Book icon with persian name of Pubnito
  • Magasin
  • Bibliothèque
  • Votre panier


    Articles au total:0

    Voir le panier

    Numerical Machine Learning

    Numerical Machine Learning

    Zhiyuan WangSayed Ameenuddin Irfan

    "Numerical Machine Learning is a simple textbook on machine learning that bridges the gap between mathematics theory and practice. The book uses numerical examples with small datasets and simple Python codes to provide a complete walkthrough of the underlying mathematical steps of seven commonly used machine learning algorithms and techniques, including linear regression, regularization, logistic regression, decision trees, gradient boosting, Support Vector Machine, and K-means Clustering. Through a step-by-step exploration of concrete numerical examples, the students (primarily undergraduate and graduate students studying machine learning) can develop a well-rounded understanding of these algorithms, gain an in-depth knowledge of how the mathematics relates to the implementation and performance of the algorithms, and be better equipped to apply them to practical problems. Key features - Provides a concise introduction to numerical concepts in machine learning in simple terms - Explains the 7 basic mathematical techniques used in machine learning problems, with over 60 illustrations and tables - Focuses on numerical examples while using small datasets for easy learning - Includes simple Python codes - Includes bibliographic references for advanced reading The text is essential for college and university-level students who are required to understand the fundamentals of machine learning in their courses." "Numerical Machine Learning is a simple textbook on machine learning that bridges the gap between mathematics theory and practice. The book uses numerical examples with small datasets and simple Python codes to provide a complete walkthrough of the underlying mathematical steps of seven commonly used machine learning algorithms and techniques, including linear regression, regularization, logistic regression, decision trees, gradient boosting, Support Vector Machine, and K-means Clustering. Through a step-by-step exploration of concrete numerical examples, the students (primarily undergraduate and graduate students studying machine learning) can develop a well-rounded understanding of these algorithms, gain an in-depth knowledge of how the mathematics relates to the implementation and performance of the algorithms, and be better equipped to apply them to practical problems. Key features - Provides a concise introduction to numerical concepts in machine learning in simple terms - Explains the 7 basic mathematical techniques used in machine learning problems, with over 60 illustrations and tables - Focuses on numerical examples while using small datasets for easy learning - Includes simple Python codes - Includes bibliographic references for advanced reading The text is essential for college and university-level students who are required to understand the fundamentals of machine learning in their courses."

    forme de livre

    licence de livre

    $ 49.00

    Commentaires

    Aperçu de la notation

    Sélectionnez une ligne ci-dessous pour filtrer les avis.

    0

    0

    0

    0

    0

    0

    Global

    Notes moyennes des clients

    Critique de ce livre

    Partagez vos réflexions avec d'autres lecteurs

    Le plus populaire

    description_of_book

    "Numerical Machine Learning is a simple textbook on machine learning that bridges the gap between mathematics theory and practice. The book uses numerical examples with small datasets and simple Pytho

    Informations supplémentaires

    Fournisseur

    Date de publication

    2023 Aug 29

    Auteurs-
    Zhiyuan WangSayed Ameenuddin Irfan

    ISBN

    9789815136982

    À propos des auteurs

    Zhiyuan Wang
    Zhiyuan Wang
      Zhiyuan Wang
      Sayed Ameenuddin Irfan
      Sayed Ameenuddin Irfan
      Sayed Ameenuddin Irfan

      Table des matières

      logo

      Français

      Propulsé par PUBNiTO | © 2025 Notion Wave Inc.