Publication | Open Access
A Framework for Understanding Sources of Harm throughout the Machine Learning Life Cycle
84
Citations
55
References
2021
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningMachine Learning ToolSafety ScienceAi SafetyMl Life CycleCausal InferenceResponsible AiData ScienceData MiningDownstream HarmAdversarial Machine LearningAi Safety EducationCognitive ScienceMachine Learning ModelPredictive AnalyticsKnowledge DiscoveryComputer ScienceTrustworthy AiUnderstanding SourcesModel MaintenanceBig Data
As machine learning (ML) increasingly affects people and society, awareness of its potential unwanted consequences has also grown. To anticipate, prevent, and mitigate undesirable downstream consequences, it is critical that we understand when and how harm might be introduced throughout the ML life cycle. In this paper, we provide a framework that identifies seven distinct potential sources of downstream harm in machine learning, spanning data collection, development, and deployment. In doing so, we aim to facilitate more productive and precise communication around these issues, as well as more direct, application-grounded ways to mitigate them.
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