Distributed Causality in the SDG Network: Evidence from Panel VAR and Conditional Independence Analysis
- URL: http://arxiv.org/abs/2601.20875v1
- Date: Mon, 19 Jan 2026 00:22:06 GMT
- Title: Distributed Causality in the SDG Network: Evidence from Panel VAR and Conditional Independence Analysis
- Authors: Md Muhtasim Munif Fahim, Md Jahid Hasan Imran, Luknath Debnath, Tonmoy Shill, Md. Naim Molla, Ehsanul Bashar Pranto, Md Shafin Sanyan Saad, Md Rezaul Karim,
- Abstract summary: Education to Inequality is identified as the most statistically significant direct relationship.<n>We offer a proposed tiered priority framework for the SDGs namely, identifying upstream drivers (Education, Growth), enabling goals (Institutions, Energy), and downstream outcomes (Poverty, Health)
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The achievement of the 2030 Sustainable Development Goals (SDGs) is dependent upon strategic resource distribution. We propose a causal discovery framework using Panel Vector Autoregression, along with both country-specific fixed effects and PCMCI+ conditional independence testing on 168 countries (2000-2025) to develop the first complete causal architecture of SDG dependencies. Utilizing 8 strategically chosen SDGs, we identify a distributed causal network (i.e., no single 'hub' SDG), with 10 statistically significant Granger-causal relationships identified as 11 unique direct effects. Education to Inequality is identified as the most statistically significant direct relationship (r = -0.599; p < 0.05), while effect magnitude significantly varies depending on income levels (e.g., high-income: r = -0.65; lower-middle-income: r = -0.06; non-significant). We also reject the idea that there exists a single 'keystone' SDG. Additionally, we offer a proposed tiered priority framework for the SDGs namely, identifying upstream drivers (Education, Growth), enabling goals (Institutions, Energy), and downstream outcomes (Poverty, Health). Therefore, we conclude that effective SDG acceleration can be accomplished through coordinated multi-dimensional intervention(s), and that single-goal sequential strategies are insufficient.
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