Ethical considerations in decision-making

Demystifying Decision Science

Akshay Swaminathan

PD Soros Fellow at Stanford University School of Medicine

The responsibility of Data Science

  • Data Science empowers decisions across industries

  • Ethical use is essential for trust and fairness

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Demystifying Decision Science

Case Study: Optum

  • Optum's algorithm unintentionally favored healthier patients

    • Designed to predict care needs, it prioritized those with higher healthcare spending
  • Bias emerged from flawed data assumptions

    • Using spending as a proxy for need led to racial disparities, disadvantaging those with less access to care

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Demystifying Decision Science

Fairness

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Privacy and security

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Transparency and reproducibility

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The social impact of data

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Demystifying Decision Science

Bias in machine learning models

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Bias in = Bias out

  • Machine learning models reflect the biases and gaps in the data they are trained on

 

Fairness can be measured

  • Evaluate model performance across different groups to assess fairness
Demystifying Decision Science

Protecting data

Decision scientists and organizations must ensure secure and responsible data handling

Involves:

  • Secure infrastructure with updated protections
  • Restricted access: only minimum data needed per role
  • Consent-based data collection for personal data

Why it matters:

  • Breaches reduce trust
  • Can lead to lawsuits
  • Damage reputation and profitability

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Demystifying Decision Science

Transparency

 

Ensures clarity and accountability

  • Report data sources, cleaning steps, analysis methods, collected metrics, and uncertainty levels

Reproducibility

 

Reproducibility builds trust and credibility

  • Others should be able to repeat the analysis with the same data and methods and get the same results
Demystifying Decision Science

Ethics at the heart of decision science

Ethical considerations are integral to responsible decision science

  • Ethics is not optional - it's essential
  • Prioritize fairness, justice, and benefit
  • Apply ethical principles across the data lifecycle

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Demystifying Decision Science

Let's practice!

Demystifying Decision Science

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