Design Of Hiring Algorithms Can Double Diversity In Firms

from Fast Company We know that algorithms can outperform humans across an expanding range of settings, from medical diagnosis and image recognition to crime prediction. However, an ongoing concern is the potential for automated approaches to codify existing human biases to the detriment of candidates from underrepresented groups. For example, hiring algorithms use information on workers they have previously hired in order to predict which job applicants they should now select. In many cases, relying on algorithms that predict future success based on past success will lead firms to favor applicants from groups that have traditionally been successful. But this […]

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