Title: Engendering agricultural censuses, Experience from Africa
1Engendering agricultural censuses, Experience
from Africa
Global Forum on Gender Statistics Accra, 26 -
29 January 2009
- Diana Tempelman
- Senior Officer, Gender and Development
- FAO Regional Office for Africa, Accra
2GENDER CONCERNS IN AGRICULTURAL SECTOR
- Male dominated rural out-migration
- Access to productive resources land animals
- Access to agricultural inputs seeds, fertilizer
/ - agro-chemicals, extension / training, finances,
farmers organisations - (market-)information
- Access to / provision of family labour
- Responsibilities
3Engendering agricultural statistics Outline of
presentation
- Early days first half 1990-ies
- Developing methodology - WCA 2000
- (1996-2005)
- Consolidation - WCA 2010 (2006 2015)
- Remaining challenges
WCA World Census of agriculture
4Early days (1991-2005, .., ..)
5Early days first half 1990-ies
Early REACTIONS
Those feminists from Beijing!
Thought?
Thought?
Yes, womens agricultural work doesnt show in
statistics
6Early days first half 1990-ies
ACTIONS
- re-analysing existing raw data
- data by sex of Head of Holding
-
- technical support to user-producers workshops
availability / demand / users of - sex-disaggregated agricultural data
- revision of concepts definitions
7Early days first half 1990-ies
OUTCOME
- Awareness on need for sex-disaggregated data
- Knowledge among statisticians
- Openness to test collection
sex-disaggregated data through - existing agricultural surveys / censuses
8Developing a methodology WCA 2000 (1996-2005)
9Developing a methodology WCA 2000 (1996-2005)
ACTIONS
- Gender analysis training
- Data analysis presentation at
- sub-national level
- Data presentation at
- sub-household level
- ALL MEMBERS WORK
10 FEMINISATION AGRICULTURAL SECTOR
DATA
11? feminisation of agriculture
DATA
Heads of agricultural holdings / sex in selected
provinces - CAMEROON
Province Agric. census 1984 Agric. census 1984 Agric. survey85 86 Agric. survey85 86 Agric. surveys 89 90 Agric. surveys 89 90
Province Male Female Male Female Male Female
Extreme North 91,8 8.2 91,8 8.2 92,6 7.4
East 91,6 8.4 90,8 9.2 85,6 14.4
Central 77,8 22.2 78,5 21.5 71,8 28.2
South 84,9 15.1 81,1 18.9 71,2 28.8
Coast 79,1 20.9 79,9 20.1 63,2 36.8
West 75,8 24.2 73,6 26.4 66.0 34.0
National 85.4 14.6 85.2 14.8 79,4 20.6
12 labour constraints in headed HH
DATA
Active male members / sex of HoHH, Tanzania
13 Gender variation at sub-national level
DATA
Area under maize, NIGER
14Gender variation at sub-national level
DATA
? area under vouandzou, NIGER
15 Under - presentation of women farmers work
DATA
Area cultivated / crop by sex of agricultural
holder BURKINA FASO
16 Enhanced presentation of women farmers work
DATA
Area cultivated / crop by sex of agricultural
holder sub-holder
NEW CONCEPT gt PLOT-MANAGERS
17Developing a methodology WCA 2000 (1996-2005)
OUTCOME
182. Developing a methodology WCA 2000 (1996-2005)
OUTCOME
- Thematic census reports Tanzania, Niger
19Consolidation WCA 2010 (2006 - 2015)
20EXAMPLES of Best practises from WCA 2010
- Analysis of demographic data
- Access to productive resources (/ sex of HoHH
individual) - Destination of agricultural produce / sex of HoHH
(min.) - Credit, labour and time-use
- Poverty indicators
21i - Demographic data - NIGER
DATA
Average size and dependency ratio of agricultural
households by sex of Head of Household at
regional and national level
Source RGAC 2004-2007, Niger
22 ii - Access to productive resources, LAND
23LAND Collective management / Head of HH
DATA
24 LAND Individual management / active HH members
DATA
25 ii - Access to productive resources ANIMALS
26DATA
Agricultural HH / principal activity / sex HoHH,
Niger
Source RGAC 2004-2007, Niger
27 ii - Access to productive resources ANIMALS
Household level question
28DATA
Sedentary animals / type of animal / sex of
owner, Niger
Source RGAC 2004-2007, Niger
29Ownership chicken / sex of owner, Niger
DATA
Source RGAC 2004-2007, Niger
30DATA
Ownership pigeons / sex age of owner, Niger
Source RGAC 2004-2007, Niger
31iii destination of agricultural produce Part 2
Crop usage proportions (percentages) ETHIOPIA
32Destination of birds / sex of HoHH, Niger
DATA
Source RGAC 2004-2007, Niger
33iv Credit, labour, time-use. Tanzania
Q 13.1 During the year 2002/2003 did any of the
household members borrow money for agriculture?
Yes or no Q 13.2 If yes, then give details
of the credit obtained during the agricultural
year 2002/2003 (if the credit was provided in
kind, for example by the provision of inputs,
then estimate the value)
34Use of CREDIT / sex of HH member, Tanzania
35Female HoHH use credit to hire labour -
DATA
to purchase seeds
TANZANIA
36Reasons for not receiving a loan or credit -
UGANDA
Source Uganda Pilot Census of Agriculture 2003
PCA Form 2 Section 2.2
37iv Time-use, Ethiopia Source Ethiopian
Agricultural Sample Enumeration Miscellaneous
Questions 2001/02 (1994 E.C.)
21 How much time do men and women spend in the
household on each of the following agricultural
activities? Use the codes given below the table
Codes 1 Not participated 2 One fourth of the
time (1/4) 3 One half of the time (1/2)
4 Three fourth of the time (3/4) 5 Full
time 6 Not applicable
38DATA
iv - Division of Labour, Tanzania
39V Poverty indicators, Tanzania
Source United Republic of Tanzania
Agricultural Sample Census 2002/2003- Small
holder/Small Scale Farmer Questionnaire Section
34
40DATA
Frequency of food shortages, Tanzania
A higher percent male-headed HHs never has food
shortage. A higher percent of female-headed HHs
has often or always food shortages. The same
pattern appears in the regions.
41Consolidation phase WCA 2010 (2006 2015)
ACTIONS
- Integration into
- FAO STATISTICAL
- DEVELOPMENT SERIES
-
42Consolidation WCA 2010 (2006 2015)
ACTIONS
Forthcoming
43Consolidation WCA 2010 (2006 2015)
ACTIONS
Reinforcing sex-disaggregated data in COUNTRY
STAT
44Remaining challenges
45Remaining challenges
Discussion points
- analysis of available
- sex-disaggregated data
- use sex-disaggregated data
- policy-making, implementation impact
assessment
46Discussion points
Remaining challenges
- integration national
- statistical systems
- Progress impact indicators
47Remaining challenges
Discussion points
- IMPROVED DATA COLLECTION
- Labour
-
- Decision-making
- Responsibilities
48THANK YOU