TY - JOUR
T1 - Questioning the implication of the utility-maximization assumption for the estimation of deprivation cost functions after disasters
AU - Fernandez Pernett, Stephanie
AU - Amaya, Johanna
AU - Arellana, Julián
AU - Cantillo, Victor
N1 - Funding Information:
The data collected represent a wide range of socioeconomic characteristics of the populations. In Colombia, female respondents represent 53% of the sample, and most individuals are between 41 and 65 years old (53%). The average household size is 4.52 people, and in 53% of households, there is at least one child 10 years old or younger. Also, in 26% of the households, there is at least one elderly person (over 65 years old). In terms of income, 41% of the respondents earn less than 350 dollars per month. Most (48%) earn between 350 and 750 dollars per month. In around 37% of the cases, the individuals surveyed are the heads of households. Also, the respondents provided their SES (socioeconomic stratum), which is a metric from 1 to 6 used in Colombia as a proxy for income classification to determine the fees for utilities and public services (Cantillo-García et al., 2019). In the survey sample, 47% of the respondents were in the low-income level SES (1–2); 46% were in the medium-income SES (3–4); and only the remaining 7% belonged to a high-income level SES (5–6). Regarding their occupation, 36% of the respondents were independent (self-employed), 30% were employees, 11% were housekeepers, 9% were students, 3% were unemployed, and the rest had other occupations. A small proportion of the respondents just went to elementary school or had no education (8%); 32% finished high school; and the remaining had a BA or other college degree.
Publisher Copyright:
© 2022 Elsevier B.V.
PY - 2022/5
Y1 - 2022/5
N2 - Deprivation cost functions (DCFs) allow for the quantification of human suffering after disasters strike. Commonly, DCF estimation methods assume that affected individuals aim to maximize their wellbeing while making rational decisions. However, after disasters, people are often under stress and pressure, possibly traumatized, and they can adopt behaviors that are neither compensatory nor utility based. This paper questions the use of Random Utility Maximization (RUM) to estimate DCFs and compares its results with a Random Regret Minimization (RRM) approach, and a combined method that considers both Regret- and Utility-based decision rules. DCFs for multiple supplies are estimated using stated preference data from two case studies: Colombia and Ecuador. The results suggest that deprivation cost estimations yield significantly different valuations depending on the heuristic used to explain choice behavior, with the DCFs estimated using RUM having higher cost values for a time window shorter than 48 h. This suggests that for longer time windows, RRM is the approach that should be used. Moreover, results show that deprivation costs are context-dependent, and should not be transferred directly. Finally, it is shown that DCFs for multiple commodities can be added separately in the same objective function when planning relief distribution operations. This research is the first attempt to consider different choice heuristics for estimating deprivation cost functions, and it is the first to compare data from multiple locations. The implications of these findings provide disaster managers and planners with new challenges and research directions to improve relief distribution plans.
AB - Deprivation cost functions (DCFs) allow for the quantification of human suffering after disasters strike. Commonly, DCF estimation methods assume that affected individuals aim to maximize their wellbeing while making rational decisions. However, after disasters, people are often under stress and pressure, possibly traumatized, and they can adopt behaviors that are neither compensatory nor utility based. This paper questions the use of Random Utility Maximization (RUM) to estimate DCFs and compares its results with a Random Regret Minimization (RRM) approach, and a combined method that considers both Regret- and Utility-based decision rules. DCFs for multiple supplies are estimated using stated preference data from two case studies: Colombia and Ecuador. The results suggest that deprivation cost estimations yield significantly different valuations depending on the heuristic used to explain choice behavior, with the DCFs estimated using RUM having higher cost values for a time window shorter than 48 h. This suggests that for longer time windows, RRM is the approach that should be used. Moreover, results show that deprivation costs are context-dependent, and should not be transferred directly. Finally, it is shown that DCFs for multiple commodities can be added separately in the same objective function when planning relief distribution operations. This research is the first attempt to consider different choice heuristics for estimating deprivation cost functions, and it is the first to compare data from multiple locations. The implications of these findings provide disaster managers and planners with new challenges and research directions to improve relief distribution plans.
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U2 - 10.1016/j.ijpe.2022.108435
DO - 10.1016/j.ijpe.2022.108435
M3 - Article
AN - SCOPUS:85124243399
SN - 0925-5273
VL - 247
JO - International Journal of Production Economics
JF - International Journal of Production Economics
M1 - 108435
ER -