Short- and Long-Term Assessments of ESG Risk in Mexican Mortgage Institutions: Combining Expert Surveys, Radar Plot Visualization, and Cluster Analysis
Abstract
:1. Introduction
2. Literature Review on ESG Risk Measurement Frameworks and Applications in the Mortgage Sector
2.1. ESG Heterogeneity
- (a)
- The European Union’s Green Taxonomy provides a detailed framework for defining environmentally sustainable activities, especially in the energy, transport, and building sectors. In addition, it prescribes minimum standards for green mortgages, focusing on building energy performance and environmental goals [19]. This is a good example of regulatory coherence regarding standards for sustainable home finance.
- (b)
- The European Sustainable Finance Disclosure Regulation (ESFDR) requires that financial institutions disclose information about the ESG risks involved in their investments, promoting accountability and transparency, as stated in [20,21]. This regulation is expected to trigger similar developments in the Mexican mortgage sector, ultimately improving governance and disclosure standards.
- (c)
- The United Nations Principles for Responsible Investment (UNPRI) encourage financial institutions worldwide to integrate ESG principles into investment decision making. These guidelines apply to mortgage institutions addressing housing finance risks, including equal credit access and climate resilience [22].
- (d)
- Japan’s Green Building Program (JGBP) provides incentives such as grants and low-interest loans for energy-efficient construction, demonstrating how financial mechanisms can promote sustainable housing practices [23].
- (e)
- The United States has seen increased green bond issuance for energy-efficient housing projects, with agencies such as Fannie Mae integrating ESG into mortgage-backed securities, setting precedents for linking financial products to sustainability goals [24].
- (f)
- Brazil has launched ESG-themed credit products for sustainable agriculture and housing initiatives meeting social equality and environmental resilience requirements, emphasizing the need for regionally prioritized ESG frameworks [25].
2.2. Mortgage Sector Financing and ESG Integration
2.3. Comparative Analysis of ESG Risk Assessment Methodologies
- (a)
- Task Force on Climate-Related Financial Disclosures (TCFD) Framework: This proposal follows the guidelines provided by the TCFD for disclosing climate-related financial risks, specifically physical and transition risks [5]. The proposed methodology is complemented by explicitly including governance and social risks and adapting impact categories to suit Mexican mortgage market conditions. While the TCFD recommends impact analyses across uncertain time horizons, the dual-horizon framework sets clear temporal boundaries (2 and 10 years) to foster consistent evaluations.
- (b)
- United Nations Environment Program Finance Initiative (UNEPFI) Methodology: The UNEPFI laid a framework for financial institutions to address climate risks and opportunities in their lending decisions effectively, as stated in [6]. The proposed methodology aligns with this framework but includes additional elements beyond climate considerations, including social and governance elements, and it utilizes radar plot visualizations to improve the interpretation of complex results. Moreover, while the UNEPFI mainly focuses on the portfolio level for impact, the proposed methodology evaluates risks across different operating dimensions, including financial, operational, regulatory, and reputational elements.
- (c)
- Models for Climate Stress Testing in Mortgage Lending: The current research builds on and extends previous foundational research related to climate stress testing models in mortgage finance based on significant contributions from [30,33]. While current models have focused mainly on physical and transition risks related to individual properties and entire portfolios, the proposed methodology integrates social and governance considerations relevant to the Mexican market, namely, housing affordability and compliance with regulatory requirements. Extending the range of issues considered allows for integrated consideration of sustainability risks in emerging markets.
- (d)
- Commercial ESG frameworks: The proposed methodology shows several valuable differences from traditional commercial ESG rating systems, including MSCI ESG and Sustainalytics [34]. While these conventional systems primarily compare a company’s past or existing performance with predefined benchmarks, the dual-horizon methodology takes a forward-looking stance, incorporating projections about likely changes to these risks over time.
3. ESG Risk Landscape in the Mexican Mortgage Sector
4. Data and ESG Risk Score Structure
4.1. ESG Risk Score and the Dual-Horizon Structure
- I.
- Environmental risks (t = −9.993, p < 0.001);
- II.
- Social risks (t = −11.075, p < 0.001);
- III.
- Governance risks (t = −9.145, p < 0.001).
- I.
- Governance: 0.983;
- II.
- Social: 0.964;
- III.
- Environmental: 0.930.
4.2. Radial Plot of ESG Risk Scores
4.3. The Dual-Horizon ESG Risk Assessment Framework
- (a)
- Well-ordered assessment frameworks have important practical implications for mortgage institutions and regulating bodies. They set a consistent benchmark for decision making and provide strategies for reducing risk;
- (b)
- The framework enables the recognition and prioritization of the most significant ESG risks in different operational areas and time horizons;
- (c)
- Strategic planning: classifying risks as short-term and long-term allows for proper strategic planning and resource distribution;
- (d)
- Complying with regulations: since there is no standardized ESG metric, a proper ESG risk tool allows organizations to adapt proactively to evolving regulatory scenarios;
- (e)
- Stakeholder engagement: radar plot visualization easily communicates complex ESG risk analyses to stakeholders.
4.4. ESG Risk Score Clustering Analysis
5. Discussion of the Results
5.1. ESG Risk Assessment Results
5.2. Expert Variability Analysis
5.3. Policy and Operation Implications
5.4. Methodological Limitations
5.5. Synchronizing Dual-Horizon ESG
- (1)
- Implementation of a transition program that systematically structures initiatives from initial compliance through progressive positioning to sustainable practices;
- (2)
- Implementation of strategies that bridge short-term performance measures with long-term sustainability outcomes for resource allocation into different temporal priorities.
5.6. Technological Solutions
5.7. Stakeholders’ Perspectives
5.8. Cluster Analysis of Expert Assessment Patterns
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Risk Description | Examples of Risk Impact |
---|---|
Climate change is expected to increase the severity and frequency of extreme physical events (hurricanes, floods, droughts, wildfires, water stress, heat waves, etc.) that may affect families’ assets, public infrastructure, and companies’ operational capacity. |
|
Climate change generates transition risks due to the regulatory, technological, and consumption pattern changes necessary for the world to shift toward low-emission CO2. |
|
There are no product offerings that promote the construction (or retrofitting) of energy-efficient and climate-resilient housing in the local area. |
|
Evaluation of ecological hazards relating to the homebuilding supply chain. Land-use changes threaten climate adaptation strategies and may disrupt ecosystem services, potentially leading to species extinction or population decline through direct and indirect pathways. Construction inputs contribute significantly to CO2 emissions; the sector is also energy- and transportation-intensive; investors and regulators increasingly demand decarbonization plans, compliance with standards, and disclosure requirements. The construction sector may generate hazardous waste and/or components and fail to dispose of them appropriately. |
|
The institution’s operations rely on excessive water, electricity, paper, and fuel use. There are clear opportunities to improve. |
|
Risk Description | Examples of Risk Impact |
---|---|
Affordability of the offered credit products. |
|
Deficiencies in public safety conditions, access to education, employment, health, and housing transportation lead to defaults, abandonment, or forced migrations. |
|
The mortgage product portfolio does not cover all the needs of beneficiaries, especially groups without formal labor relations under Social Security (domestic workers, self-employed, etc.). |
|
Lack of consideration for the needs and rights of indigenous and vulnerable groups in credit allocation. |
|
Receiving recommendations and reconciliation proposals from the National Human Rights Commission if the institution does not respect recognized human rights and the UN Guiding Principles. |
|
Social megatrends impact the composition of the workforce and the reach of social security (demographic changes, health, longevity, automation and artificial intelligence, mass migration, and globalization, among others). |
|
Exposure to social risks in the value chain:
|
|
Risk Description | Examples of Risk Impact |
---|---|
Affordability of the offered credit products. |
|
Lack of knowledge/experience/diversity within governing bodies that prevents them from acting as informed and active members, hindering effective oversight and accountability within the institution. |
|
Absence of effective mechanisms and communication channels for stakeholders to freely communicate their concerns about illegal or unethical practices to the Board of Directors and/or competent authorities. |
|
|
|
Lack of adequate measures and controls to manage and mitigate information security risks within the institutional governance framework. |
|
|
|
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Dimension | Category | Score |
---|---|---|
) | Minor | 0.20 |
Low | 0.40 | |
Moderate | 0.60 | |
High | 0.80 | |
Critical | 1.00 | |
) | Never | 0.00 |
Once | 0.25 | |
Twice | 0.50 | |
Three times | 0.75 | |
Four or more times | 1.00 | |
The relevance of the impact | No impact | 0.00 |
Minimal impact | 0.25 | |
Significant impact | 0.50 | |
Urgent | 0.75 | |
Critical | 1.00 |
Type of Impact | Quantification | Thresholds | Likert Scale |
---|---|---|---|
Financial | * Minor: MXN 1–99,999 | Minor: 0.2 | |
Low: MXN 100,000–999,999 | Low: 0.4 | ||
Moderate: MXN 1M–24.9M | Moderate: 0.6 | ||
High: MXN 25M–99.9M | High: 0.8 | ||
Critical: MXN 100M+ | Critical: 1 | ||
Operational | Minor: 0.2 | Minor: 0.2 | |
Low: 0.4 | Low: 0.4 | ||
Moderate: 0.6 | Moderate: 0.6 | ||
High: 0.8 | High: 0.8 | ||
Critical: 1 | Critical: 1 | ||
Regulatory | ** Minor: MXN 1–738,3800.2 | Minor: 0.2 | |
Low: MXN 738,381–1,476,760 | Low: 0.4 | ||
Moderate: MXN 1,476,761–2,215,140 | Moderate: 0.6 | ||
High: MXN 2,215,141–2,953,520 | High: 0.8 | ||
Critical: MXN 2,953,521+ | Critical: 1 | ||
Reputational | No impact | Minor: 0.2 | |
<25% impact | Low: 0.4 | ||
>25% impact | Moderate: 0.6 | ||
>50% impact | High: 0.8 | ||
>75% impact | Critical: 1 | ||
Probability (applied to all impact types) | Frequency of occurrence within the assessment period | 0 times | Never: 0 |
1 time | Once 0.25 | ||
2 times | Twice: 0.50 | ||
3 times | Three times: 0.75 | ||
4 or more times | Four or more: 1.0 |
Risk Type | ICC3k | F | df1 | df2 | p-Value | 95% CI |
---|---|---|---|---|---|---|
Environmental | 0.7356 | 3.7820 | 4 | 44 | 0.010 | [0.18, 0.97] |
Social | 0.7332 | 3.7478 | 6 | 66 | 0.003 | [0.30, 0.95] |
Governance | 0.7384 | 3.8224 | 4 | 44 | 0.009 | [0.19, 0.97] |
Expert | Institutional Affiliation | Years of Experience | Expertise |
---|---|---|---|
E.1 | Public mortgage | 18 | Risk evaluation, housing credit |
E.2 | Regulatory agency | 20 | Risk governance, compliance |
E.3 | Development bank & SOFOM * | 10 | Sustainable lending, credit risk |
E.4 | Commercial bank | 11 | Credit modeling, ESG policy integration |
E.5 | Technology (Data provider) | 12 | ESG systems, operational risk |
E.6 | Independent ESG consultant | 14 | Sustainability benchmarking, ESG scoring |
E.7 | ESG modeling (Research firm) | 13 | Climate risk modeling |
E.8 | Urban housing policy agency | 16 | Housing policy, impact assessment |
E.9 | Oversight & auditing body | 19 | Institutional risk auditing |
E.10 | Development bank | 13 | ESG financing frameworks |
E.11 | Commercial bank | 12 | Mortgage ESG implementation |
E.12 | Regulatory agency | 11 | Financial supervision, ESG policy |
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Jiménez-Preciado, A.L.; Martínez-García, M.Á.; Trejo-García, J.C.; Venegas-Martínez, F. Short- and Long-Term Assessments of ESG Risk in Mexican Mortgage Institutions: Combining Expert Surveys, Radar Plot Visualization, and Cluster Analysis. Sustainability 2025, 17, 5616. https://doi.org/10.3390/su17125616
Jiménez-Preciado AL, Martínez-García MÁ, Trejo-García JC, Venegas-Martínez F. Short- and Long-Term Assessments of ESG Risk in Mexican Mortgage Institutions: Combining Expert Surveys, Radar Plot Visualization, and Cluster Analysis. Sustainability. 2025; 17(12):5616. https://doi.org/10.3390/su17125616
Chicago/Turabian StyleJiménez-Preciado, Ana Lorena, Miguel Ángel Martínez-García, José Carlos Trejo-García, and Francisco Venegas-Martínez. 2025. "Short- and Long-Term Assessments of ESG Risk in Mexican Mortgage Institutions: Combining Expert Surveys, Radar Plot Visualization, and Cluster Analysis" Sustainability 17, no. 12: 5616. https://doi.org/10.3390/su17125616
APA StyleJiménez-Preciado, A. L., Martínez-García, M. Á., Trejo-García, J. C., & Venegas-Martínez, F. (2025). Short- and Long-Term Assessments of ESG Risk in Mexican Mortgage Institutions: Combining Expert Surveys, Radar Plot Visualization, and Cluster Analysis. Sustainability, 17(12), 5616. https://doi.org/10.3390/su17125616