Mining Imperfect Data (Dealing with Contamination and Incomplete Records)

Mining Imperfect Data (Dealing with Contamination and Incomplete Records)

Aún sin calificaciones
Apr 1, 2005 · Inglés · Tapa blanda (184 páginas)
Añadir a la estantería

Califica este libro


Exportar diario de lectura

Detalles del libro

Formato Tapa blanda
Páginas 184
Idioma Inglés
Publicado Apr 1, 2005
Editorial SIAM
ISBN-10 0898715822
ISBN-13 9780898715828

Descripción

Ronald K. Pearson delves into the complexities of data mining in a world often characterized by imperfect data. His exploration reveals the myriad issues that can arise from contaminated or incomplete records, shedding light on how these challenges can significantly skew results and impact decision-making processes. By examining the sources and consequences of such imperfections, he emphasizes the critical importance of recognizing and addressing these inherent flaws in data sets.

Through a blend of theoretical insights and practical applications, Pearson provides a comprehensive guide for researchers and practitioners alike. He discusses various strategies and methodologies for mitigating the effects of poor data quality, ensuring that users can navigate the uncertain terrain of data mining with greater confidence. Ultimately, the work serves as a vital resource for anyone committed to extracting meaningful insights from less than perfect data while fostering a deeper understanding of the underlying complexities involved.
Añadir a la estantería

Califica este libro


Exportar diario de lectura