Transparency reports make AI decision-making accountable
Machine-learning algorithms increasingly make decisions about credit, medical diagnoses, personalized recommendations, advertising and job opportunities, among other things, but exactly how usually remains a mystery. Now, new measurement methods developed by Carnegie Mellon University researchers could provide important insights to this process. Was it a person's age, gender or education level that had the most influence on a decision? Was it a particular combination of factors? CMU's Quantitative Input Influence (QII) measures can provide the relative weight of each factor in the final decision, said Anupam Datta, associate professor of computer science and electrical and computer engineering.
Jun-1-2016
- Country:
- North America > United States
- Texas (0.05)
- Pennsylvania (0.05)
- Ohio (0.05)
- California > Santa Clara County
- San Jose (0.05)
- North America > United States
- Industry:
- Law (0.55)
- Health & Medicine (0.54)
- Government (0.52)
- Technology: