All videos
All videos
Explaining neural networks predictions
April 16, 2018
Recently Deep Neural Networks have become superior in many machine learning tasks. However, they are more difficult to interpret than simpler models like Support Vector Machines or Decision Trees. One may say that neural nets are black boxes that produce predictions but we can’t explain why a given prediction is made. Such a condition is not acceptable in industries like healthcare or law. In this talk, I will show known ways of understanding neural networks predictions.
Tags
Other videos that you might like

Discussion Panel: Experiences and views on AI adoption
William Benton, Konrad Pabianczyk, Umit Mert Cakmak

Stream processing in telco – case study based on Apache Flink & TouK Nussknacker
Maciek Próchniak

ART 360: Defending AI models against adversarial attacks
Mathieu Sinn

How we built a Shiny App for 700 users?
Olga Mierzwa-Sulima