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insikt - Economic Development - # Time-to-Event Analysis of GDP per Capita Growth

Unveiling the Temporal Dynamics of Economic Convergence Across the Americas: A Survival Analysis Approach to GDP per Capita Trajectories


Centrala begrepp
This research examines the temporal dynamics associated with attaining a 5% rise in purchasing power parity-adjusted GDP per capita across 33 American countries over a 120-month period, leveraging survival analysis and machine learning techniques to uncover the complex interplay of vulnerabilities, risks, and capabilities influencing economic convergence.
Sammanfattning

This comprehensive study investigates the temporal dynamics of economic development across 33 countries in the Americas, focusing on the time required for each country to achieve a 5% increase in GDP per capita at purchasing power parity (PIBpcPPP) within a 120-month period.

The key highlights and insights are:

  1. Survival Analysis Approach: The research adopts a nuanced survival analysis approach, incorporating both right-censored data (9 countries) and countries that reached the 5% GDP per capita target within the 120-month timeframe (24 countries). This allows for a thorough examination of the complex temporal dynamics involved in economic convergence.

  2. Multidimensional Vulnerability Assessment: The study incorporates a comprehensive set of variables, including natural, commercial, financial, and endogenous risks, as well as inherent vulnerabilities, vulnerabilities in companies and households, and state and social cohesion capabilities. This multidimensional assessment provides valuable insights into the factors influencing the time required to reach the GDP per capita target.

  3. Model Comparison: The research evaluates the performance of various machine learning survival models, including Cox, Kernel SVM, DeepSurv, Survival Random Forest, and MTLR, using the concordance index (C-index) as the key metric. The findings highlight the superior performance of the DeepSurv model in capturing non-linear interactions and effectively managing datasets with bidirectional censoring.

  4. Economic Implications: The weight matrix analysis offers nuanced insights into the economic implications of risks, vulnerabilities, and capabilities. It suggests that a balanced approach to risk-taking, strategic vulnerability reduction, and investment in governmental and social capacities are crucial for countries to meet their GDP per capita objectives.

  5. Policy Recommendations: The research emphasizes the need for individualized policy approaches that consider the complex dynamics at play, addressing vulnerabilities, leveraging strengths, and adapting strategies to the specific economic and social landscape of each country.

Overall, this study contributes to the literature on survival analysis in finance and economics, providing valuable insights into the temporal aspects of economic development and informing policymakers in their efforts to expedite and sustain economic growth across the Americas.

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Statistik
Vul_Inherent: 0.07718029 to 0.01124327 Vul_Companies: 0.0124 to 0.1109 Vul_Homes: -0.0676 to -0.0191 Social_Cohesion_Capabilities: -0.009647651
Citat
"The weight matrix provides valuable insights, but strategic decision-making requires a nuanced understanding of the interplay between risks, vulnerabilities, capabilities, and the broader economic context." "Countries aspiring to reach the GDP per capita target should approach their policies with a careful balance, addressing vulnerabilities, leveraging strengths, and adapting strategies to their specific economic and social landscape."

Viktiga insikter från

by Diego Vallar... arxiv.org 04-09-2024

https://arxiv.org/pdf/2404.04282.pdf
Analyzing Economic Convergence Across the Americas

Djupare frågor

How can policymakers effectively incorporate the insights from survival analysis and machine learning models into their decision-making processes to accelerate economic convergence across the Americas?

Policymakers can effectively incorporate the insights from survival analysis and machine learning models by first understanding the key variables and risks influencing economic growth trajectories. By leveraging advanced statistical techniques such as survival analysis, policymakers can gain a comprehensive understanding of the temporal dynamics associated with achieving specific economic targets. Machine learning models, particularly DeepSurv, can help capture non-linear interactions and provide accurate predictions for time-to-event data, such as reaching a 5% increase in GDP per capita at purchasing power parity (PIBpcPPP) within a specified timeframe. To accelerate economic convergence, policymakers should use the findings from these models to develop tailored strategies that address vulnerabilities, risks, and capacities specific to each country. By focusing on a balanced approach to risk-taking, strategic vulnerability reduction, and investment in governmental capacities and social cohesiveness, policymakers can make informed decisions that promote sustainable economic growth. Additionally, incorporating policy guidelines that consider the complex dynamics at play will ensure that interventions are targeted and effective in driving economic convergence across the Americas.

What are the potential trade-offs and unintended consequences of the policy recommendations suggested in the study, and how can they be mitigated?

The policy recommendations suggested in the study, such as balancing risks and rewards, addressing vulnerabilities strategically, and investing in capabilities, may have potential trade-offs and unintended consequences. For example, while calculated risk-taking is essential for economic development, excessive exposure to risks could lead to financial instability or market downturns. Similarly, focusing on vulnerabilities in specific sectors or institutions may inadvertently neglect other critical areas that also require attention. To mitigate these potential trade-offs and unintended consequences, policymakers should adopt a holistic approach that considers the interconnected nature of economic factors. By conducting thorough impact assessments and scenario analyses, policymakers can anticipate and address any unintended consequences of their policy interventions. Additionally, engaging with stakeholders, experts, and affected communities can provide valuable insights and perspectives that may not have been initially considered. Flexibility in policy implementation and a willingness to adapt strategies based on feedback and evolving circumstances can also help mitigate risks and ensure positive outcomes.

Given the complex and interconnected nature of the factors influencing economic development, how can a holistic, systems-level approach be adopted to foster sustainable and equitable growth across the region?

A holistic, systems-level approach to fostering sustainable and equitable growth across the region involves understanding the interdependencies and feedback loops between various economic factors. Policymakers can adopt the following strategies to implement such an approach: Integrated Policy Framework: Develop an integrated policy framework that considers the social, environmental, and economic dimensions of development. This framework should prioritize sustainability, inclusivity, and resilience in economic decision-making. Stakeholder Engagement: Engage with a diverse range of stakeholders, including government agencies, businesses, civil society organizations, and local communities, to ensure that policies are inclusive and address the needs of all segments of society. Data-Driven Decision-Making: Utilize data analytics, including survival analysis and machine learning models, to inform evidence-based policy decisions. By analyzing data on vulnerabilities, risks, and capacities, policymakers can identify areas for intervention and measure the impact of policy measures. Cross-Sector Collaboration: Foster collaboration across different sectors, such as finance, healthcare, education, and infrastructure, to address systemic challenges and promote integrated solutions to complex problems. Monitoring and Evaluation: Implement robust monitoring and evaluation mechanisms to track the progress of policy interventions and adjust strategies as needed. Regular assessments of the impact of policies on economic convergence will help ensure that goals are being met effectively. By adopting a holistic, systems-level approach that considers the interconnected nature of economic development factors, policymakers can create a more sustainable and equitable growth trajectory for the region.
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