Kernel Methods: Fundamentals and Applications

· One Billion Knowledgeable · Dinarasikan oleh Mason (dari Google)
Buku Audio
1 jam 52 menit
Tidak diringkas
Memenuhi syarat
Dinarasikan oleh AI
Rating dan ulasan tidak diverifikasi  Pelajari Lebih Lanjut
Ingin sampel selama 11 menit? Dengarkan kapan saja, meski saat offline. 
Tambahkan

Tentang buku audio ini

What Is Kernel Methods


In the field of machine learning, kernel machines are a class of methods for pattern analysis. The support-vector machine (also known as SVM) is the most well-known member of this group. Pattern analysis frequently makes use of specific kinds of algorithms known as kernel approaches. Utilizing linear classifiers in order to solve nonlinear issues is what these strategies entail. Finding and studying different sorts of general relations present in datasets is the overarching goal of pattern analysis. Kernel methods, on the other hand, require only a user-specified kernel, which can be thought of as a similarity function over all pairs of data points computed using inner products. This is in contrast to many algorithms that solve these tasks, which require the data in their raw representation to be explicitly transformed into feature vector representations via a user-specified feature map. According to the Representer theorem, although the feature map in kernel machines has an unlimited number of dimensions, all that is required as user input is a matrix with a finite number of dimensions. Without parallel processing, computation on kernel machines is painfully slow for data sets with more than a few thousand individual cases.


How You Will Benefit


(I) Insights, and validations about the following topics:


Chapter 1: Kernel method


Chapter 2: Support vector machine


Chapter 3: Radial basis function


Chapter 4: Positive-definite kernel


Chapter 5: Sequential minimal optimization


Chapter 6: Regularization perspectives on support vector machines


Chapter 7: Representer theorem


Chapter 8: Radial basis function kernel


Chapter 9: Kernel perceptron


Chapter 10: Regularized least squares


(II) Answering the public top questions about kernel methods.


(III) Real world examples for the usage of kernel methods in many fields.


(IV) 17 appendices to explain, briefly, 266 emerging technologies in each industry to have 360-degree full understanding of kernel methods' technologies.


Who This Book Is For


Professionals, undergraduate and graduate students, enthusiasts, hobbyists, and those who want to go beyond basic knowledge or information for any kind of kernel methods.

Tentang pengarang

Fouad Sabry is the former Regional Head of Business Development for Applications at HP in Southern Europe, Middle East, and Africa (SEMEA). Fouad has received his B.Sc. of Computer Systems and Automatic Control in 1996, dual master’s degrees from University of Melbourne (UoM) in Australia, Master of Business Administration (MBA) in 2008, and Master of Management in Information Technology (MMIT) in 2010. 

Fouad has more than 20 years of experience in Information Technology and Telecommunications fields, working in local, regional, and international companies, such as Vodafone and IBM in Middle East and Africa (MEA) region. Fouad joined HP Middle East (ME), based in Dubai, United Arab Emirates (UAE) in 2013 and helped develop the software business in tens of markets across Southern Europe, Middle East, and Africa (SEMEA) regions. Currently, Fouad is an entrepreneur, author, futurist, focused on Emerging Technologies, and Industry Solutions, and founder of One Billion Knowledgeable (1BK) Initiative.

Beri rating buku audio ini

Sampaikan pendapat Anda.

Informasi untuk mendengarkan

Smartphone dan tablet
Instal aplikasi Google Play Buku untuk Android dan iPad/iPhone. Aplikasi akan disinkronkan secara otomatis dengan akun Anda dan dapat diakses secara online maupun offline di mana saja.
Laptop dan komputer
Anda dapat membaca buku yang dibeli di Google Play menggunakan browser web komputer.

Lainnya oleh Fouad Sabry

Buku audio serupa

Dinarasikan oleh Mason