Data Drift vs. Concept Drift and Why Monitoring for Them is Important
The article discusses the importance of monitoring for data drift and concept drift in machine learning models. It explains that these drifts can impact model accuracy over time due to changes in environmental conditions, user behavior, or data inconsistencies from sources. Data drift refers to changes in the underlying distribution of input data used for modeling, while concept drift refers to changes in the relationships between input features and the target variable a model is trying to predict. The article provides methods and techniques for detecting these drifts, emphasizing the importance of continuous monitoring and adaptive strategies to maintain the accuracy and reliability of models over time.
Company
WhyLabs
Date published
Jan. 1, 2024
Author(s)
Kelsey Olmeim
Word count
3077
Hacker News points
None found.
Language
English