本の詳細
形式
キンドル
ページ数
271
言語
ドイツ語
公開されました
Jan 1, 2019
出版社
Springer
版
1st ed. 2020
ISBN-10
3030224759
ISBN-13
9783030224752
説明
In a rapidly evolving field, the author delves into the intricate world of learning algorithms, capturing both the essence and complexity of supervised, unsupervised, and semi-supervised learning. With a rich blend of theory and practical application, the book offers readers valuable insights into how these methodologies are shaping the landscape of data science. Each concept is carefully articulated, making it accessible to a diverse audience, from newcomers to seasoned professionals.
The exploration of semi-supervised learning is particularly enlightening, bridging the gap between traditional supervised techniques and the vast potential of unsupervised frameworks. Through detailed examples and comprehensive discussions, the author guides readers in navigating the challenges and innovations within data science, empowering them to harness the power of these advanced algorithms in real-world applications. This work not only serves as a crucial resource for aspirants in the data science domain but also contributes significantly to ongoing dialogues in the field.
The exploration of semi-supervised learning is particularly enlightening, bridging the gap between traditional supervised techniques and the vast potential of unsupervised frameworks. Through detailed examples and comprehensive discussions, the author guides readers in navigating the challenges and innovations within data science, empowering them to harness the power of these advanced algorithms in real-world applications. This work not only serves as a crucial resource for aspirants in the data science domain but also contributes significantly to ongoing dialogues in the field.
ジャンル
科学&技術