Why is it necessary to handle missing data in machine learning?
Monday, 07 August 2023 by EITCA Academy
Handling missing data is a important step in machine learning, particularly in the field of regression analysis. Missing data refers to the absence of values in a dataset that should ideally be present. These missing values can occur due to various reasons such as data collection errors, sensor malfunctions, or participant non-response. Ignoring missing data
- Published in Artificial Intelligence, EITC/AI/MLP Machine Learning with Python, Regression, Regression features and labels, Examination review
Tagged under: Artificial Intelligence, Bias, Efficiency, MISSING DATA, Regression Analysis, VALIDITY