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on Neuroeconomics |
By: | Davillas, Apostolos (University of Macedonia); de Oliveira, Victor Hugo (Instituto de Pesquisa e Estratégia Econômica do Ceará (IPECE)); Raftopoulou, Athina (University of Patras) |
Abstract: | Drawing on nationally representative UK data, we explore the association of parental health and disability with mental distress and non-cognitive skills development of adolescents; both self-reported and more objectively measured bio-measures are used to capture parental health. Overall, we demonstrate a systematic association of parental health/disability with the non-cognitive skills development of adolescents living in the same household. However, considerable heterogeneity in these associations is observed between (and within) the mother's and father's health and disability measures. Much less evident is the link between parental health/disability and adolescents' mental distress. Our findings suggest that each parent's health and disability status may be differentially associated with adolescents' non-cognitive skills development. |
Keywords: | adolescents, biomarkers, mental distress, non-cognitive skills, parental health |
JEL: | I10 J24 C21 J12 |
Date: | 2024–08 |
URL: | https://d.repec.org/n?u=RePEc:iza:izadps:dp17239 |
By: | Richiardi, Matteo; Vella, Melchior |
Abstract: | This paper investigates the behavioural dynamics of the take-up of social benefits in the UK. Utilising data from the first nine waves (2010-2019) of the UK Household Longitudinal Study (UKHLS) and eligibility simulations based on the UKMOD tax-benefit calculator (UKHLS-UKMOD), the study finds that there is a significant state dependence effect once initial conditions and unobserved heterogeneity are considered. While economic factors are found to play an important role in explaining the take-up of social benefits, personality traits and cognitive skills do not exhibit a strong and direct influence on the take-up of social benefits. The study concludes by discussing policy implications. |
Date: | 2024–09–05 |
URL: | https://d.repec.org/n?u=RePEc:ese:cempwp:cempa6-24 |
By: | Kimberly Dadisman; Andre Nickow; Philip Oreopoulos |
Abstract: | Parenting is widely considered to be among the most important influences on early childhood (EC) development. But to what extent and under what circumstances can EC parenting programs improve child learning outcomes? While substantial progress has been made toward addressing these questions in recent years, there have been few attempts to systematically synthesize the evidence thus far with a view toward scaling and policy implications. This paper works toward filling this gap through a systematic review including both a quantitative meta-analysis and a detailed narrative analysis of randomized evaluations that test the impacts of EC parenting programs on learning outcomes. We find that these programs generate substantial effects across a wide range of contexts, and that the largest impacts are associated with programs that are conducted in low- or middle-income countries and that use curricula focusing on cognitive stimulation. Group parenting programs tend to yield effect sizes that are, on average, comparable to home visiting programs, typically at substantially lower costs. Qualitative analysis of evaluations of scaled interventions reveals that administrative implementation barriers rather than program ineffectiveness likely represent the primary impediment to stronger impact. We conclude by reflecting on implications for theory, policy, and priorities for future research. |
JEL: | I2 J13 |
Date: | 2024–09 |
URL: | https://d.repec.org/n?u=RePEc:nbr:nberwo:32959 |
By: | Lenin Arango-Castillo; Francisco J. Martínez-Ramírez; María José Orraca |
Abstract: | Persistence is the speed with which a time series returns to its mean after a shock. Although several measures of persistence have been proposed in the literature, when they are empirically applied, the different measures indicate incompatible messages, as they differ both in the level and the implied evolution of persistence. One plausible reason why persistence estimators may differ is the presence of data particularities such as trends, cycles, measurement errors, additive and temporary change outliers, and structural changes. To gauge the usefulness and robustness of different measures of persistence, we compare them in a univariate time series framework using Monte Carlo simulations. We consider nonparametric, semiparametric, and parametric time-domain and frequency-domain persistence estimators and investigate their performance under different anomalies found in practice. Our results indicate that the nonparametric method is, on average, less affected by the different types of time series anomalies analyzed in this work. |
Keywords: | Persistence;Monte-Carlo simulations;time series |
JEL: | C15 C53 C22 |
Date: | 2024–09 |
URL: | https://d.repec.org/n?u=RePEc:bdm:wpaper:2024-11 |
By: | Crick Lund (King’s College London); Kate Orkin (University of Oxford); Marc Witte (VU Amsterdam); John Walker (University of Oxford); Thandi Davies (University of Cape Town); Johannes Haushofer (Stockholm University); Sarah Murray (John Hopkins University); Judy Bass (John Hopkins University); Laura Murray (John Hopkins University); Wietse Tol (University of Copenhagen); Vikram Patel (Harvard University) |
Abstract: | Mental health conditions are prevalent but rarely treated in low- and middle-income countries (LMICs). Little is known about how these conditions affect economic participation. This paper shows that treating mental health conditions substantially improves recipients’ capacity to work in these contexts. First, we perform a systematic review and meta-analysis of all randomized controlled trials (RCTs) ever conducted that evaluate treatments for mental ill-health and measure economic outcomes in LMICs. On aver- age, treating common mental disorders like depression with psychotherapy improves an aggregate of labor market outcomes made up of employment, time spent working, capacity to work and job search by 0.16 standard deviations. Treating severe mental disorders, like schizophrenia, improves the aggregate by 0.30 standard deviations, but effects are noisily estimated. Second, we build a new dataset, pooling all available microdata from RCTs using the most common trial design: studies of psychotherapy in LMICs that treated depression and measured days participants were unable to work in the past month. We observe comparable treatment effects on mental health and work outcomes in this sub-sample of highly similar studies. We also show evidence consistent with mental health being the mechanism through which psychotherapy improves work outcomes. |
Keywords: | Labor, Development, Human capital, Mental health, Psychotherapy |
JEL: | D9 I14 J24 O1 |
Date: | 2024–06–20 |
URL: | https://d.repec.org/n?u=RePEc:tin:wpaper:20240043 |