Fundamentals of Optimization Theory With Applications to Machine LearningКНИГИ » ПРОГРАММИНГ
Название: Fundamentals of Optimization Theory With Applications to Machine Learning Автор: Jean Gallier, Jocelyn Quaintance Издательство: Jean Gallier Год: 2019 Формат: PDF Страниц: 832 Размер: 13 Mb Язык: English
In recent years, computer vision, robotics, machine learning, and data science have been some of the key areas that have contributed to major advances in technology. Anyone who looks at papers or books in the above areas will be ba?ed by a strange jargon involving exotic terms such as kernel PCA, ridge regression, lasso regression, support vector machines (SVM), Lagrange multipliers, KKT conditions, etc. Do support vector machines chase cattle to catch them with some kind of super lasso? No! But one will quickly discover that behind the jargon which always comes with a new ?eld (perhaps to keep the outsiders out of the club), lies a lot of “classical” linear algebra and techniques from optimization theory. And there comes the main challenge: in order to understand and use tools from machine learning, computer vision, and so on, one needs to have a ?rm background in linear algebra and optimization theory. To be honest, some probability theory and statistics should also be included, but we already have enough to contend with. Many books on machine learning struggle with the above problem. How can one understand what are the dual variables of a ridge regression problem if one doesn’t know about the Lagrangian duality framework? Similarly, how is it possible to discuss the dual formulation of SVM without a ?rm understanding of the Lagrangian framework? The easy way out is to sweep these di?culties under the rug. If one is just a consumer of the techniques we mentioned above, the cookbook recipe approach is probably adequate. But this approach doesn’t work for someone who really wants to do serious research and make signi?cant contributions. To do so, we believe that one must have a solid background in linear algebra and optimization theory.
Scikit-learn in Details: Deep understanding Название: Scikit-learn in Details: Deep understanding Автор: Robert Collins Издательство: Amazon Digital Services LLC Год: 2018 Язык:...
Mathematics for Machine Learning Название: Mathematics for Machine Learning Автор: Marc Peter Deisenroth, A. Aldo Faisal Издательство: Cambridge University Press Год: 2020 Страниц:...
Machine Intelligence and Signal Analysis Название: Machine Intelligence and Signal Analysis Автор: M. Tanveer, Ram Bilas Pachori Издательство: Springer Серия: Advances in Intelligent...