False Positives Are a True Negative: Using Machine Learning to Improve Accuracy
Machine learning has grown to be one of the most popular and powerful tools in the quest to secure systems. Some approaches to machine learning have yielded overly aggressive models that demonstrate remarkable predictive accuracy, yet give way to false positives. False positives create negative user experiences that prevent new protection from deploying.
Machine Learning, Artificial Intelligence, and Deep Learning News around the world. We publish the latest developments and advances in these fields.
Friday, September 29, 2017
False Positives Are a True Negative: Using Machine Learning to Improve Accuracy
Subscribe to:
Post Comments (Atom)
No comments:
Post a Comment