What Are the Prevailing Explainability Methods?
The growing complexity of machine learning models has made it increasingly difficult to understand why a model makes certain predictions, especially as these predictions can have significant impacts on our lives. Explainability is a technique designed to determine which features led to a specific model decision. It does not explain how the model works but offers a rationale for human-understandable responses. This piece aims to highlight different explainability methods and demonstrate their incorporation into popular ML use cases.
Company
Arize
Date published
Dec. 22, 2021
Author(s)
Amber Roberts
Word count
277
Hacker News points
None found.
Language
English