Translation, Tracks and Data: An Algorithmic Bias Effort in Practice

Potential negative outcomes of machine learning and algorithmic bias have gained deserved attention.However, there are still relatively few standard processes to assess and address algorithmic biasesin industry practice. Practical tools that integrate into engineers’ workflows are needed. As a case study, we present two tooling efforts to create tools for teams in practice to address algorithmic bias. Both intend to increase understanding of data, models, and outcome measurement decisions.We describe the development of 1) a prototype checklist based on existing literature frameworks; and 2) dashboarding for quantitatively assessing outcomes at scale. We share both technical andorganizational lessons learned on checklist perceptions, data challenges and interpretation pitfalls.

Focus: Bias
Source: CHI 2019
Readability: Expert
Type: PDF Article
Open Source: No
Keywords: Algorithmic bias, algorithmic accountability, bias and data checklist, industry practice
Learn Tags: Bias Data Collection/Data Set Framework AI and Machine Learning
Summary: A case study on lessons on addressing algorithmic bias, including the development of a bias checklist and dashboarding and data efforts for auditing.