2020.
- Linear
- Quadratic
- Exponential
- Polynomial (cubic, quartic, quantic, sextic)
- Power
- Moving Average
- Exponential Smoothing
- Auto regression
- Determine the best fits models and predict the main variable for 2020.
III. RESULTS
SECTION 1: TREND OF THE NUMBER OF POPULATION FROM THE GOVERNMENT EXPENDITURES TO EMPLOYMENT RATE.
(See in PDF File)
Figure 1. The Trend of the Population from Government Expenditures To Employment Rate.
SECTION 2: SIGNIFICANT LINEAR RELATIONSHIP
2.1 Government Expenditures
(See in PDF File)
Figure 2. Simple Linear Regression of Population to the Government Expenditures
The summary results stated that there is statistically significant relationship between the Philippines population and Government Expenditures, wherein the Significance F value which is 0. 00000247 is less than at alpha of 0.05.
2.2 Inflation Rate
(See in PDF File)
Figure 3. Simple Linear Regression of Population to the Inflation Rate
The summary results stated that there is statistically significant relationship between the Philippines population and Inflation Rate, wherein the Significance F value which is 0. 01937 is less than at alpha of 0.05.
2.3 Employment Rate
(See in PDF File)
Figure 4. Simple Linear Regression of Population to the Employment Rate
The summary results stated that there is statistically significant relationship between the Philippines population and Employment Rate, wherein the Significance F value which is 0. 000000526 is less than at alpha of 0.05.
2.4. Philippines population, Government Expenditures, Inflation rate, and Employment Rate
(See in PDF File)
Figure 5. Multiple Linear Regression of Philippines population, Government Expenditures, Inflation rate, and Employment Rate
The summary results stated that there is significant multiple linear relationship or models among the Philippines population, Government Expenditures, Inflation rate, and Employment Rate, wherein the Significance F value which is 0. 0000003789 is less than at alpha of 0.05.
SECTION 3: TIME SERIES MODEL
The following are the data collected from the PSA and NSO annual report.
Table 1. Data from PSA and NSO from 2005 – 2019
Year
(2005 – 2019) |
Population
(In Thousands) |
Government Expenditures
(In billions pesos) |
inflation rate
(in %) |
Employment rate
(in %) |
1 | 86,326 | 86998 | 7.1 | 92.3 |
2 | 87,889 | 85698 | 7.6 | 92.7 |
3 | 89,405 | 85177 | 6.2 | 92.2 |
4 | 90,902 | 111265 | 2.8 | 93.2 |
5 | 92,414 | 133028 | 2.8 | 92.4 |
6 | 93,967 | 109017 | 3.0 | 93.1 |
7 | 95,570 | 125196 | 4.7 | 93.6 |
8 | 97,213 | 143994 | 2.8 | 93.0 |
9 | 98,872 | 145546 | 3.0 | 93.5 |
10 | 100,513 | 154793 | 4.1 | 94.0 |
11 | 102,113 | 190037 | 1.4 | 94.3 |
12 | 103,664 | 176987 | 1.8 | 95.3 |
13 | 105,173 | 226868 | 2.9 | 95.0 |
14 | 106,651 | 306627 | 5.2 | 94.6 |
15 | 108,116 | 310815 | 2.5 | 95.5 |
Based on figure 1 and section 2 analysis, below are the results of the equation of each model.
Table 2. Model Equation
Model | Equation |
Linear | y = 1573.1x + 84667 |
Exponential | y = 85207e0.0162x |
Logarithmic | y = 8439ln(x) + 81556 |
Quadratic | y = 0.2423x2 + 1569.3x + 84678 |
Cubic | y = -1.3999x3 + 33.841x2 + 1347.2x + 85021 |
Quartic | y = -0.1196x4 + 2.4278x3 – 6.4358x2 + 1501.7x + 84862 |
Quantic | y = 0.0405x5 – 1.7409x4 + 25.914x3 – 155.05x2 + 1889x + 84563 |
Sextic | y = 0.0009x6 – 0.0046x5 – 0.9069x4 + 18.486x3 – 122.48x2 + 1825.5x + 84603 |
Power | y = 82381x0.0879 |
Moving Average | y = 1581.1x + 83025 |
Exponential Smoothing | y = 1499.8x + 82385 |
Autoregression | y=1686.3044+0.9987 |
SECTION 4: BEST FIT MODEL PREDICTION
The following summary table are the models of the main variable with R2 and Standard Error.
Table 3. Model Equation, R2, and Standard Error
|
Based on the result of Table 3, the best fit model is the Polynomial model which is Sextic to predict the Philippines population because of the R2=1. In determining the best fit model, the researcher is looking for the value of R2 and if the value is closest to and 1 is the highest and lowest standard error, that model is the best fit to predict the main variable.
- DISCUSSION
The importance of why we need to predict the main variable is for the other researcher and government agency that use to make some alternative support to some social issues involving the continuation increase of the population. By the predicted number of populations, government can maximize and implement some programs and to look the probable solution of having the social issues like the inflation rate and the unemployment rate.
The best fit model is the sextic function wherein, it is the only model has the highest R2, although quartic and quantic are also having the highest R2 but only sextic has lowest Standard of error compare to quartic and quantic.
Using the model which is the Sextic, we have the equation y = 0.0009×6 – 0.0046×5 – 0.9069×4 + 18.486×3 – 122.48×2 + 1825.5x + 84603. If we let x=16 ( by year 2020) , the projected Philippines population is equals to 109, 016 (in thousands).
The trend of the Philippines population from government expenditures to employment rate is increasing (see figure 1.1)
There is a significant linear relationship between the main variable and the government expenditures. However, when the variables were combined together, there is linear relationship among them.
The time series models using 2005 – 2019 are y = 1573.1x + 84667 for linear, y = 85207e0.0162x for exponential, y = 8439ln(x) + 81556 for logarithmic, y = 0.2423×2 + 1569.3x + 84678 for quadratic, y = -1.3999×3 + 33.841×2 + 1347.2x + 85021 for cubic, y = -0.1196×4 + 2.4278×3 – 6.4358×2 + 1501.7x + 84862 for quartic, y = 0.0405×5 – 1.7409×4 + 25.914×3 – 155.05×2 + 1889x + 84563 for quantic, y = 0.0009×6 – 0.0046×5 – 0.9069×4 + 18.486×3 – 122.48×2 + 1825.5x + 84603 for sextic, y = 82381×0.0879 for power, y = 1581.1x + 83025 for moving average (3), y = 1499.8x + 82385 for exponential smoothing, and y=1686.3044+0.9987y_(n-1) for autoregression.
The best fit models is Sextic under polynomial. Using thus model the main variable will increase to 109, 016 (in thousands)
CONCLUSION
It implies that the increase of population, the other variables like the government expenditures, inflation rate and the employment rate also affected. Based on the results, there is significant multiple linear relationship among the variables, It means that when the population increases, the other variables also affected it may decreases or increases in some manners regardless of the outside unexpected factors can also affects to the other variables.
ACKNOWLEDGMENTS
The researcher would like to give thanks to Saint Mary’s University – Bayombong, Nueva Vizcaya and Department of Science and Technology – Science Education Institute through Capacity Building Program in Science and Mathematics Education (CBPSME).
DISCLOSURE
There is no conflict of interest in the present study. Rest assured that the privacy of the participants would be respected, and all the data collected treated with outmost confidentiality. Further, the data provided would be transferred to excel in analyzing the data to a specific statistical tool.
REFERENCES
- Ahlburg, D., A. Kelley, K. Oppenheim Mason, editors. (1996). The Impact of Population Growth on Well-Being in Developing Countries, Springer-Verlag.
- Bongaarts, J., and J. Bruce (1998). Population Growth and Policy Options in the Developing World. 2020 Brief: Vision for Food, Agriculture, and the Environment. Washington D.C.: International Food Policy Research Institute. Retrieved on September 18, 2013 from http://ageconsearch.umn.edu/bitstream/16208/1/br53.pdf.
- Bremner, J. D. (2010). Cognitive processes in dissociation: Comment on Giesbrecht et al. (2008). Psychological Bulletin, 136(1), 1–6. https://doi.org/10.1037/a0018021
- Central Intelligence Agency (CIA) 2013 The CIA World Factbook. Retrieved on September 18, 2013 from https://www.cia.gov/library/publications/the-world-factbook.
- Herrin, A.N. (2002). Population Policy in the Philippines: 1969-2002. Discussion Paper Series No. 2002-08. Makati City: Philippine Institute for Development Studies. Retrieved on September 18, 2013 from http://dirp3.pids.gov.ph/ris/pdf/pidsdps0208.pdf.
- https://www.worldometers.info/world-population/philippines-population/
- Jones, G.W.2013 The Population of Southeast Asia. Asia Research Institute Working Paper Series No. 196. Singapore: Asia Research Institute, pp 20-21. Retrieved on September 8, 2013 from http://www.ari.nus.edu.sg/docs/wps/wps13_196.pdf.
- Osias, T.M., L.R. Tacardon, and L.M. Pedroso (2010) People Beyond Numbers: The Road to Population Stabilization in the Philippines. Manila: Commission on Population, p 47. Retrieved on September 18, 2013 from http://www.gillespiefoundation.org/uploads/Philippines_Report.pdf
- Pastrana, Q., and L. Harris (2011). Demographic Governance and Family Planning: The Philippines’ Way Forward. California: Bixby Center for Population, Health and Sustainability. Retrieved on September 18, 2013 from http://bixby.berkeley.edu/wp-content/uploads/2010/11/Family-Planning-Policy-Brief-1-4-111.pdf.
- Philippine National Statistics Coordination Board (NSCB) 2013 National Accounts of the Philippines. Retrieved on January 25, 2013 from http://www.nscb.gov.ph/sna.
- Philippine National Statistics Coordination Board (NSCB) 2012 Fact Sheet. Retrieved on January 25, 2013 from http://www.nscb.gov.ph/factshee.
- Philippine National Statistics Office (NSO) (2012a) Urban Women Bear Less Children in Their Lifetime Than Rural Women, Results from the 2011 Family Health Survey (FHS). Retrieved on September 6, 2013 from http://www.census.gov.ph/old/data/pressrelease/2012/pr1279tx.html.
- Philippine National Statistics Office (NSO) (2012b) Gender Quickstat. Retrieved on January 13, 2013 from http://www.census.gov.ph/sites/default/files/attachments/ird/quickstat/Gender%202012%203rd%20quarter.pdf
- Philippine National Statistics Office (NSO) 2013 Population Projection Statistics. Retrieved on January 25, 2013 from http://www.census.gov.ph/statistics/census/projected-population.
- Senate of the Philippines (Senate) 2009 Promoting Reproductive Health: A Unified Strategy to Achieve the MDGs. Policy Brief. Manila: Senate Economic Planning Office. Retrieved on September 16, 2013 from http://www.senate.gov.ph/publications/PB%202009-03%20%20Promoting%20Reproductive%20Health.pdf.
- United Nations Population Fund (UNFPA) 2012 Population Matters for Sustainable Development. New York: United Nations Publication. Retrieved on September 5, 2013 from http://www.unfpa.org/public/home/publications/pid/10986.
- United Nations, Department of Economic and Social Affairs (UN DESA), Population Division 2011 World Population Policies 2011. New York: United Nations Publication. Retrieved on September 6, 2013 from http://www.un.org/en/development/desa/population/publications/policy/world-population-policies-2011.shtml.
- United Nations, Department of Economic and Social Affairs (UN DESA), Population Division 2012 World Population Prospects: The 2012 Revision, CD-ROM Edition. New York: United Nations Publication. Retrievable from http://esa.un.org/wpp/.
- Virola, R.A., and A.M. Martinez (2007). Population and Poverty Nexus: Does Family Size Matter? Presented in the 10th National Convention on Statistics at the EDSA Shangri-la Plaza Hotel, Mandaluyong City, Philippines. Retrieved on September 10, 2013 from http://www.nscb.gov.ph/ncs/10thNCS/papers/contributed%20papers/cps-12/cps12-03.pdf.
- Yap, M.T. (2003). Fertility and Population Policy: the Singapore Experience. Journal of Population and Social Security (Population). Supplement to Vol 1, pp 643-658.Retrieved on September 16, 2013 frohttp://www.ipss.go.jp/webjad/webjournal.files/population/2003_6/24.yap.pdf.
Mathematical Modelling of the Number of Philippines Population
Bonifacio Jr. Giangan
Saint Mary’s University – Bayombong, DOST – SEI (CBPSME)
Vol 02 No 09 (2022): Volume 02 Issue 09 September 2022
Article Date Published : 7 September 2022 | Page No.: 424-429
Abstract :
The population of the Philippines keep increasing and many other aspects that affects from the growth of the population. This study focused on what best fits models being used to predict the main variable which the population in specific year. The researcher uses different statistical tool that is available in Microsoft Excel Data Analysis ToolPack to create a model. From that result, the researcher easily chooses where the best fit model is and predicts the main variable. Also, the researcher uses simple linear regression and multiple linear regressions to determine if the main variable has statistically significant relationship to the other variable. Based on the results, the best fit models are the polynomial which is sextic. As a result, the research found out that every year the population increase inconsistently.
Keywords :
References :
- Ahlburg, D., A. Kelley, K. Oppenheim Mason, editors. (1996). The Impact of Population Growth on Well-Being in Developing Countries, Springer-Verlag.
- Bongaarts, J., and J. Bruce (1998). Population Growth and Policy Options in the Developing World. 2020 Brief: Vision for Food, Agriculture, and the Environment. Washington D.C.: International Food Policy Research Institute. Retrieved on September 18, 2013 from http://ageconsearch.umn.edu/bitstream/16208/1/br53.pdf.
- Bremner, J. D. (2010). Cognitive processes in dissociation: Comment on Giesbrecht et al. (2008). Psychological Bulletin, 136(1), 1–6. https://doi.org/10.1037/a0018021
- Central Intelligence Agency (CIA) 2013 The CIA World Factbook. Retrieved on September 18, 2013 from https://www.cia.gov/library/publications/the-world-factbook.
- Herrin, A.N. (2002). Population Policy in the Philippines: 1969-2002. Discussion Paper Series No. 2002-08. Makati City: Philippine Institute for Development Studies. Retrieved on September 18, 2013 from http://dirp3.pids.gov.ph/ris/pdf/pidsdps0208.pdf.
- https://www.worldometers.info/world-population/philippines-population/
- Jones, G.W.2013 The Population of Southeast Asia. Asia Research Institute Working Paper Series No. 196. Singapore: Asia Research Institute, pp 20-21. Retrieved on September 8, 2013 from http://www.ari.nus.edu.sg/docs/wps/wps13_196.pdf.
- Osias, T.M., L.R. Tacardon, and L.M. Pedroso (2010) People Beyond Numbers: The Road to Population Stabilization in the Philippines. Manila: Commission on Population, p 47. Retrieved on September 18, 2013 from http://www.gillespiefoundation.org/uploads/Philippines_Report.pdf
- Pastrana, Q., and L. Harris (2011). Demographic Governance and Family Planning: The Philippines’ Way Forward. California: Bixby Center for Population, Health and Sustainability. Retrieved on September 18, 2013 from http://bixby.berkeley.edu/wp-content/uploads/2010/11/Family-Planning-Policy-Brief-1-4-111.pdf.
- Philippine National Statistics Coordination Board (NSCB) 2013 National Accounts of the Philippines. Retrieved on January 25, 2013 from http://www.nscb.gov.ph/sna.
- Philippine National Statistics Coordination Board (NSCB) 2012 Fact Sheet. Retrieved on January 25, 2013 from http://www.nscb.gov.ph/factshee.
- Philippine National Statistics Office (NSO) (2012a) Urban Women Bear Less Children in Their Lifetime Than Rural Women, Results from the 2011 Family Health Survey (FHS). Retrieved on September 6, 2013 from http://www.census.gov.ph/old/data/pressrelease/2012/pr1279tx.html.
- Philippine National Statistics Office (NSO) (2012b) Gender Quickstat. Retrieved on January 13, 2013 from http://www.census.gov.ph/sites/default/files/attachments/ird/quickstat/Gender%202012%203rd%20quarter.pdf
- Philippine National Statistics Office (NSO) 2013 Population Projection Statistics. Retrieved on January 25, 2013 from http://www.census.gov.ph/statistics/census/projected-population.
- Senate of the Philippines (Senate) 2009 Promoting Reproductive Health: A Unified Strategy to Achieve the MDGs. Policy Brief. Manila: Senate Economic Planning Office. Retrieved on September 16, 2013 from http://www.senate.gov.ph/publications/PB%202009-03%20%20Promoting%20Reproductive%20Health.pdf.
- United Nations Population Fund (UNFPA) 2012 Population Matters for Sustainable Development. New York: United Nations Publication. Retrieved on September 5, 2013 from http://www.unfpa.org/public/home/publications/pid/10986.
- United Nations, Department of Economic and Social Affairs (UN DESA), Population Division 2011 World Population Policies 2011. New York: United Nations Publication. Retrieved on September 6, 2013 from http://www.un.org/en/development/desa/population/publications/policy/world-population-policies-2011.shtml.
- United Nations, Department of Economic and Social Affairs (UN DESA), Population Division 2012 World Population Prospects: The 2012 Revision, CD-ROM Edition. New York: United Nations Publication. Retrievable from http://esa.un.org/wpp/.
- Virola, R.A., and A.M. Martinez (2007). Population and Poverty Nexus: Does Family Size Matter? Presented in the 10th National Convention on Statistics at the EDSA Shangri-la Plaza Hotel, Mandaluyong City, Philippines. Retrieved on September 10, 2013 from http://www.nscb.gov.ph/ncs/10thNCS/papers/contributed%20papers/cps-12/cps12-03.pdf.
- Yap, M.T. (2003). Fertility and Population Policy: the Singapore Experience. Journal of Population and Social Security (Population). Supplement to Vol 1, pp 643-658.Retrieved on September 16, 2013 frohttp://www.ipss.go.jp/webjad/webjournal.files/population/2003_6/24.yap.pdf.
Author's Affiliation
Bonifacio Jr. Giangan
Saint Mary’s University – Bayombong, DOST – SEI (CBPSME)
Article Details
- Issue: Vol 02 No 09 (2022): Volume 02 Issue 09 September 2022
- Page No.: 424-429
- Published : 7 September 2022
- DOI: https://doi.org/10.55677/ijssers/V02I09Y2022-02
How to Cite :
Mathematical Modelling of the Number of Philippines Population. Bonifacio Jr. Giangan, 02(09), 424-429. Retrieved from https://ijssers.org/single-view/?id=7296&pid=7274
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