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Advances In Data Clustering Theory And Applications 1st Edition Fadi Dornaika

  • SKU: BELL-230373588
Advances In Data Clustering Theory And Applications 1st Edition Fadi Dornaika
$ 31.00 $ 45.00 (-31%)

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Advances In Data Clustering Theory And Applications 1st Edition Fadi Dornaika instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 4.03 MB
Pages: 225
Author: Fadi Dornaika, Denis Hamad, Joseph Constantin, Truong Hoang Vinh
ISBN: 9789819776788, 9819776783
Language: English
Year: 2024
Edition: 1

Product desciption

Advances In Data Clustering Theory And Applications 1st Edition Fadi Dornaika by Fadi Dornaika, Denis Hamad, Joseph Constantin, Truong Hoang Vinh 9789819776788, 9819776783 instant download after payment.

Clustering, a foundational technique in data analytics, finds diverse applications across scientific, technical, and business domains. Within the theme of “Data Clustering,” this book assumes substantial importance due to its indispensable clustering role in various contexts. As the era of online media facilitates the rapid generation of large datasets, clustering emerges as a pivotal player in data mining and machine learning. At its core, clustering seeks to unveil heterogeneous groups within unlabeled data, representing a crucial unsupervised task in machine learning. The objective is to automatically assign labels to each unlabeled datum with minimal human intervention. Analyzing this data allows for categorization and drawing conclusions applicable across diverse application domains. The challenge with unlabeled data lies in defining a quantifiable goal to guide the model-building process, constituting the central theme of clustering. This book presents concepts and different methodologies of data clustering. For example, deep clustering of images, semi-supervised deep clustering, deep multi-view clustering, etc. This book can be used as a reference for researchers and postgraduate students in related research background.

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