Modeling Sustainable Economic Decisions Under Uncertainty: A Robust Optimization Framework via Nonlinear Scalarization
Abstract
1. Introduction
2. Materials and Methods
2.1. Statement and Interpretation of the Problem from the Economic Point of View
- , the set of weight vectors associated with very low-risk investments.
- , the set of admissible portfolios, reflecting feasible investment allocations.
- , a reference direction vector that represents the profile of profitable investments.
2.2. Optimization Under Uncertainty Using Nonlinear Scalarizing Functionals and Robustness Concepts
2.2.1. Formulation Optimization Problem with Nonlinear Scaling Functionals ()
2.2.2. Formulation of the Optimization Problem Under Uncertainty Using Concepts of Robustness ()
- OP = real-world optimization problem.
- = counterpart robust optimization problem.
- = the problem formulated with linear scalarizing functionals.
- OP (formulated with economic concepts) ↔ ⇔ ↔ OP (under uncertainty), or Financial Market ↔ F of ↔ constraints in
- Financial Market ↔ k of ↔ x of
2.2.3. Strict Robustness
2.2.4. Reliable Robustness
2.3. Case Studies
- -
- f (x,ξ) is the return associated with allocation x under scenario ξ.
- -
- μ (x,ξ) represents a risk measure associated with scenario ξ.
- -
- ε is the investor’s risk tolerance level.
- -
- F (x,ξ) ≥ 0, i.e., the feasibility constraint that must be satisfied in each scenario ξ of U, reflecting regulatory, budgetary, or structural requirements.
2.4. Equivalence with Classical Robust Optimization Paradigms
2.5. Guidelines for Parameter Selection
3. Results and Discussions
3.1. Empirical Validation of the Scalarization Framework
3.2. Practical Implications for Sustainable Economic Decision-Making
3.3. Computational Efficiency and Scalability Analysis
4. Conclusions and Future Work
4.1. Conceptual Contributions and Future Research Direction
4.2. Advantages and Limitations of the Scalarization-Based Framework
4.3. Implementation Challenges and Mitigation Strategies
- First, historical simulation and scenario bootstrapping can serve as viable tools to generate synthetic uncertainty sets, especially in markets with sufficient time series data.
- Second, stakeholder preferences can be elicited iteratively using multicriteria decision analysis (e.g., AHP, entropy weighting) or feedback loops embedded in decision-support systems.
- Third, empirical validation should be conducted using real portfolio data and stress-testing exercises to progressively calibrate the model and confirm its robustness under realistic constraints.
4.4. Behavioral Considerations and Future Extensions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Symbol | Description |
x ∈ ℝn | Decision variable vector representing the allocation of resources or portfolio weights |
fᵢ(x) | Objective function i, corresponding to a performance criterion (e.g., return, risk, liquidity) |
k ∈ ℝm | Direction vector representing stakeholder preferences in the objective space |
⊆ ℝm | Benchmark or reference set defining robustness requirements in the objective space |
) | Scalarization function measuring the performance of a solution y ∈ ℝm with respect to B and k |
μ(χ, ξ) | Scalar performance function evaluating the solution vector χ under a scenario realization ξ. It aggregates multiple criteria (e.g., return, risk, liquidity) into a single scalar value used in the optimization. |
S | Set of discrete uncertainty scenarios |
s ∈ S | A specific uncertainty scenario |
xs | Solution x evaluated under scenario s |
Uncertainty set or space of realizations considered in the optimization | |
Feasible set defined by the decision problem’s constraints | |
z ∈ ℝ | Scalarized objective value for a given solution |
DRO | Distributionally Robust Optimization—a model extension for handling continuous uncertainty |
Ambiguity set over probability distributions used in DRO formulation |
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Criterion | Strict Robustness | Adjustable Robustness | Distributionally Robust Optimization (DRO) | Scalarization-Based Robustness (Proposed) |
---|---|---|---|---|
Uncertainty Modeling | Deterministic sets | Deterministic with post-adjustment | Ambiguity sets over probability distributions | Directional scenario sets |
Adaptability | None | Partial (post-realization) | Moderate (distribution assumptions) | High (via directional preferences) |
Computational Tractability | High (but conservative) | Moderate to low (complex reformulations) | Moderate (depending on ambiguity set structure) | High (scalar projection simplifies problem) |
Interpretability | Low (hard constraints) | Moderate | Moderate | High (economically meaningful direction) |
Data Requirements | Minimal | Medium | High (distribution estimation needed) | Moderate (scenario-based, no probabilities) |
Behavioral Preference Integration | None | Limited | Implicit via distribution | Explicit via direction vector ‘k’ |
Suitability for Sustainability | Limited (overly conservative) | Context-dependent | High (if assumptions hold) | Very High (flexible + value-driven) |
Asset | Expected Return (%) | Standard Deviation (%) | Correlation with BTC | Correlation with ETH | Correlation with SOL | Correlation with BNB |
---|---|---|---|---|---|---|
BTC | 6.5 | 12.4 | 1.0 | 0.82 | 0.75 | 0.68 |
ETH | 5.8 | 11.7 | 0.82 | 1.0 | 0.77 | 0.72 |
SOL | 7.2 | 14.5 | 0.75 | 0.77 | 1.0 | 0.69 |
BNB | 6.1 | 10.9 | 0.68 | 0.72 | 0.69 | 1.0 |
Portfolio | (y) | ||
---|---|---|---|
P1 | 0.75 | ||
P2 | 0.95 | ||
P3 | 1.00 | ||
Scalarizing Functional Values | |||
Scenario | Portfolio P1 | Portfolio P2 | Portfolio P3 |
ξ1 | 0.08 | 0.06 | 0.05 |
ξ2 | 0.04 | 0.06 | 0.05 |
ξ3 | 0.03 | 0.05 | 0.04 |
ξ4 | −0.01 | 0.05 | 0.04 |
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Șerban, F.; Dedu, S. Modeling Sustainable Economic Decisions Under Uncertainty: A Robust Optimization Framework via Nonlinear Scalarization. Sustainability 2025, 17, 6157. https://doi.org/10.3390/su17136157
Șerban F, Dedu S. Modeling Sustainable Economic Decisions Under Uncertainty: A Robust Optimization Framework via Nonlinear Scalarization. Sustainability. 2025; 17(13):6157. https://doi.org/10.3390/su17136157
Chicago/Turabian StyleȘerban, Florentin, and Silvia Dedu. 2025. "Modeling Sustainable Economic Decisions Under Uncertainty: A Robust Optimization Framework via Nonlinear Scalarization" Sustainability 17, no. 13: 6157. https://doi.org/10.3390/su17136157
APA StyleȘerban, F., & Dedu, S. (2025). Modeling Sustainable Economic Decisions Under Uncertainty: A Robust Optimization Framework via Nonlinear Scalarization. Sustainability, 17(13), 6157. https://doi.org/10.3390/su17136157