/
Multi-objective, Multi-class and Multi-label Data Classification with Class Imbalance: Theory and Practices (Springer Tracts in Nature-Inspired Computing)

Multi-objective, Multi-class and Multi-label Data Classification with Class Imbalance: Theory and Practices (Springer Tracts in Nature-Inspired Computing)

by Sanjay Chakraborty (Author), Lopamudra Dey (Author)
★★★★★
★★★★★

|0 ratings

Save 42%116.50$199.99
Prime
Only 2 left in stock - order soon.

FREE delivery Monday, June 23 Or Prime members get FREE delivery Tomorrow, June 19. Order within 2 hrs 32 mins. Join Prime

Free delivery with Prime

116.50 USwith Prime
FREE delivery Monday, June 23 Or Prime members get FREE delivery Tomorrow, June 19. Order within 2 hrs 32 mins. Join Prime
Only 2 left in stock - order soon.
Secure transaction

Ships from and sold by Amazon.US

Return policy: Eligible for Return, Refund or Replacement

This book explores intricate world of data classification with 'Multi-Objective, Multi-Class, and Multi-Label Data Classification.' This book studies sophisticated methods and strategies for working with complicated data sets, tackling the difficulties of various classes, many objectives, and complicated labelling tasks. This resource fosters a deeper grasp of multi-dimensional data analysis in today's data-driven world by providing readers with the skills and insights needed to navigate the subtleties of modern classification jobs, from algorithmic techniques to practical applications. Read more

Product Information

PublisherSpringer
Publication dateDecember 23, 2024
Edition2025th
LanguageEnglish
Print length182 pages
ISBN-109819796210
ISBN-13978-9819796212
Item Weight1.05 pounds
Dimensions6.48 x 0.57 x 9.31 inches
Part of seriesSpringer Tracts in Nature-Inspired Computing

Similar Products