Detalles del libro
Formato
Tapa blanda
Páginas
68
Idioma
Francés
Publicado
Aug 16, 2023
Editorial
Editions Notre Savoir
ISBN-10
6206345432
ISBN-13
9786206345435
Descripción
In an era where vast amounts of data are generated daily, understanding and processing this information has never been more crucial. This exploration delves deep into the complexities of classification techniques specifically tailored for imbalanced datasets, a common challenge in data analysis. It meticulously examines the issues arising from uneven distributions in data, which often lead to biased models and inaccurate predictions, rendering traditional classification methods ineffective.
The authors, Dharmendra Singh Rajput and S. Sinduja, provide insights into innovative strategies and methodologies developed to tackle these challenges. Through comprehensive exploration and analysis, they illustrate how various approaches can significantly improve the reliability and performance of models when confronted with skewed distributions. This work serves as a valuable resource for researchers and practitioners alike, equipping them with the knowledge to navigate the intricacies of data imbalance and enhance their analytic capabilities.
The authors, Dharmendra Singh Rajput and S. Sinduja, provide insights into innovative strategies and methodologies developed to tackle these challenges. Through comprehensive exploration and analysis, they illustrate how various approaches can significantly improve the reliability and performance of models when confronted with skewed distributions. This work serves as a valuable resource for researchers and practitioners alike, equipping them with the knowledge to navigate the intricacies of data imbalance and enhance their analytic capabilities.