Chris Lam

Founder and CEO


Curriculum vitae


Epistamai, Inc.

Apex, NC



A Systems Thinking Approach to Algorithmic Fairness


Working paper


Chris Lam
2025

Arxiv
Cite

Cite

APA   Click to copy
Lam, C. (2025). A Systems Thinking Approach to Algorithmic Fairness.


Chicago/Turabian   Click to copy
Lam, Chris. “A Systems Thinking Approach to Algorithmic Fairness,” 2025.


MLA   Click to copy
Lam, Chris. A Systems Thinking Approach to Algorithmic Fairness. 2025.


BibTeX   Click to copy

@misc{lam2025a,
  title = {A Systems Thinking Approach to Algorithmic Fairness},
  year = {2025},
  author = {Lam, Chris}
}

Systems thinking provides us with a way to model the algorithmic fairness problem by allowing us to encode prior knowledge and assumptions about where we believe bias might exist in the data generating process. We can then encode these beliefs as a series of causal graphs, enabling us to link AI/ML systems to politics and the law. This allows us to combine techniques from machine learning, causal inference, and system dynamics in order to capture different emergent aspects of the fairness problem. We can use systems thinking to help policymakers on both sides of the political aisle to understand the complex trade-offs that exist from different types of fairness policies, providing a sociotechnical foundation for designing AI policy that is aligned to their political agendas and with society's values.


Tools
Translate to