The Right Tool for the Job: Open-Source Auditing Tools in Machine Learning
Cherie M Poland

TL;DR
This paper emphasizes the importance of using open-source auditing tools in machine learning to promote fairness, accountability, and transparency, highlighting available tools and advocating for their broader adoption across the AI community.
Contribution
It provides an overview of open-source auditing tools, discusses their significance, and motivates increased use to improve fairness and accountability in machine learning.
Findings
Many open-source auditing tools are available for ML fairness assessment
Awareness and usage of these tools are limited among practitioners
Using these tools can enhance fairness and accountability in AI systems
Abstract
In recent years, discussions about fairness in machine learning, AI ethics and algorithm audits have increased. Many entities have developed framework guidance to establish a baseline rubric for fairness and accountability. However, in spite of increased discussions and multiple frameworks, algorithm and data auditing still remain difficult to execute in practice. Many open-source auditing tools are available, but users aren't always aware of the tools, what they are useful for, or how to access them. Model auditing and evaluation are not frequently emphasized skills in machine learning. There are also legal reasons for the proactive adoption of these tools that extend beyond the desire for greater fairness in machine learning. There are positive social issues of public perception and goodwill that matter in our highly connected global society. Greater awareness of these tools and the…
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Taxonomy
TopicsEthics and Social Impacts of AI · Adversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI)
MethodsAttentive Walk-Aggregating Graph Neural Network
