Climate shocks and risk attitudes among female and male maize farmers in Kenya

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Climate shocks and risk attitudes among female and male maize farmers in Kenya Songporne Tongruksawattana 1, Priscilla Wainaina 2, Nilupa S. Gunaratna 3 and Hugo De Groote 1 1 International Maize and Wheat Improvement Center (CIMMYT), Nairobi, Kenya 2 Department of Agricultural Economics and Rural Development; Georg August University of Goettingen, Germany 3 Department of Global Health and Population, Harvard T.H. Chan School of Public Health, Massachusetts, USA Montpellier March 16 18, 2015

Introduction Shocks Climate Agricultural Market Adaptation/Mitigation including adoption of CSA Household Farm production Food security Income Welfare Risk attitude Gender Averse Neutral Loving Male Female 2

Objectives To assess whether there is significant difference between male and female maize farmers in their attitudes towards risk To evaluate consistency of risk attitude measured by self assessment and 2 al elicitations To identify factors, in particular the climate, agricultural and market shock experience, that influence risk attitudes elicited from 3 different methods 3

Data and study site Kenya Rural Maize Household Survey (2013) AEZ Number of sub locations Number of households Number of respondents Male Female Total Coastal Lowland 15 90 72 79 151 Dry Mid Altitude 18 216 151 200 351 Dry Transitional 17 204 152 185 337 Moist Transitional 33 354 272 321 593 Highland Tropics 20 240 179 216 395 Moist Mid Altitude 18 240 185 209 394 Total 121 1344 1011 1210 2221 4

Data and study site Maize agro ecological zones and surveyed sub locations in Kenya 5

% of households who had experienced shocks in last 2 years (2011 2012) 6

% of households who had experienced shocks in last 2 years (2011 2012) c c 7

% of households who had experienced shocks in last 2 years (2011 2012) 8

Risk elicitation method 1. General risk self assessment scale Dohmen et al. (2011) and Hardeweg et al. (2011) 9

Risk elicitation method 2. Lottery Choice Experiment (MPL) Holt and Laury (2002) & Eckel and Grossman (2008) Lottery choice with increasing expected payoffs and standard deviation Candy test run 50 Ksh endowment Event A Event B Choice Blue stone Yellow stone Respondent's selection Give reason Expected payoff Standard deviation Implied risk attitude Probability 50% Probability 50% 1 50 50 50 0 High risk averse 2 80 30 55 25 Moderate risk averse 3 100 20 60 40 Low risk averse 4 120 10 65 55 Risk neutral 5 150 20 65 85 Risk loving 6 none of the above choice Extreme risk averse 10

Risk elicitation method 3. Lottery Purchase Experiment (BDM auction) Maximum willingness to pay for a lottery Candy test run 100 Ksh endowment Random price draw Lottery price (KSH) Respondent's willingness to pay Lottery payoff (KSH) Event A Blue stone probability 50% Event B Yellow stone probability 50% 0 100 0 10 100 0 20 100 0 30 100 0 40 100 0 50 100 0 60 100 0 70 100 0 80 100 0 Give reason Implied interval for the coefficient of relative risk aversion lower bound upper bound Implied risk attitude 0.699 to inf Risk averse 0.569 to 0.699 Risk averse 0.424 to 0.569 Risk averse 0.244 to 0.424 Risk averse 0 to 0.244 Risk averse 0.357 to 0 Risk neutral 0.943 to 0.357 Risk loving 2.106 to 0.943 Risk loving 5.579 to 2.106 Risk loving 90 100 0 inf to 5.579 Risk loving 100 100 0 irrational irrational Irrational 11

12

Results: Consistency Response comparison of three risk measurements 13

Spearman's rank correlations among three risk measurements Total sample (n=2152) Male (n=974) Female (n=1178) p value in parentheses Results: Consistency Overall, the three risk measures are significantly positively though weakly correlated. Lottery choice Lottery purchase Lottery choice Lottery purchase Lottery choice Lottery purchase Risk selfassessment Lottery choice Lottery purchase 0.0997 1 (0.0000) 0.0519 0.0705 1 (0.0169) (0.0011) 0.0903 1 (0.0048) 0.0665 0.1047 1 (0.038) (0.0011) 0.1071 1 (0.0002) 0.0334 0.042 1 (0.2514) (0.1493) 14

Results: Consistency Farmers are more risk averse (s) than they think they are (selfassessment), especially when they have to spend money up front (purchase ). This is further support by the greater agreement (concordance) between the two s than between self assessment vs. s. Women seem to be especially risk averse when they have to spend money upfront (purchase ). Number of respondents by risk level (%) Concordance with other measures (%) Risk elicitation measures Averse Neutral Loving Lottery choice Lottery purchase Male Female Male Female Male Female Risk self assessment 34.29 36.33 11.4 15.37 54.31 48.3 Lottery choice 54.72 55.01 18.38 19.35 26.9 25.64 Male Female Male Female 37.06 37.83 33.78 34.61 47.63 47.75 Lottery purchase 71.56 76.23 6.37 5.18 13.35 11.46 15

Results: Factors Overall Different factors were associated with the different measures of risk attitudes. Gender Men were significantly more risk loving than women, though these effects were not large. In the purchase, men were willing to pay KSH 4 more on average. Education Significant effect only on the choice : more educated people were more likely to be risk averse. Household Having more natural capital (land) and social capital (group membership) were associated with greater acceptance of risk, while people with more dependent children were more risk averse. Food security Throughout the year: Farmers from food secure households were more accepting of risk. Past month: Farmers from food insecure households were more risk loving in the choice and marginally so in the self assessment, but not in the purchase. 16

Results: Factors Region Risk attitudes did differ across agroecologies: Dry transitional, Dry Mid altitute, Moist Transitional are less accepting of risk. Climate shocks Climatic shocks largely did not affect risk attitudes. Significant negative association: hail storms (choice ). Significant positive association: wind storm (self assessment), cold/frost (choice ), flooding (purchase ). Agricultural shocks People who had experienced livestock diseases and deaths in the past two years assessed themselves as more risk averse. However, those who had problems with crop pests in the same period assessed themselves as more risk loving. Market shocks People who faced shortages of produce buyers and increases in transportation costs were less accepting of risk. Intra household Male s and female s risk attitudes were positively correlated 17

Conclusion Self assessment often does not match behavior, indicating the importance of al methods that reveal risk attitude Farmers are more risk averse than they think they are, especially when they have to spend money up front. Different methods of assessing risk yield different results Gender difference is confirmed (although not large): Men were more risk loving than women, measured both through self assessment and lottery purchase. Regional difference is observed: Beyond the differences in climatic shocks, AEZ represent true differences in agroecology, capturing other unmeasured factors that may differ geographically and can influence risk attitudes (e.g. cultural and ethnic differences, unmeasured aspects of poverty) 18

Conclusion Policy support to reduce vulnerability to climate, agricultural and market shocks, enhance food security and building of natural and social capital can reduce risk aversion and increase uptake of climate smart technologies. Technology development, targeting, promotion activities, and extension services need to be gender sensitive given the higher risk aversion among female farmers. In these efforts, we also should recognize that regions, locations and households within a given location differ in their risk aversion. Although the majority of farmers are risk averse, there is a niche of farmers who are more accepting of risk. 19

Thank you 20