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Responsible Data Science Lab at Purdue

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Responsible Data Science Lab at Purdue

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raw text

Responsible Data Science Lab at Purdue Toggle navigation about (current) publications group Dr. Romila Pradhan Members research publications CNIT 581-RDM Responsible Data Science Lab at Purdue We study problems at the intersection of data management and machine learning to build trustworthy and responsible decision-making systems. Our aim is to develop systems that enable explainability, fairness, and accountability of data-driven decision-making systems. We are particularly interested in: Explaining and debugging fairness violations in machine learning models and data science pipelines: How can we determine sources of unexpected errors and bias in machine learning model outcomes? How can we decompose unexpected or discriminatory behavior of data science pipelines in terms of the different pipeline stages? Can we effectively generate post hoc explanations for the outcomes of machine learning models? Data integration and data quality: How can we lever...

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