Enhancing the quality of AI requires moving beyond the quantitative

Artificial Intelligence engineers should enlist ideas and expertise from a broad range of social science disciplines, including those embracing qualitative methods, in order to reduce the potential harm of their creations and to better serve society as a whole, a pair of researchers has concluded in an analysis that appears in the journal Nature Machine Intelligence.

5 mentions: @SpirosMargaris@CapgeminiIndia@AINewsAlliance@loracmustaine@AI_Thinking
Date: 2019/08/13 08:16

Referring Tweets

@SpirosMargaris Enhancing the quality of #AI requires moving beyond the #quantitative https://t.co/dvKY662Iy9 #fintech #insurtech #ArtificialIntelligence #MachineLearning #DeepLearning @TechXplore_com @nyuniversity @ipfconline1 @antgrasso @YuHelenYu @diioannid @Paula_Piccard @Ronald_vanLoon https://t.co/OkXjeWILtc
@CapgeminiIndia How can inclusion of social sciences in #ArtificialIntelligence benefit qualitative social research? Find out here: https://t.co/lb09FbDOat #LatestInTech
@AINewsAlliance Enhancing the quality of AI requires moving beyond the quantitative https://t.co/ZExRyFfKdx via @techxplore_com @AINewsAlliance #AI #ArtificialIntelligence #BlockChain #Breaking #Intelligence #MachineLearning #MachineIntelligence