Search Results for author: Samuel Sharpe

Found 5 papers, 2 papers with code

Counterfactual Explanations via Latent Space Projection and Interpolation

no code implementations2 Dec 2021 Brian Barr, Matthew R. Harrington, Samuel Sharpe, C. Bayan Bruss

Counterfactual explanations represent the minimal change to a data sample that alters its predicted classification, typically from an unfavorable initial class to a desired target class.

Binary Classification counterfactual

Dynamic Customer Embeddings for Financial Service Applications

no code implementations22 Jun 2021 Nima Chitsazan, Samuel Sharpe, Dwipam Katariya, Qianyu Cheng, Karthik Rajasethupathy

As financial services (FS) companies have experienced drastic technology driven changes, the availability of new data streams provides the opportunity for more comprehensive customer understanding.

Latent-CF: A Simple Baseline for Reverse Counterfactual Explanations

no code implementations16 Dec 2020 Rachana Balasubramanian, Samuel Sharpe, Brian Barr, Jason Wittenbach, C. Bayan Bruss

In the environment of fair lending laws and the General Data Protection Regulation (GDPR), the ability to explain a model's prediction is of paramount importance.

counterfactual Fairness

Visual Natural Language Query Auto-Completion for Estimating Instance Probabilities

1 code implementation10 Oct 2019 Samuel Sharpe, Jin Yan, Fan Wu, Iddo Drori

Given the complete query, we fine tune a BERT embedding for estimating probabilities of a broad set of instances.

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