MIT Sloan Management Review Article on The Risk of Machine-Learning Bias (and How to Prevent It)

  • 6m
  • Chris DeBrusk
  • MIT Sloan Management Review
  • 2020

As promising as machine-learning technology is, it can also be susceptible to unintended biases that require careful planning to avoid.

Many companies are turning to machine learning to review vast amounts of data, from evaluating credit for loan applications, to scanning legal contracts for errors, to looking through employee communications with customers to identify bad conduct. New tools allow developers to build and deploy machine-learning engines more easily than ever: Amazon Web Services Inc. recently launched a “machine learning in a box” offering called SageMaker, which non-engineers can leverage to build sophisticated machine-learning models, and Microsoft Azure’s machine-learning platform, Machine Learning Studio, doesn’t require coding.

In this Book

  • MIT Sloan Management Review Article on The Risk of Machine-Learning Bias (and How to Prevent It)