SlideShare a Scribd company logo
1 of 29
Scrutinizing the 'feminization of agriculture'
hypothesis:
Trajectories of labor force participation in agriculture in Indonesia
Kartika Sari Juniwatya,b, Markus Ihalainena, Iliana Monterrosoa,
Marlene Eliasca Center for International Forestry Research (CIFOR)
b Faculty of Economics and Business, Universitas Indonesia
c Bioversity International
Seeds of Change Conference, University of Canberra, April 3rd, 2019
Outline
Background and Motivation
Research Context
Research questions
Methodology and Data
Initial Findings
Next steps
Background and Motivation
โ€ข Feminization of agriculture is widely used,
definitions vary
โ€ข Doss et al., 2018 argue that interventions based on
gender myths may impede the effectiveness of
policies
o Call for better understanding of gender roles, looking
beyond women
o Call for more empirical analysis
๏ƒ˜ This study aims to provide empirical evidence in
relation to the feminization of agriculture
Research Context
โ€ข Agriculture contribution to Indonesian
economy and labor absorption are declining
overtime
โ€ข Indonesia aim for self sufficiency
โ€ข Over the last ten years, national statistics
show:
o Share of women relative to men in agriculture:
๏‚ง 2008: 38.79%, 2018: 37.49%
o Percentage of agriculture in women labor:
๏‚ง 2008: 42.80%, 2018: 28.39%
Research questions
o Do women exit agriculture at the same rate as
men?
o If they are exiting, to which sectors?
o Who exactly exits?
o Why?
Methodology: Mixed-methods
Quantitative Analysis: Indonesian Family Life Survey (IFLS)
20 years of longitudinal data, rich in variables, high follow-up rate, and
including split-off households
Sources:
http://www.smeru.or.id/sites/default/files/events/d1_opening_ifls_firman_witoelar_0.pdf
Household level
โ€ข Household Characteristics
โ€ข Farm Business
โ€ข Non Farm Business
โ€ข Household Assets
โ€ข Non Labor Income
โ€ข Economics Shocks
โ€ข Consumption
โ€ข Knowledge on Family Planning Service
Individual level
โ€ข Education
โ€ข Subjective Wellbeing
โ€ข Marital History & Pregnancy Summary
โ€ข Household Decision Making
โ€ข Non Labor Income
โ€ข Migration
โ€ข Circular Migration
โ€ข Employment & Retirement*
โ€ข Risk and Time Preference* Trust*
โ€ข Health & Community Participation
Community level:
Environtmental condition, employment, services, price,
government programs, etc.
Initial Findings
Households entry and exit agriculture
Inter-sectors labor movement from
and to agriculture
Womenโ€™s working hours are reduced
over time, but they are age dependent
1
3
2
1. Dynamics of household-level participation in
Agriculture
Zoom into household found in all 5 waves
1993 1997 2000 2007 2014
From 2,415 agriculture
households in 1993:
โ€ข 6% moved out
completely after the
first round
โ€ข 47% stay at least twice
in any time โ€“ entry
and exit
โ€ข 47% of those doing
farm business in 1993,
stay for 20 years.
N=5,590 Households
2. Trajectories of womenโ€™s labor
participation
Retrospective data recorded in 2014 from Individual 15 years older in 2007
2011 20142008
Are women remaining in agriculture?
2011 vs 2014
Female exit from agriculture is mainly driven by exiting labor force โ€“
school or child bearing?
0% 20% 40% 60% 80% 100%
Women
Men
81.24
85.31
10.48
2.46
Agriculture, forestry, fisheries, hunting Manufacturing
Wholesale, retail, restaurant, and hotels Social service
Others Exit Labor Force
From which sectors are the agriculture labor?
2011 vs 2014
78.6
79.54
16.38
11.12
0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100%
Women
Men
Agriculture, forestry, fisheries, hunting Manufacturing
Wholesale, retail, restaurant, and hotels Social service
Others Non Labor Force
Women work fewer hours than men in agriculture
Womenโ€™s working hours are reduced over time, but they are age dependent
๏ƒ 
3. Change in working hours in normal weeks
hours
20
25
30
35
40
45
50
55
<25 25-34 34-45 45-54 55-64 >65
Non-Agriculture
2000 men 2000 women 2007 men
2007 women 2014 men 2014 women
20
25
30
35
40
45
50
55
<25 25-34 34-45 45-54 55-64 >65
Agriculture
2000 men 2000 women 2007 men
2007 women 2014 men 2014 women
Next steps:
o Add household-level and community-level
explanatory variables to interrogate gender
dynamics behind entering/exiting agriculture
๏‚ง Labor composition in households - including migration
๏‚ง Socio-economic condition
๏‚ง Spatial analysis
๏‚ง Farm/production characteristics
gender.cgiar.org
We would like to acknowledge all CGIAR Research Programs
and Centers for supporting the participation of their gender
scientists to the Seeds of Change conference.
Photo: Neil Palmer/IWMI
cifor.org
forestsnews.cifor.org
ForestsTreesAgroforestry.org
THANK YOU
Appendix
Overview
Total Agriculture Labor:
1988: 38 286 012
1998: 39 144 556
2008: 42 689 635
2018: 38 700 530
Source: Sakernas
0.00
20.00
40.00
60.00
80.00
100.00
120.00
140.00
Trends in Labor and Agriculture
Agricultural labor (%) Total Labor (millions) % share of agriculture in GDP
Source: BPS
Over the last 10 years:
No. sign of Feminization of Agriculture
2008-1 2018-1
% agriculture share of labor 41.83 30.46
% female share in agriculture labor 38.79 37.49
% agriculture share in female labor 42.80 28.39
% rural share in total agriculture labor 89.51 81.46
Absolute numbers of total labor in agriculture remain stable over the last 30 years.
Source: Sakernas data from BPS Publication
Aging in Agriculture-Main Farmer
Source: SUTAS, 2018
0% 20% 40% 60% 80% 100%
<25
25-34
35-44
45-54
55-64
>64
Gender composition, within age
Men Women
0%
5%
10%
15%
20%
25%
30%
Men Women
Age composition, within gender
<25 25-34 35-44 45-54 55-64 >64
Working farmers under the age of 35
1993 25.8 %
2003 20%
2013 12.9% 2018: 11.63%
Entry Exit individual
โ€ข Question was asked in 2014 โ€“
current labor participation
and also every year before
since 2007
โ€ข the pool is those who at least
reported once time time
work during the period of
2007-2014: 33,416
โ€ข ๏ƒ  46.45% female
Total 15,522 100.00
>64 666 4.29 100.00
55-66 1,293 8.33 95.71
45-54 2,424 15.62 87.38
35-44 4,114 26.50 71.76
25-34 5,665 36.50 45.26
<25 1,360 8.76 8.76
age Freq. Percent Cum.
Total 15,522 100.00
8:Don't know 24 0.15 100.00
6:Cohabitate 3 0.02 99.85
3:Separated/divorced/widowed 1,823 11.74 99.83
2:Married 12,779 82.33 88.08
1:Unmarried 893 5.75 5.75
Marital status Freq. Percent Cum.
Total 15,522 100.00
98:Don't know 178 1.15 100.00
95:Other 29 0.19 98.85
higher degree 2,445 15.75 98.67
5:General sr. high (SLA) 4,153 26.76 82.91
3:General jr. high 2,839 18.29 56.16
2:Grade school 4,971 32.03 37.87
1:Unschooled 907 5.84 5.84
education Freq. Percent Cum.
HHM highest level of
Total 15,522 100.00
Others 2,059 13.27 100.00
3:Children (biological 4,065 26.19 86.73
2:Husband/wife 7,714 49.70 60.55
1:Head of the household 1,684 10.85 10.85
Relation to HH Head Freq. Percent Cum.
Total 100.00 100.00 100.00 100.00 100.00
8:Casual worker not i 0.32 0.43 1.33 0.39 0.58
7:Casual worker in ag 20.78 10.71 11.73 12.02 12.31
6:Unpaid family worke 6.49 60.64 59.29 45.74 51.94
5:Private worker 6.17 6.10 7.08 6.59 6.34
4:Government worker 0.65 0.28 0.44 0.00 0.33
3:Self-employed with 0.65 0.43 0.22 0.39 0.41
2:Self employed with 38.64 16.45 13.94 24.42 19.65
1:Self-employed 26.30 4.96 5.97 10.47 8.44
that you do? 1:Head of 2:Husband 3:Childre Others Total
describes the work Relation to HH Head
Which category best
-> sc05 = 2:Rural
Total 100.00 100.00 100.00 100.00 100.00
9:Missing 0.00 0.30 0.00 0.00 0.16
8:Casual worker not i 3.95 0.91 1.98 1.79 1.62
7:Casual worker in ag 26.32 19.70 21.78 14.29 19.87
6:Unpaid family worke 3.95 34.85 36.63 25.89 29.73
5:Private worker 17.11 13.64 18.81 12.50 14.70
4:Government worker 0.00 2.73 0.99 0.00 1.62
3:Self-employed with 2.63 0.30 0.00 0.00 0.48
2:Self employed with 26.32 18.48 12.87 23.21 19.39
1:Self-employed 19.74 9.09 6.93 22.32 12.44
that you do? 1:Head of 2:Husband 3:Childre Others Total
describes the work Relation to HH Head
Which category best
-> sc05 = 1:Urban
Total 100.00 100.00 100.00
others 8.65 6.22 7.73
social service 24.47 19.56 22.61
wholesale, retail, re 43.85 32.01 39.36
manufacturing 14.88 15.20 15.00
Agriculture, forestry 8.16 27.00 15.31
CODE FOR SECTORS Urban Rural Total
Rural
-> ar07 = 3
Total 100.00 100.00 100.00
others 36.88 22.94 31.78
social service 15.69 14.38 15.21
wholesale, retail, re 18.85 12.95 16.69
manufacturing 16.32 13.50 15.29
Agriculture, forestry 12.27 36.22 21.03
CODE FOR SECTORS Urban Rural Total
Rural
-> ar07 = 1
. bys ar07: tab tk19a sc05 if tk31a2011==., co nof
Male-Female
Entry Comparison
10.65
49.7
26.19
13.27
RELATIONSHIP TO HEAD OF HOUSEHOLD
Head of the
househo
Husband/wife
Children/childre
n-in-laws
Others
5.75
82.33
11.74
0.020.15
MARITAL STATUS
Unmarried
Married
Separated/divorced/
Cohabitate
Don't know
6%
32%
18%
27%
16%
0%
1%
EDUCATION
Unschooled
Grade school
General jr. high
General sr. high (S
Higher degree
Other
Don't know
9%
37%
26%
16%
8%
4%
AGE
<25
25-34
35-44
45-54
55-66
>64
Profile of female labor force in 2014
Entry and Exit โ€“Male
restropective data recorded in 2014
Individual 15 years older in 2007
2011 20142008
Female labor in agriculture
(2014)
Total 100.00 100.00 100.00 100.00 100.00
9:Missing 0.00 0.06 0.00 0.00 0.03
8:Casual worker not i 1.04 0.52 1.45 0.81 0.79
7:Casual worker in ag 21.88 12.41 13.56 12.70 13.85
6:Unpaid family worke 5.99 55.75 55.15 39.73 47.42
5:Private worker 8.33 7.53 9.22 8.38 8.04
4:Government worker 0.52 0.75 0.54 0.00 0.59
3:Self-employed with 1.04 0.40 0.18 0.27 0.43
2:Self employed with 36.20 16.84 13.74 24.05 19.59
1:Self-employed 25.00 5.75 6.15 14.05 9.26
that you do? 1:Head of 2:Husband 3:Childre Others Total
describes the work Relation to HH Head
Which category best
1.Dynamic of Households level
participation in Farm Business
1993
N=7,180
1997
N=7,600
2000
N=10,269
2007
N=12,987
2014
N=15,185
N=19,599 Households
โ€ข Family exit indicidences
are always higher than
entry โ€“ except the
period between 1997-
2000
๏ƒ The Asian
financial crisis
โ€ข Split households
(mostly younger
generation) enter more
in non-farm than in
farm
Research Context
โ€ข Indonesia aim to achieve food self-sufficiency and to be main
producer of sustainable biofuel globally in 2045
o Population: 255.8 million (2015); 361.8 million (expected- 2045)
o Share of agriculture in employment: 1990: 55%, 2017: 31%
o Share of agriculture in GDP: 1990: 21%, 2017: 13%
o Total labor in agriculture: 1988: 38.2 million, 2018: 38.7 million
o Proportion of working farmers under age of 35: 1993: 25.8%; 2018: 11.63%
โ€ข Over the last ten years: national statistics show no sign of
feminization of agriculture
o Female share in agriculture labor: 2008: 38.79%, 2018: 37.49%
o Agriculture share in female labor: 2008: 42.80%, 2018: 28.39%
โ€ข What are the explanations?
Do women exit agriculture at the same rate with men? Why? If they are exiting, to which
sector? Who exit? Are there special charactheristics of those who move out?
โ€ข What are the implications?
Even in rural area, agriculture is not the highest sector
that absorb female labor
๏ƒ  opportunities outside agriculture are available
0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100%
Urban
Rural
8.16
27
14.88
15.2
43.85
32.01
24.47
19.56
8.65
6.22
SECTOR ENTERED BY FEMALE
Agriculture, forestry, fisheries, hunting Manufacturing
Wholesale, retail, restaurant, and hotels Social service
Others
wholesale, retail, re 6.59 4.16 4.61
manufacturing 2.75 1.17 1.46
Agriculture, forestry 75.09 82.64 81.24
CODE FOR SECTORS Urban Rural Total
Rural
-> ar07 = 3
Total 100.00 100.00 100.00
. 3.21 2.19 2.46
others 8.60 3.80 5.05
social service 3.21 2.13 2.41
wholesale, retail, re 4.34 2.47 2.96
manufacturing 3.04 1.36 1.80
Agriculture, forestry 77.58 88.06 85.31
CODE FOR SECTORS Urban Rural Total
Rural
-> ar07 = 1
. bys ar07: tab tk19a sc05 if tk31a2011==1, co nof m
Total 100.00 100.00 100.00
. 10.99 10.37 10.48
others 0.92 0.42 0.51
social service 3.66 1.25 1.70
wholesale, retail, re 6.59 4.16 4.61
manufacturing 2.75 1.17 1.46
Agriculture, forestry 75.09 82.64 81.24
CODE FOR SECTORS Urban Rural Total
Rural
-> ar07 = 3
Total 100.00 100.00 100.00
. 3.21 2.19 2.46
MaleFemale
Male Female Comparison
Staying or exit
Proportion of male who are staying is higher than those for
female (significant for Total and Rural, but not in Urban)

More Related Content

Similar to Scrutinizing the 'feminization of agriculture' hypothesis: trajectories of labour force participation in agriculture in Indonesia

Dairy development activities in country.pptx
Dairy development activities in country.pptxDairy development activities in country.pptx
Dairy development activities in country.pptx
Madan Karki
ย 
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
IFSD14
ย 
DYSON LIGOMBA POWERPOINT
DYSON LIGOMBA POWERPOINTDYSON LIGOMBA POWERPOINT
DYSON LIGOMBA POWERPOINT
Francio Ligomba
ย 
Womenโ€™s Roles in Rice Production in Northern Peru
Womenโ€™s Roles in Rice Production in Northern PeruWomenโ€™s Roles in Rice Production in Northern Peru
Womenโ€™s Roles in Rice Production in Northern Peru
CIAT
ย 
Manyara ranch ses 2021 final
Manyara ranch ses 2021 finalManyara ranch ses 2021 final
Manyara ranch ses 2021 final
ssuser88447f
ย 
Gender studies on thailand
Gender studies on thailandGender studies on thailand
Gender studies on thailand
Pheng Chandara
ย 

Similar to Scrutinizing the 'feminization of agriculture' hypothesis: trajectories of labour force participation in agriculture in Indonesia (20)

Gendered effects of NERICA upland rice: The case of labor dynamics in Hoima D...
Gendered effects of NERICA upland rice: The case of labor dynamics in Hoima D...Gendered effects of NERICA upland rice: The case of labor dynamics in Hoima D...
Gendered effects of NERICA upland rice: The case of labor dynamics in Hoima D...
ย 
The Benefit Incidence of Public Spending in Ethiopia
The Benefit Incidence of Public Spending in EthiopiaThe Benefit Incidence of Public Spending in Ethiopia
The Benefit Incidence of Public Spending in Ethiopia
ย 
Dairy development activities in country.pptx
Dairy development activities in country.pptxDairy development activities in country.pptx
Dairy development activities in country.pptx
ย 
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
Gender: Gender Inequity in Farm Level Decision Making and Resource Ownership ...
ย 
abcddddddddddddddddddddddddddddddddddddddd (1).pptx
abcddddddddddddddddddddddddddddddddddddddd (1).pptxabcddddddddddddddddddddddddddddddddddddddd (1).pptx
abcddddddddddddddddddddddddddddddddddddddd (1).pptx
ย 
Ph D Presn Slides For Daisen Poster
Ph D Presn Slides For Daisen PosterPh D Presn Slides For Daisen Poster
Ph D Presn Slides For Daisen Poster
ย 
ICRISAT Research Program West and Central Africa 2016 Highlights- Gender agri...
ICRISAT Research Program West and Central Africa 2016 Highlights- Gender agri...ICRISAT Research Program West and Central Africa 2016 Highlights- Gender agri...
ICRISAT Research Program West and Central Africa 2016 Highlights- Gender agri...
ย 
DYSON LIGOMBA POWERPOINT
DYSON LIGOMBA POWERPOINTDYSON LIGOMBA POWERPOINT
DYSON LIGOMBA POWERPOINT
ย 
Womenโ€™s Roles in Rice Production in Northern Peru
Womenโ€™s Roles in Rice Production in Northern PeruWomenโ€™s Roles in Rice Production in Northern Peru
Womenโ€™s Roles in Rice Production in Northern Peru
ย 
abgggghhhhhhhhhhhhhhhhhhhggggggggc (1).pptx
abgggghhhhhhhhhhhhhhhhhhhggggggggc (1).pptxabgggghhhhhhhhhhhhhhhhhhhggggggggc (1).pptx
abgggghhhhhhhhhhhhhhhhhhhggggggggc (1).pptx
ย 
Adoption of Sustainable Agriculture Practices among Kentucky Farmers and Thei...
Adoption of Sustainable Agriculture Practices among Kentucky Farmers and Thei...Adoption of Sustainable Agriculture Practices among Kentucky Farmers and Thei...
Adoption of Sustainable Agriculture Practices among Kentucky Farmers and Thei...
ย 
Farming system patterns: Cluster analysis from a Humidtropics baseline survey...
Farming system patterns: Cluster analysis from a Humidtropics baseline survey...Farming system patterns: Cluster analysis from a Humidtropics baseline survey...
Farming system patterns: Cluster analysis from a Humidtropics baseline survey...
ย 
Characteristics of Older Households in Malaysia CST PERKKS2021 final.pdf
Characteristics of Older Households in Malaysia CST PERKKS2021 final.pdfCharacteristics of Older Households in Malaysia CST PERKKS2021 final.pdf
Characteristics of Older Households in Malaysia CST PERKKS2021 final.pdf
ย 
Farm size, food security and welfare
Farm size, food security and welfareFarm size, food security and welfare
Farm size, food security and welfare
ย 
Manyara ranch ses 2021 final
Manyara ranch ses 2021 finalManyara ranch ses 2021 final
Manyara ranch ses 2021 final
ย 
Heterogenous Impacts of Malawiโ€™s Cash Transfer Programme by characteristics o...
Heterogenous Impacts of Malawiโ€™s Cash Transfer Programme by characteristics o...Heterogenous Impacts of Malawiโ€™s Cash Transfer Programme by characteristics o...
Heterogenous Impacts of Malawiโ€™s Cash Transfer Programme by characteristics o...
ย 
Impact of electrification on the welfare of rural households in Ethiopia
Impact of electrification on the welfare of rural households in Ethiopia Impact of electrification on the welfare of rural households in Ethiopia
Impact of electrification on the welfare of rural households in Ethiopia
ย 
Changes in Family, Domestic, and Agricultural Joint Decision-Making among Rur...
Changes in Family, Domestic, and Agricultural Joint Decision-Making among Rur...Changes in Family, Domestic, and Agricultural Joint Decision-Making among Rur...
Changes in Family, Domestic, and Agricultural Joint Decision-Making among Rur...
ย 
Strengthening producer groups as impact ICT hubs: Baseline Report
Strengthening producer groups as impact ICT hubs: Baseline ReportStrengthening producer groups as impact ICT hubs: Baseline Report
Strengthening producer groups as impact ICT hubs: Baseline Report
ย 
Gender studies on thailand
Gender studies on thailandGender studies on thailand
Gender studies on thailand
ย 

More from CGIAR

More from CGIAR (20)

Gendered youth transitions to adulthood in the Drylands: Implications for tar...
Gendered youth transitions to adulthood in the Drylands: Implications for tar...Gendered youth transitions to adulthood in the Drylands: Implications for tar...
Gendered youth transitions to adulthood in the Drylands: Implications for tar...
ย 
Power through: A new concept in the empowerment discourse
Power through: A new concept in the empowerment discoursePower through: A new concept in the empowerment discourse
Power through: A new concept in the empowerment discourse
ย 
Friends, neighbours and village cereal stockists: hope for non-hybrid seed ac...
Friends, neighbours and village cereal stockists: hope for non-hybrid seed ac...Friends, neighbours and village cereal stockists: hope for non-hybrid seed ac...
Friends, neighbours and village cereal stockists: hope for non-hybrid seed ac...
ย 
Seed security and resilience: Gender perspectives
Seed security and resilience: Gender perspectivesSeed security and resilience: Gender perspectives
Seed security and resilience: Gender perspectives
ย 
Gender dynamics in formal seed systems in Sub-Saharan Africa and worldwide le...
Gender dynamics in formal seed systems in Sub-Saharan Africa and worldwide le...Gender dynamics in formal seed systems in Sub-Saharan Africa and worldwide le...
Gender dynamics in formal seed systems in Sub-Saharan Africa and worldwide le...
ย 
Reflections on gender transformative approaches in agriculture โ€“ The promise ...
Reflections on gender transformative approaches in agriculture โ€“ The promise ...Reflections on gender transformative approaches in agriculture โ€“ The promise ...
Reflections on gender transformative approaches in agriculture โ€“ The promise ...
ย 
Culture, choice and action in legume seeds systems in East and North Uganda
Culture, choice and action in legume seeds systems in East and North UgandaCulture, choice and action in legume seeds systems in East and North Uganda
Culture, choice and action in legume seeds systems in East and North Uganda
ย 
Gender differentiation of farmers' knowledge, trait preferences and its impac...
Gender differentiation of farmers' knowledge, trait preferences and its impac...Gender differentiation of farmers' knowledge, trait preferences and its impac...
Gender differentiation of farmers' knowledge, trait preferences and its impac...
ย 
Commodity corridor approach: Facilitating gender integration in development r...
Commodity corridor approach: Facilitating gender integration in development r...Commodity corridor approach: Facilitating gender integration in development r...
Commodity corridor approach: Facilitating gender integration in development r...
ย 
Gender and food systems research: Key lessons from the Canadian International...
Gender and food systems research: Key lessons from the Canadian International...Gender and food systems research: Key lessons from the Canadian International...
Gender and food systems research: Key lessons from the Canadian International...
ย 
Revisiting women's empowerment through a cultural lens
Revisiting women's empowerment through a cultural lensRevisiting women's empowerment through a cultural lens
Revisiting women's empowerment through a cultural lens
ย 
Integrating gender in aquaculture and small scale fisheries agri-food systems...
Integrating gender in aquaculture and small scale fisheries agri-food systems...Integrating gender in aquaculture and small scale fisheries agri-food systems...
Integrating gender in aquaculture and small scale fisheries agri-food systems...
ย 
Learning to work as a farming family team: Farmer responses to a gender-inclu...
Learning to work as a farming family team: Farmer responses to a gender-inclu...Learning to work as a farming family team: Farmer responses to a gender-inclu...
Learning to work as a farming family team: Farmer responses to a gender-inclu...
ย 
Building gender equity from the bottom up in agricultural communities
Building gender equity from the bottom up in agricultural communitiesBuilding gender equity from the bottom up in agricultural communities
Building gender equity from the bottom up in agricultural communities
ย 
The role of paid and unpaid labour on sorghum and finger millet production in...
The role of paid and unpaid labour on sorghum and finger millet production in...The role of paid and unpaid labour on sorghum and finger millet production in...
The role of paid and unpaid labour on sorghum and finger millet production in...
ย 
Rural transformation, empowerment, and agricultural linkages in Nepal
Rural transformation, empowerment, and agricultural linkages in NepalRural transformation, empowerment, and agricultural linkages in Nepal
Rural transformation, empowerment, and agricultural linkages in Nepal
ย 
Intra-household decision-making processes: What the qualitative and quantitat...
Intra-household decision-making processes: What the qualitative and quantitat...Intra-household decision-making processes: What the qualitative and quantitat...
Intra-household decision-making processes: What the qualitative and quantitat...
ย 
Developing measures of freedom of movement for gender studies of agricultural...
Developing measures of freedom of movement for gender studies of agricultural...Developing measures of freedom of movement for gender studies of agricultural...
Developing measures of freedom of movement for gender studies of agricultural...
ย 
Building intellectual bridges and shared agendas / Strategy and example: gend...
Building intellectual bridges and shared agendas / Strategy and example: gend...Building intellectual bridges and shared agendas / Strategy and example: gend...
Building intellectual bridges and shared agendas / Strategy and example: gend...
ย 
Gender-transformative farmer field schools in Honduras
Gender-transformative farmer field schools in HondurasGender-transformative farmer field schools in Honduras
Gender-transformative farmer field schools in Honduras
ย 

Recently uploaded

VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
SUHANI PANDEY
ย 
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
SUHANI PANDEY
ย 
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
SUHANI PANDEY
ย 
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
SUHANI PANDEY
ย 
Environmental Science - Nuclear Hazards and Us.pptx
Environmental Science - Nuclear Hazards and Us.pptxEnvironmental Science - Nuclear Hazards and Us.pptx
Environmental Science - Nuclear Hazards and Us.pptx
hossanmdjobayer103
ย 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
SUHANI PANDEY
ย 
RA 7942:vThe Philippine Mining Act of 1995
RA 7942:vThe Philippine Mining Act of 1995RA 7942:vThe Philippine Mining Act of 1995
RA 7942:vThe Philippine Mining Act of 1995
garthraymundo123
ย 

Recently uploaded (20)

VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
ย 
(NEHA) Call Girls Navi Mumbai Call Now 8250077686 Navi Mumbai Escorts 24x7
(NEHA) Call Girls Navi Mumbai Call Now 8250077686 Navi Mumbai Escorts 24x7(NEHA) Call Girls Navi Mumbai Call Now 8250077686 Navi Mumbai Escorts 24x7
(NEHA) Call Girls Navi Mumbai Call Now 8250077686 Navi Mumbai Escorts 24x7
ย 
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
VIP Model Call Girls Charholi Budruk ( Pune ) Call ON 8005736733 Starting Fro...
ย 
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
VIP Model Call Girls Uruli Kanchan ( Pune ) Call ON 8005736733 Starting From ...
ย 
GENUINE Babe,Call Girls IN Chhatarpur Delhi | +91-8377877756
GENUINE Babe,Call Girls IN Chhatarpur Delhi | +91-8377877756GENUINE Babe,Call Girls IN Chhatarpur Delhi | +91-8377877756
GENUINE Babe,Call Girls IN Chhatarpur Delhi | +91-8377877756
ย 
Call Girls Jejuri Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Jejuri Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Jejuri Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Jejuri Call Me 7737669865 Budget Friendly No Advance Booking
ย 
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
ย 
Presentation: Farmer-led climate adaptation - Project launch and overview by ...
Presentation: Farmer-led climate adaptation - Project launch and overview by ...Presentation: Farmer-led climate adaptation - Project launch and overview by ...
Presentation: Farmer-led climate adaptation - Project launch and overview by ...
ย 
DENR EPR Law Compliance Updates April 2024
DENR EPR Law Compliance Updates April 2024DENR EPR Law Compliance Updates April 2024
DENR EPR Law Compliance Updates April 2024
ย 
Environmental Science - Nuclear Hazards and Us.pptx
Environmental Science - Nuclear Hazards and Us.pptxEnvironmental Science - Nuclear Hazards and Us.pptx
Environmental Science - Nuclear Hazards and Us.pptx
ย 
Deforestation
DeforestationDeforestation
Deforestation
ย 
Enhancing forest data transparency for climate action
Enhancing forest data transparency for climate actionEnhancing forest data transparency for climate action
Enhancing forest data transparency for climate action
ย 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 8005736733 Starting From 5K to...
ย 
RA 7942:vThe Philippine Mining Act of 1995
RA 7942:vThe Philippine Mining Act of 1995RA 7942:vThe Philippine Mining Act of 1995
RA 7942:vThe Philippine Mining Act of 1995
ย 
Hertwich_EnvironmentalImpacts_BuildingsGRO.pptx
Hertwich_EnvironmentalImpacts_BuildingsGRO.pptxHertwich_EnvironmentalImpacts_BuildingsGRO.pptx
Hertwich_EnvironmentalImpacts_BuildingsGRO.pptx
ย 
Presentation: Farmer-led climate adaptation - Project launch and overview by ...
Presentation: Farmer-led climate adaptation - Project launch and overview by ...Presentation: Farmer-led climate adaptation - Project launch and overview by ...
Presentation: Farmer-led climate adaptation - Project launch and overview by ...
ย 
Call Girls Moshi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Moshi Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Moshi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Moshi Call Me 7737669865 Budget Friendly No Advance Booking
ย 
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
ย 
RATING SYSTEMS- IGBC, GRIHA, LEED--.pptx
RATING  SYSTEMS- IGBC, GRIHA, LEED--.pptxRATING  SYSTEMS- IGBC, GRIHA, LEED--.pptx
RATING SYSTEMS- IGBC, GRIHA, LEED--.pptx
ย 
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
ย 

Scrutinizing the 'feminization of agriculture' hypothesis: trajectories of labour force participation in agriculture in Indonesia

  • 1. Scrutinizing the 'feminization of agriculture' hypothesis: Trajectories of labor force participation in agriculture in Indonesia Kartika Sari Juniwatya,b, Markus Ihalainena, Iliana Monterrosoa, Marlene Eliasca Center for International Forestry Research (CIFOR) b Faculty of Economics and Business, Universitas Indonesia c Bioversity International Seeds of Change Conference, University of Canberra, April 3rd, 2019
  • 2. Outline Background and Motivation Research Context Research questions Methodology and Data Initial Findings Next steps
  • 3. Background and Motivation โ€ข Feminization of agriculture is widely used, definitions vary โ€ข Doss et al., 2018 argue that interventions based on gender myths may impede the effectiveness of policies o Call for better understanding of gender roles, looking beyond women o Call for more empirical analysis ๏ƒ˜ This study aims to provide empirical evidence in relation to the feminization of agriculture
  • 4. Research Context โ€ข Agriculture contribution to Indonesian economy and labor absorption are declining overtime โ€ข Indonesia aim for self sufficiency โ€ข Over the last ten years, national statistics show: o Share of women relative to men in agriculture: ๏‚ง 2008: 38.79%, 2018: 37.49% o Percentage of agriculture in women labor: ๏‚ง 2008: 42.80%, 2018: 28.39%
  • 5. Research questions o Do women exit agriculture at the same rate as men? o If they are exiting, to which sectors? o Who exactly exits? o Why?
  • 6. Methodology: Mixed-methods Quantitative Analysis: Indonesian Family Life Survey (IFLS) 20 years of longitudinal data, rich in variables, high follow-up rate, and including split-off households Sources: http://www.smeru.or.id/sites/default/files/events/d1_opening_ifls_firman_witoelar_0.pdf Household level โ€ข Household Characteristics โ€ข Farm Business โ€ข Non Farm Business โ€ข Household Assets โ€ข Non Labor Income โ€ข Economics Shocks โ€ข Consumption โ€ข Knowledge on Family Planning Service Individual level โ€ข Education โ€ข Subjective Wellbeing โ€ข Marital History & Pregnancy Summary โ€ข Household Decision Making โ€ข Non Labor Income โ€ข Migration โ€ข Circular Migration โ€ข Employment & Retirement* โ€ข Risk and Time Preference* Trust* โ€ข Health & Community Participation Community level: Environtmental condition, employment, services, price, government programs, etc.
  • 7. Initial Findings Households entry and exit agriculture Inter-sectors labor movement from and to agriculture Womenโ€™s working hours are reduced over time, but they are age dependent 1 3 2
  • 8. 1. Dynamics of household-level participation in Agriculture Zoom into household found in all 5 waves 1993 1997 2000 2007 2014 From 2,415 agriculture households in 1993: โ€ข 6% moved out completely after the first round โ€ข 47% stay at least twice in any time โ€“ entry and exit โ€ข 47% of those doing farm business in 1993, stay for 20 years. N=5,590 Households
  • 9. 2. Trajectories of womenโ€™s labor participation Retrospective data recorded in 2014 from Individual 15 years older in 2007 2011 20142008
  • 10. Are women remaining in agriculture? 2011 vs 2014 Female exit from agriculture is mainly driven by exiting labor force โ€“ school or child bearing? 0% 20% 40% 60% 80% 100% Women Men 81.24 85.31 10.48 2.46 Agriculture, forestry, fisheries, hunting Manufacturing Wholesale, retail, restaurant, and hotels Social service Others Exit Labor Force
  • 11. From which sectors are the agriculture labor? 2011 vs 2014 78.6 79.54 16.38 11.12 0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% Women Men Agriculture, forestry, fisheries, hunting Manufacturing Wholesale, retail, restaurant, and hotels Social service Others Non Labor Force
  • 12. Women work fewer hours than men in agriculture Womenโ€™s working hours are reduced over time, but they are age dependent ๏ƒ  3. Change in working hours in normal weeks hours 20 25 30 35 40 45 50 55 <25 25-34 34-45 45-54 55-64 >65 Non-Agriculture 2000 men 2000 women 2007 men 2007 women 2014 men 2014 women 20 25 30 35 40 45 50 55 <25 25-34 34-45 45-54 55-64 >65 Agriculture 2000 men 2000 women 2007 men 2007 women 2014 men 2014 women
  • 13. Next steps: o Add household-level and community-level explanatory variables to interrogate gender dynamics behind entering/exiting agriculture ๏‚ง Labor composition in households - including migration ๏‚ง Socio-economic condition ๏‚ง Spatial analysis ๏‚ง Farm/production characteristics
  • 14. gender.cgiar.org We would like to acknowledge all CGIAR Research Programs and Centers for supporting the participation of their gender scientists to the Seeds of Change conference. Photo: Neil Palmer/IWMI
  • 17. Overview Total Agriculture Labor: 1988: 38 286 012 1998: 39 144 556 2008: 42 689 635 2018: 38 700 530 Source: Sakernas 0.00 20.00 40.00 60.00 80.00 100.00 120.00 140.00 Trends in Labor and Agriculture Agricultural labor (%) Total Labor (millions) % share of agriculture in GDP Source: BPS
  • 18. Over the last 10 years: No. sign of Feminization of Agriculture 2008-1 2018-1 % agriculture share of labor 41.83 30.46 % female share in agriculture labor 38.79 37.49 % agriculture share in female labor 42.80 28.39 % rural share in total agriculture labor 89.51 81.46 Absolute numbers of total labor in agriculture remain stable over the last 30 years. Source: Sakernas data from BPS Publication
  • 19. Aging in Agriculture-Main Farmer Source: SUTAS, 2018 0% 20% 40% 60% 80% 100% <25 25-34 35-44 45-54 55-64 >64 Gender composition, within age Men Women 0% 5% 10% 15% 20% 25% 30% Men Women Age composition, within gender <25 25-34 35-44 45-54 55-64 >64 Working farmers under the age of 35 1993 25.8 % 2003 20% 2013 12.9% 2018: 11.63%
  • 20. Entry Exit individual โ€ข Question was asked in 2014 โ€“ current labor participation and also every year before since 2007 โ€ข the pool is those who at least reported once time time work during the period of 2007-2014: 33,416 โ€ข ๏ƒ  46.45% female Total 15,522 100.00 >64 666 4.29 100.00 55-66 1,293 8.33 95.71 45-54 2,424 15.62 87.38 35-44 4,114 26.50 71.76 25-34 5,665 36.50 45.26 <25 1,360 8.76 8.76 age Freq. Percent Cum. Total 15,522 100.00 8:Don't know 24 0.15 100.00 6:Cohabitate 3 0.02 99.85 3:Separated/divorced/widowed 1,823 11.74 99.83 2:Married 12,779 82.33 88.08 1:Unmarried 893 5.75 5.75 Marital status Freq. Percent Cum. Total 15,522 100.00 98:Don't know 178 1.15 100.00 95:Other 29 0.19 98.85 higher degree 2,445 15.75 98.67 5:General sr. high (SLA) 4,153 26.76 82.91 3:General jr. high 2,839 18.29 56.16 2:Grade school 4,971 32.03 37.87 1:Unschooled 907 5.84 5.84 education Freq. Percent Cum. HHM highest level of Total 15,522 100.00 Others 2,059 13.27 100.00 3:Children (biological 4,065 26.19 86.73 2:Husband/wife 7,714 49.70 60.55 1:Head of the household 1,684 10.85 10.85 Relation to HH Head Freq. Percent Cum.
  • 21. Total 100.00 100.00 100.00 100.00 100.00 8:Casual worker not i 0.32 0.43 1.33 0.39 0.58 7:Casual worker in ag 20.78 10.71 11.73 12.02 12.31 6:Unpaid family worke 6.49 60.64 59.29 45.74 51.94 5:Private worker 6.17 6.10 7.08 6.59 6.34 4:Government worker 0.65 0.28 0.44 0.00 0.33 3:Self-employed with 0.65 0.43 0.22 0.39 0.41 2:Self employed with 38.64 16.45 13.94 24.42 19.65 1:Self-employed 26.30 4.96 5.97 10.47 8.44 that you do? 1:Head of 2:Husband 3:Childre Others Total describes the work Relation to HH Head Which category best -> sc05 = 2:Rural Total 100.00 100.00 100.00 100.00 100.00 9:Missing 0.00 0.30 0.00 0.00 0.16 8:Casual worker not i 3.95 0.91 1.98 1.79 1.62 7:Casual worker in ag 26.32 19.70 21.78 14.29 19.87 6:Unpaid family worke 3.95 34.85 36.63 25.89 29.73 5:Private worker 17.11 13.64 18.81 12.50 14.70 4:Government worker 0.00 2.73 0.99 0.00 1.62 3:Self-employed with 2.63 0.30 0.00 0.00 0.48 2:Self employed with 26.32 18.48 12.87 23.21 19.39 1:Self-employed 19.74 9.09 6.93 22.32 12.44 that you do? 1:Head of 2:Husband 3:Childre Others Total describes the work Relation to HH Head Which category best -> sc05 = 1:Urban
  • 22. Total 100.00 100.00 100.00 others 8.65 6.22 7.73 social service 24.47 19.56 22.61 wholesale, retail, re 43.85 32.01 39.36 manufacturing 14.88 15.20 15.00 Agriculture, forestry 8.16 27.00 15.31 CODE FOR SECTORS Urban Rural Total Rural -> ar07 = 3 Total 100.00 100.00 100.00 others 36.88 22.94 31.78 social service 15.69 14.38 15.21 wholesale, retail, re 18.85 12.95 16.69 manufacturing 16.32 13.50 15.29 Agriculture, forestry 12.27 36.22 21.03 CODE FOR SECTORS Urban Rural Total Rural -> ar07 = 1 . bys ar07: tab tk19a sc05 if tk31a2011==., co nof Male-Female Entry Comparison
  • 23. 10.65 49.7 26.19 13.27 RELATIONSHIP TO HEAD OF HOUSEHOLD Head of the househo Husband/wife Children/childre n-in-laws Others 5.75 82.33 11.74 0.020.15 MARITAL STATUS Unmarried Married Separated/divorced/ Cohabitate Don't know 6% 32% 18% 27% 16% 0% 1% EDUCATION Unschooled Grade school General jr. high General sr. high (S Higher degree Other Don't know 9% 37% 26% 16% 8% 4% AGE <25 25-34 35-44 45-54 55-66 >64 Profile of female labor force in 2014
  • 24. Entry and Exit โ€“Male restropective data recorded in 2014 Individual 15 years older in 2007 2011 20142008
  • 25. Female labor in agriculture (2014) Total 100.00 100.00 100.00 100.00 100.00 9:Missing 0.00 0.06 0.00 0.00 0.03 8:Casual worker not i 1.04 0.52 1.45 0.81 0.79 7:Casual worker in ag 21.88 12.41 13.56 12.70 13.85 6:Unpaid family worke 5.99 55.75 55.15 39.73 47.42 5:Private worker 8.33 7.53 9.22 8.38 8.04 4:Government worker 0.52 0.75 0.54 0.00 0.59 3:Self-employed with 1.04 0.40 0.18 0.27 0.43 2:Self employed with 36.20 16.84 13.74 24.05 19.59 1:Self-employed 25.00 5.75 6.15 14.05 9.26 that you do? 1:Head of 2:Husband 3:Childre Others Total describes the work Relation to HH Head Which category best
  • 26. 1.Dynamic of Households level participation in Farm Business 1993 N=7,180 1997 N=7,600 2000 N=10,269 2007 N=12,987 2014 N=15,185 N=19,599 Households โ€ข Family exit indicidences are always higher than entry โ€“ except the period between 1997- 2000 ๏ƒ The Asian financial crisis โ€ข Split households (mostly younger generation) enter more in non-farm than in farm
  • 27. Research Context โ€ข Indonesia aim to achieve food self-sufficiency and to be main producer of sustainable biofuel globally in 2045 o Population: 255.8 million (2015); 361.8 million (expected- 2045) o Share of agriculture in employment: 1990: 55%, 2017: 31% o Share of agriculture in GDP: 1990: 21%, 2017: 13% o Total labor in agriculture: 1988: 38.2 million, 2018: 38.7 million o Proportion of working farmers under age of 35: 1993: 25.8%; 2018: 11.63% โ€ข Over the last ten years: national statistics show no sign of feminization of agriculture o Female share in agriculture labor: 2008: 38.79%, 2018: 37.49% o Agriculture share in female labor: 2008: 42.80%, 2018: 28.39% โ€ข What are the explanations? Do women exit agriculture at the same rate with men? Why? If they are exiting, to which sector? Who exit? Are there special charactheristics of those who move out? โ€ข What are the implications?
  • 28. Even in rural area, agriculture is not the highest sector that absorb female labor ๏ƒ  opportunities outside agriculture are available 0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% Urban Rural 8.16 27 14.88 15.2 43.85 32.01 24.47 19.56 8.65 6.22 SECTOR ENTERED BY FEMALE Agriculture, forestry, fisheries, hunting Manufacturing Wholesale, retail, restaurant, and hotels Social service Others
  • 29. wholesale, retail, re 6.59 4.16 4.61 manufacturing 2.75 1.17 1.46 Agriculture, forestry 75.09 82.64 81.24 CODE FOR SECTORS Urban Rural Total Rural -> ar07 = 3 Total 100.00 100.00 100.00 . 3.21 2.19 2.46 others 8.60 3.80 5.05 social service 3.21 2.13 2.41 wholesale, retail, re 4.34 2.47 2.96 manufacturing 3.04 1.36 1.80 Agriculture, forestry 77.58 88.06 85.31 CODE FOR SECTORS Urban Rural Total Rural -> ar07 = 1 . bys ar07: tab tk19a sc05 if tk31a2011==1, co nof m Total 100.00 100.00 100.00 . 10.99 10.37 10.48 others 0.92 0.42 0.51 social service 3.66 1.25 1.70 wholesale, retail, re 6.59 4.16 4.61 manufacturing 2.75 1.17 1.46 Agriculture, forestry 75.09 82.64 81.24 CODE FOR SECTORS Urban Rural Total Rural -> ar07 = 3 Total 100.00 100.00 100.00 . 3.21 2.19 2.46 MaleFemale Male Female Comparison Staying or exit Proportion of male who are staying is higher than those for female (significant for Total and Rural, but not in Urban)

Editor's Notes

  1. Female as unpaid family labour or female as main farmer? Women in agriculture: Four myths (2018) Cheryl Doss, Ruth Meinzen-Dick, Agnes Quisumbing, Sophie Theis
  2. When has entered agriculture, majority women are staying, with the rate is higher in rural. Exit rate to other sector is small. The largest exit is to non labor force. ๏ƒ  can be for school or due to child bearing.