Search Results for author: Carolyn Kim

Found 4 papers, 0 papers with code

Recommendation on a Budget: Column Space Recovery from Partially Observed Entries with Random or Active Sampling

no code implementations26 Feb 2020 Carolyn Kim, Mohsen Bayati

We analyze alternating minimization for column space recovery of a partially observed, approximately low rank matrix with a growing number of columns and a fixed budget of observations per column.

Learning Interpretable Models with Causal Guarantees

no code implementations24 Jan 2019 Carolyn Kim, Osbert Bastani

We propose a framework for learning interpretable models from observational data that can be used to predict individual treatment effects (ITEs).

BIG-bench Machine Learning Decision Making

Interpretability via Model Extraction

no code implementations29 Jun 2017 Osbert Bastani, Carolyn Kim, Hamsa Bastani

The ability to interpret machine learning models has become increasingly important now that machine learning is used to inform consequential decisions.

BIG-bench Machine Learning Model extraction +2

Interpreting Blackbox Models via Model Extraction

no code implementations23 May 2017 Osbert Bastani, Carolyn Kim, Hamsa Bastani

Interpretability has become incredibly important as machine learning is increasingly used to inform consequential decisions.

Model extraction

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