Search Results for author: Boris Glavic

Found 2 papers, 0 papers with code

Interpretable Data-Based Explanations for Fairness Debugging

no code implementations17 Dec 2021 Romila Pradhan, Jiongli Zhu, Boris Glavic, Babak Salimi

We introduce Gopher, a system that produces compact, interpretable and causal explanations for bias or unexpected model behavior by identifying coherent subsets of the training data that are root-causes for this behavior.

BIG-bench Machine Learning Explainable artificial intelligence +2

Efficient Uncertainty Tracking for Complex Queries with Attribute-level Bounds (extended version)

no code implementations23 Feb 2021 Su Feng, Aaron Huber, Boris Glavic, Oliver Kennedy

In this paper, we introduce attribute-annotated uncertain databases (AU-DBs) which extend the UA-DB model with attribute-level annotations that record bounds on the values of an attribute across all possible worlds.

Databases

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