International Journal of Mechanical Engineering and Technology (IJMET) Volume 10, Issue 01, January 2019, pp. 1762-1771, Article ID: IJMET_10_01_175 Available online at http://www.iaeme.com/ijmet/issues.asp?JType=IJMET&VType=10&IType=01 ISSN Print: 0976-6340 and ISSN Online: 0976-6359 © IAEME Publication Scopus Indexed A FEW DEMOGRAPHIC FACTORS AFFECTING THE DECLINE OF TOTAL FERTILITY RATE: AN EMPIRICAL EVIDENCE D.Srinivasa Kumar Associate Professor, GMR Institute of Technology, Rajam K.V.S.Prasad Sr.Assistant Professor, GMR Institute of Technology, Rajam A.Vinod Kumar Scientific Officer "H", Bhabha Atomic Research Centre (BARC), Mumbai ABSTRACT This paper investigates the a few demographic factors affecting the decline of Total Fertility Rate. It is based on survey conducted in Kovvada region, Srikakulam district, Andhra Pradesh. According to GIS information the study area divided into three zones with 5km, 15km and 30km radius distance from the Nuclear Plant situated in Kovvada labeled as core zone, Buffer Zone - I and Buffer Zone - II covering 153 villages. Data were collected from 11297 household through pre designed questionnaire in these zones and entered CAPI using DESOFT software and analyze. Children ever born and children surviving data used to estimate age specific rates. Association between education level and fertility rates have been established by applying chi square. Results revealed that 61 percent women were illiterate and TFR 2.7. The TFR range 2.7 to 3.4 in all three zones high and there is significant association between fertility and a few demographic factors like occupation and education level of women. It may be inferred that literacy rate of female and women age groups are the most imperative components influencing TFR. Which proved that the existence of some kind of dependency between level of education and total fertility rate. Key Words: Fertility Rate, Women Education, Age Groups, Childbearing, Literacy Rate Cite this Article: D.Srinivasa Kumar, K.V.S.Prasad and A.Vinod Kumar, A Few Demographic Factors Affecting the Decline of Total Fertility Rate: an Empirical Evidence, International Journal of Mechanical Engineering and Technology, 10(01), 2019, pp.1762– 1771 http://www.iaeme.com/IJMET/issues.asp?JType=IJMET&VType=10&Type=01 http://www.iaeme.com/IJMET/index.asp 1762 editor@iaeme.com D.Srinivasa Kumar, K.V.S.Prasad and A.Vinod Kumar 1. INTRODUCTION: Although fertility decline often correlates with improvements in socioeconomic conditions, many demographers have found flaws in demographic transition theories that depend on changes in distal factors such as increased wealth or education (Campbell et.la, 2013).A recent study by Yoo (2014) estimates completed cohort fertility by utilizing the question in the census that asks the number of children ever born. Yoo (2014), uses past censuses to estimate completed cohort fertility for women born between 1926 and 1970. Based on these estimates, Yoo (2014) concludes that fertility differentials in Korea havebeen diminishing across all educational levels, arguing that Korea does not conform to Bongaarts’ (2003) finding that educational differentials in fertility continue to persist in post-transitional societies such as Korea.Education is a standout amongst the most vital elements affecting fertility behavior. A study on Nigeria investigated a universal primary education program that took place between 1976 and 1981, and found that it also influenced fertility behavior (Osili and Long, (2008).This paper analyzes the a few demographic factors influencing the decline of Total Fertility Rate (TRF), women Education level of attainment, the fewer children she is probably going to bear. Given that fewer childrenper women and postponed marriage and childbearing could mean more resources per child and better wellbeing and survival rates for mother and children this critical connection. Men had significantly lower fertility awareness than women on almost all parameters (Hammarberg et al, 2013).However, educational uplift along with economic opportunities of women, improved access to reproductive health information, services at schools, health campaigns, and involvement of men in family planning decision making have an impact on fertility. In addition, age and employment; maternal age, level of education, family size and breastfeeding; age of mother, age at marriage, and education were proved to be significant influencers of birth interval, (Nadahindawa et al, 2014), (Rasheed and Dabal, (2007), (AI-Almaie, 2003), (Ai-Nahedh, (1999). One of the significant difficulties in a large portion of the creating nations today is the quick increment in population, which is in charge of an expansive number of social and economic problems. Female education has a greater impact on determining the age at marriage and number of children (Breierva and Duflo, 2002).The fertility rates in creating countries are high versus developed countries. An extensive number of factors are responsible of high fertility rates in developing countries of the world. The age at marriage is one of the key determinants of fertility rate. The lower the age at marriage time, longer the reproductive span, which results in higher fertility rate. There are numerous reasons behind early marriages in developing countries, which incorporate both the social and economic factors.Education is considered as a standout amongst the most vital factor influencing women decision regarding the number of children. Educated women exercise higher command over their reproduction, as even after controlling husband’s education, advanced women education is positively associated with the use of modern contraceptives (Omariba, 2006). Another argument is that women’s higher education empowers them to make decisions on their fertility. In fact, women’s empowerment could be the driving force for the effect of education on fertility (Chicoine, 2012).Women’s education level could influence fertility through its effect on women’s health and their physical ability to give birth, children’s health, the quantity of children wanted, and women’s ability to control birth and knowledge of different birth control methods. There was no significant relationship between demographic characteristics and gender (Srinivasa& Prasad, 2018). TFR is the number of children a women can expect to have over her lifetime given current rates of age specific fertility. The figure is demonstrates TFR drifts after some time in core zone, Buffer Zone - I and Buffer Zone - II in study area among women varying levels of education accomplishment. What it appears for each of the three zones is that there are striking contrasts in TFR between women with no schooling and women with a higher education http://www.iaeme.com/IJMET/index.asp 1763 editor@iaeme.com A Few Demographic Factors Affecting the Decline of Total Fertility Rate: an Empirical Evidence 2. STUDY AREA: The study area is defined as 30 km radius of proposed Nuclear Power Plant in Kovvada Region (NPPKR) of Ranasthalam Mandal, Andhra Pradesh, India. In this connection, we made GIS based village generation thematic maps in Kovvada region. According to those maps 0-5 Km radius named as Core Zone where we identified 13 villages; 5-15 km radius named as Buffer Zone – I, we identified 101 villages and 15-30 radius named as Buffer Zone – II, where we identified 283. 3. OBJECTIVES: To assess the Sex Ratio To assess the Literacy rate To assess the Age groups as per gender To assess the occupation of participants To assess the women fertility rate 4. METHODOLOGY: Before commencing the door to door survey we collected the required data from the available agencies (Census, Municipality, Panchayath office, Mandal Revenue office, Mandal Development offices etc.) as it is a field intensive work. In the core zone 13 villages, Buffer Zone - I 72 villages and Buffer Zone - II 68 villages were selected and we made door to door survey in these zones through well-structured questionnaire from households (HHs). The responses of household heads information was entered in their laptops by using the Data Entry Software (DSOFT). According to GIS information, Buffer Zone -I consists of 101 villages and we made it into 72 PSUs (Primary Sample Units) with its hamlet villages. Buffer Zone -II consists of 283 villages but we selected 74 PSUs in this zone. We selected 10 PSUs in urban area and 64 PSUs in rural area and data collected from 45 households in each PSU. Data analysis was carried out by using statistical tools like SPSS (Statistical Package for Social Science) for statistical analysis simple averages, percentages and chi-square tests are used. The hypotheses are tested at both 0.05% and 0.01% significant levels. Hypotheses: H0: Women education level and total fertility rate are independent H1: Women education level and total fertility rate are significantly dependent 4.1. Sex Ratio Distribution: The number of males and females in study area,the distribution may refer to how many men or women presented in table-1. Table 1: Sex Wise Distribution of Participants Sl.No. 1 2 Sex Male Female Total Core Zone 9092 (51.78) 8466 (48.22) 17558 Buffer Zone - I 6400 (51.40) 6052 (48.60) 12452 Buffer Zone - II 6407 (51.49) 6035 (48.51) 12442 Total 21899 (51.59) 20553 (48.41) 42452 Data Format: Number (%) http://www.iaeme.com/IJMET/index.asp 1764 editor@iaeme.com D.Srinivasa Kumar, K.V.S.Prasad and A.Vinod Kumar Total 42452 populations were covered during survey from all the three zones. Of these, 21899(51.59%) are males and 20533 (48.41%) are females. In all the three zones, male to female population ratio is constant. In core zone 9092 (51.78%) population is male and 8466 (48.22%) are females. In Buffer zone - I, 6400 (51.40%) population is male and remaining 6052 (48.60) are females. In Buffer Zone - II, 6407 (51.49) population is male and remaining 3035 (48.51) are females. As per the census 2011, at national level male population is 51.47%and 48.52% females. At state level 50.17% are males and 49.82% are females. At district level, Srikakulam district is having 49.65% of males and 50.34% females. In the given area population distribution is similar to the National level. 4.2. Age Wise Distribution: Age composition by residence were broadly classified by ages groups like Up to 5, 6 to 15, 16 to 49, 50 to 60 years and above 60 years in my study area is shown in the table-2. Sl.No. 1 2 3 4 5 TABLE 2: AGE WISE DISTRIBUTION OF PARTICIPANTS Age Groups Core Zone Buffer Zone - I Buffer Zone - II Up to 5 1682 (9.58) 1062 ((8.53) 848 (6.82) 6 to 15 3154 (17.96) 2106 (16.91) 1958 (15.74) 16 to 49 9454 (53.84) 6579 (52.83) 6621 (53.21) 50 to 60 2133 (12.15) 1825 (14.66) 1972 (15.85) >60 1135 (6.46) 880 (7.07) 1043 (8.38) Total 17558 12452 12442 Total 3592 (8.46) 7218 (17.00) 22654(53.36) 5930 (13.97) 3058 (7.20) 42452 Data Format: Number (%) Age wise distribution of participants is as following. In core zone 1682 (9.58%) participants are below five years of age, and in the Buffer Zone - I and Buffer Zone - II was 1062 (8.53%) and 848 (6.82%) participants are below five years age, respectively. Total 3592 (8.46%) participants are below five years of age from all three zones. 22654 (53.36%) participants are from the 16 to 49 years of age group from all three zones. Participants over sixty years of age are 3058 (7.20%) from all two zones. In this study indicates that more fertility age group peoples were living in the proposed plant area. 4.3. Mean Age of Marriage: Marriage is for bliss not for misery. Studies have also revealed that an average marriageable age in India for men is 26 years and for women 22.2 years. Rural and urban India shows sharp difference between the ages at marriage. Overall the age in urban areas is 21 years whereas in rural areas it is 19 years in study area Average age of marriage showed in table - 3 Table 3: Average Age of Marriage Sl.No. Gender Core Zone 1 Boys 24.50 2 Girls 19.35 Data Format: Number (%) http://www.iaeme.com/IJMET/index.asp Buffer Zone-I 25.30 19.60 1765 Buffer Zone-II 26.44 18.98 Total 25.41 19.31 editor@iaeme.com A Few Demographic Factors Affecting the Decline of Total Fertility Rate: an Empirical Evidence Average age of boys who married in study area was 25.41 years and girl’s average age was 19.31. Average age of marriage is steadily increasing in all parts of state. In 2011 census average age of marriage for boys and girls was 24.3 and 19.8 years in Andhra Pradesh, respectively. 4.4. Total Fertility Rate: The cumulative value of the Age Specific Fertility Rates at the end of the child bearing age gives a measure of fertility known as Total Fertility Rate (TFR). TFR indicates the average number of children expected to be born per women during her entire span of reproductive period assuming that the age specific fertility rates to which she exposed to continue to be the same and there is no mortality. Delayed childbearing is not necessarily an informed decision-making but could be a less conscious choice associated with lack of knowledge regarding the impact of female age on fertility (Cooke et al, 2010).The TFRs worked out on the basis of average specific fertility rate in the core zone 3.37 children are born per women, 2.82 children in Buffer Zone - I and 2.67 children in Buffer Zone - II. The TFR in India is 2.4 and in the Andhra Pradesh are 1.8 children per women, implying that the state has reached below replacement level of fertility. Mean age of childbearing in core zone at the age of 24.38 years, inBuffer Zone - I and Buffer Zone - II is 23.08 and 23.67 years respectively. At national level mean age of childbearing was 26.6 years and in state level was 24.3 years, in study area it exactly matches with state level childbearing value was presented in table-4. Table 4: Age specific fertility rates derived from CEB data* for Core, Buffer I and II zone areas of KOVADA NPP area Sl.No. Age Group of Women 1 2 3 4 5 6 15 – 20 20 – 25 25 – 30 30 – 35 35 – 40 40 – 45 7 45 – 50 Mean Age of Child bearing: Total Fertility Rate: Core Zone Fertility Children consistent Ever Born with CEB (CEB) A.S.F.R * 0.64935 0.23610 1.31055 0.08677 2.0445 0.14299 2.40704 0.02783 2.67994 0.09334 2.96606 0.06411 3.23746 Buffer Zone - I Fertility Children consistent Ever Born with CEB (CEB) A.S.F.R * 0.56522 0.21865 1.32391 0.10893 2.00416 0.11927 2.28795 0.01435 2.41718 0.05184 2.58868 0.03787 0.02358 2.98396 0.01404 Buffer Zone - II Fertility Children consistent Ever Born with CEB (CEB) A.S.F.R * 0.62963 0.21542 1.09350 0.05452 1.76225 0.13002 1.99097 0.00689 2.12127 0.07339 2.27838 0.05005 2.39773 0.01849 24.38500 23.08345 23.67504 3.37358 2.82477 2.674972 *Arraiga's approach for estimation of ASFR for one point in time CEB (MORTPAK) 4.5. Occupation: Agriculture is the backbone of the economy of the district. More than half of its population is engaged in agriculture in order to earn their livelihood.Formalization, decentralization and communication indicate that there is very highly significant variation of mean percentage when analysis is made according to occupations of the staffs (Kangjam & Devi, 2018).Occupation of people in study area presented in the table – 5 http://www.iaeme.com/IJMET/index.asp 1766 editor@iaeme.com D.Srinivasa Kumar, K.V.S.Prasad and A.Vinod Kumar Table 5: Occupation of the Households Sl.No. 1 2 Occupation Cultivation Agriculture Labour Non Agricultural 3 Labour Traditional 4 Occupation 5 Self-Business 6 Service (Govt.) 7 Service (Pvt.) 8 Others 9 Student 10 House Wife 11 No Work Total Data Format: Number (%) Core Zone 595 (3.39) 2775 (15.80) Buffer Zone-I 564 (4.53) 1921 (15.43) Buffer Zone-II 715 (5.75) 2246 (18.05) Total 1874 (4.41) 6942 (16.35) 1569 (8.94) 1631 (13.10) 1160 (9.32) 4360 (10.27) 984 (5.60) 105 (0.84) 210 (1.69) 1299 (3.06) 1320 (7.52) 83 (0.47) 307 (1.75) 440 (2.51) 3976 (22.64) 2572 (14.65) 2937 (16.73) 17558 379 (3.04) 102 (0.82) 484 (3.89) 415 (3.33) 3023 (24.28) 2015 (16.18) 1813 (14.56) 12452 434 (3.49) 149 (1.20) 376 (3.02) 65 (0.52) 3018 (24.26) 2106 (16.93) 1963 (15.78) 12442 2133 (5.02) 334 (0.79) 1167 (2.75) 920 (2.17) 10017 (23.60) 6693 (15.77) 6713 (15.81) 42452 Occupation of the participants is as following. 1874 (4.41%) participants are farmers and engaged exclusively in cultivation. Core Zone 595 (3.39%) participants are engaged in cultivation which is less than Buffer Zone-I and II, which is 564 (4.53%) and 715 (5.75%) respectively. 6942 (16.35%) participants are engaged in agriculture related labor, in the Core Zone 2775 (15.80%) participants are engaged in the agricultural labor, in Buffer Zone-I and II, 1921 (15.43%) and 2246 (18.05%), respectively . 334 (0.79%) participants are in government services only. Percentage of participants in government services is less compared to other occupations. As per census 2011, total work force population is 29.86% in India and 64.43% in Andhra Pradesh. In Srikakulam district is 47.73% , in study area work force population more than the national level but less than the state level. 4.6. Literacy Status: Literacy is an essential aspect of our everyday lives that is embedded in our activities, social interactions and relationships. It is the ability to read and write, in this research the literacy rates shown in the table – 6. TABLE 6: GENDER WISE LITERACY STATUS Sl.No. Literacy Status 1 2 Core Zone Buffer Zone - I Buffer Zone - II Total Male Female Male Female Male Female Male Female Literates 4324 (47.56) 3028 (35.77) 3443 (53.80) 2531 (41.82) 3657 (57.08) 2527 (41.87) 11424 (52.17) 8086 (39.34) Illiterates 4768 (52.44) 5438 (64.23) 2957 (46.20) 3521 (58.18) 2750 (42.92) 3508 (58.13) 10475 (47.83) 12467 (60.66) Total 9092 8466 6400 6052 6407 6035 21899 20553 Data Format: Number (%) *Excluding Up to 5 years population In this study male literacy is 52.17% and female literacy is 39.24%, in the core zone male literacy is 47.56% and female literacy is 35.77%. In Buffer Zone - I, male literacy is 53.80% and http://www.iaeme.com/IJMET/index.asp 1767 editor@iaeme.com A Few Demographic Factors Affecting the Decline of Total Fertility Rate: an Empirical Evidence female literacy is 41.82%. In Buffer Zone - II, male literacy is 57.08% and female literacy is 52.17%.At the district level total literacy is 61.74%, in this 71.61% are male and 52.08% are females. In the given study overall literacy status is less compared to district, state and national average. The level of education can be classified in three groups. 4.7. Educational Levels in Different Age Groups of Females: Educational attainment or level of education has become basic necessity of life. The status of educational levels of residence in the study area as per age groups was presented in table – 7. Table 7 : Educational Levels of Females as per Age Groups Name of the Zone Core Zone Buffer Zone I Buffer Zone II Age Group in Years Educational Levels Primary Upper Primary High School Higher Education 15-25 439 (41.07) 288 (51.89) 418 (46.29) 206 (41.12) 25-35 254 (23.76) 102 (18.38) 269 (29.79) 164 (32.73) 35-50 376 (35.17) 165 (29.73) 216 (23.92) 131 (26.15) Total 1069 555 903 501 15-25 257 (30.09) 170 (40.96) 343 (45.01) 266 (53.20) 25-35 291 (34.07) 101 (24.34) 222 (29.13) 160 (32.00) 35-50 306 (35.83) 144 (34.70) 197 (25.85) 74 (14.80) Total 854 415 762 500 15-25 230 (32.08) 110 (32.64) 291 (38.14) 281 (39.58) 25-35 191 (26.64) 106 (31.45) 256 (33.55) 233 (32.82) 35-50 296 (41.28) 121 (35.91) 216 (28.31) 196 (27.61) Total 717 337 763 710 Data Format: Number (%) In the age group 15-25 years women having highest fertility rate, in a core zone upper primary level of education have 51.89% followed by high school was 46.29%, higher education was 41.12%, but primary level of education was 41.07% shown as lowest level of education in core zone. In Buffer Zone - I higher education level was highest shown as 53.20%, lowest was primary education level is lowest shown as 30.39%. In Buffer Zone - II higher education also shown as highest 39.50%, compare to remaining levels, primary level also shown as lowest 32.08%. 5. RESULTS AND DISCUSSION: The major objective of present study was to find out the direct and indirect impact of females education on TFR in study area. TFR is treated as dependent variable; level of education an important explanatory variable has been limited to primary, upper primary, higher school and higher education. This paper analyze the TFR is significant influences on female level education, in this connection independent variables expected frequencies calculated in different age groups like 15-25, 25-35 and 35-50 years are considered for analysis. The expected frequency values of female educational level in all three zones at different age groups present in table – 8. http://www.iaeme.com/IJMET/index.asp 1768 editor@iaeme.com D.Srinivasa Kumar, K.V.S.Prasad and A.Vinod Kumar Table 8: Expected Frequency (fe) Values of Educational Levels at different Age Groups Core Zone Educational Status Buffer Zone - I Buffer Zone - II 15-25 25-35 35-50 15-25 25-35 35-50 15-25 25-35 35-50 Primary 476.95 278.55 313.50 349.56 261.16 243.28 258.77 223.02 235.22 Upper Primary 247.62 144.62 162.76 169.87 126.91 118.22 121.62 104.82 110.56 High School 402.89 235.29 264.82 311.91 233.03 217.07 275.37 237.32 250.31 Higher Education 223.53 130.54 146.92 204.66 152.90 142.43 256.24 220.84 232.92 The chi-square values are calculated in all three zones and test the 0.05% and 0.01% significance levels and presented in the table – 9. Table 8: Summarizing the data for Calculating Chi-square Values Name of the Zone Core Zone Buffer Zone - I Buffer Zone - II Observed (fo) 439 254 376 288 102 165 418 269 216 206 164 131 (fo-fe)2 1440.56 602.57 3906.50 1630.23 1816.06 5.01 228.29 1136.17 2383.04 307.33 1119.26 253.60 257 291 306 170 101 144 343 222 197 266 160 174 8567.91 890.42 3934.18 0.02 671.34 664.60 966.89 121.57 402.77 3762.33 50.35 996.42 230 191 296 110 106 121 291 256 216 281 233 196 Expected (fe) fo-fe 476.95 -37.95 278.55 -24.55 313.50 62.50 247.62 40.38 144.62 -42.62 162.76 2.24 402.89 15.11 235.29 33.71 264.82 -48.82 223.53 -17.53 130.54 33.46 146.92 -15.92 χ2 349.56 -92.56 261.16 29.84 243.28 62.72 169.87 0.13 126.91 -25.91 118.22 25.78 311.91 31.09 233.03 -11.03 217.07 -20.07 204.66 61.34 152.90 7.10 142.43 31.57 χ2 258.77 -28.77 223.02 -32.02 235.22 60.78 121.62 -11.62 104.82 1.18 110.56 10.44 275.37 15.63 237.32 18.68 250.31 -34.31 256.24 24.76 220.84 12.16 232.92 -36.92 χ2 α = 0.01, df = (4-1)(3-1) = 6 the critical value is 16.812 α = 0.05, df = (4-1)(3-1) = 6 the critical value is 12.592 http://www.iaeme.com/IJMET/index.asp 1769 827.54 1025.04 3694.59 135.12 1.39 109.09 244.35 348.79 1177.00 613.03 147.89 1363.12 (fo-fe)2/ fe 3.02 2.16 12.46 6.58 12.56 0.03 0.57 4.83 9.00 1.37 8.57 1.73 62.89 24.51 3.41 16.17 0.00 5.29 5.62 3.10 0.52 1.86 18.38 0.33 7.00 86.19 3.20 4.60 15.71 1.11 0.01 0.99 0.89 1.47 4.70 2.39 0.67 5.85 41.59 editor@iaeme.com A Few Demographic Factors Affecting the Decline of Total Fertility Rate: an Empirical Evidence The above table indicates that significance dependence is clearly seen between different levels of female education on the TFR in a study area. At 1% level of significance in a core zone χ2 is 62.89 > 16.812, Buffer Zone – I χ2 is 86.19 > 16.812 and Buffer Zone - IIχ2 is 41.59 > 16.812 and also at 5% level of significance In a core zone χ2 is 62.89 > 12.592, Buffer Zone – I χ2 is 86.19 > 12.592 and Buffer Zone – II χ2 is 41.59 > 12.592, hencethere is enough statistical evidence torejectthe null hypothesis (H0) and accepted the H1. Comparing the level of education on fertility rates all three zones, it can be observed that the highest TFR 3.37 in core zone because the literacy rate in female is lowest and level education is upper primary is highest 51.89% in the age group of 15-25 years. TFR is lowest in Buffer Zone - I and Buffer Zone - II is 2.82 and 2.67 respectively. Because the literacy rate 41.82% in Buffer Zone - I and 41.87% in Buffer Zone - II it is almost all similar, that is reason the TFR is also similar in these zones. The level of education in Buffer Zone - II is higher education level is 53.20%, which proved that the existence of some kind of dependency between level of education and total fertility rate. So that level of education also shows impact on fertility rate. 6. CONCLUSION The present examination analyzed there is a huge impact demographic factors on TFR in stud area based on results obtained from chi-square test it can be concluded that mean age at marriage of male and female, education levels of women and occupation of male are most important factors affecting the TFR, it very well may be inferred that literacy rate of female and women age groups are the most imperative components influencing TFR in the examination all three zones. Women education can be effective if it is at higher education level. An inverse relation between the TFR and education level suggest that higher the women education the lower will be TFR. In addition, in case of male, primary education has significant impact on the TFR. On the basis of present investigation focus on high rate female education will enable them as part decision making with regarding to the number of children. Finally, I conclude that TFR is decreases when women educational levels are increased. ACKNOWLEDGMENT: The authors would like to extend their sincere gratitude to the Board of Research in Nuclear Science (BRNS), Mumbai for funding of this research project with grant No.36 (4)/14/59/2014BRNS/10133. REFERENCES: [1] [2] [3] [4] [5] [6] Bongaarts, J. (2003). Completing the fertility transition in the developing world: The role of educational differences and fertility preferences. Population Studies, 57(3): 321–335. doi:10.1080/0032472032000137835. Breierova, L. and E.Duffo (2002), the impact of education on Fertility and child Mortality: Do fathers really matter less than Fathers”. Working Paper 10513 NBER Working Paper Series. 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