reportOct 6, 2020GOLD OA
Interpretable machine learning
POParliamentary Office of Science and TechnologyLCLorna Christie
Indexed incrossref
Abstract
Machine learning (ML, a type of artificial intelligence) is increasingly being used to support decision making in a variety of applications including recruitment and clinical diagnoses. While ML has many advantages, there are concerns that in some cases it may not be possible to explain completely how its outputs have been produced. This POSTnote gives an overview of ML and its role in decision-making. It examines the challenges of understanding how a complex ML system has reached its output, and some of the technical approaches to making ML easier to interpret. It also gives a brief overview of some of the proposed tools for making ML systems more accountable.
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Authors
2- POParliamentary Office of Science and TechnologyCorresponding
- LCLorna Christie
Topics & keywords
Keywords
- Artificial intelligence
- Computer science
- Machine learning
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