Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Conscientious Classification: A Data Scientist's Guide to Discrimination-Aware Classification

About

Recent research has helped to cultivate growing awareness that machine learning systems fueled by big data can create or exacerbate troubling disparities in society. Much of this research comes from outside of the practicing data science community, leaving its members with little concrete guidance to proactively address these concerns. This article introduces issues of discrimination to the data science community on its own terms. In it, we tour the familiar data mining process while providing a taxonomy of common practices that have the potential to produce unintended discrimination. We also survey how discrimination is commonly measured, and suggest how familiar development processes can be augmented to mitigate systems' discriminatory potential. We advocate that data scientists should be intentional about modeling and reducing discriminatory outcomes. Without doing so, their efforts will result in perpetuating any systemic discrimination that may exist, but under a misleading veil of data-driven objectivity.

Brian d'Alessandro, Cathy O'Neil, Tom LaGatta• 2019

Related benchmarks

TaskDatasetResultRank
Human mobility generationSingapore (test)
Individual Score0.7927
11
Trajectory GenerationSingapore (test)
Score3.8276
11
Human mobility generationMontreal (test)
Individual Score1.7984
11
Transaction Synthesise-commerce transactions
R1 Recall2.1
10
Tabular Data SynthesisE-commerce transaction dataset
JSD (v_A, v_G, v_C)0.133
9
Synthetic Data GenerationE-commerce transaction dataset
Rejection Rate (%)4.8
9
Showing 6 of 6 rows

Other info

Follow for update