0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R1,000 - R2,500 (2)
  • -
Status
Brand

Showing 1 - 2 of 2 matches in All Departments

Dimensionality Reduction in Data Science (Hardcover, 1st ed. 2022): Max Garzon, Ching-Chi Yang, Deepak Venugopal, Nirman Kumar,... Dimensionality Reduction in Data Science (Hardcover, 1st ed. 2022)
Max Garzon, Ching-Chi Yang, Deepak Venugopal, Nirman Kumar, Kalidas Jana, …
R1,455 Discovery Miles 14 550 Ships in 9 - 17 working days

This book provides a practical and fairly comprehensive review of Data Science through the lens of dimensionality reduction, as well as hands-on techniques to tackle problems with data collected in the real world. State-of-the-art results and solutions from statistics, computer science and mathematics are explained from the point of view of a practitioner in any domain science, such as biology, cyber security, chemistry, sports science and many others. Quantitative and qualitative assessment methods are described to implement and validate the solutions back in the real world where the problems originated. The ability to generate, gather and store volumes of data in the order of tera- and exo bytes daily has far outpaced our ability to derive useful information with available computational resources for many domains. This book focuses on data science and problem definition, data cleansing, feature selection and extraction, statistical, geometric, information-theoretic, biomolecular and machine learning methods for dimensionality reduction of big datasets and problem solving, as well as a comparative assessment of solutions in a real-world setting. This book targets professionals working within related fields with an undergraduate degree in any science area, particularly quantitative. Readers should be able to follow examples in this book that introduce each method or technique. These motivating examples are followed by precise definitions of the technical concepts required and presentation of the results in general situations. These concepts require a degree of abstraction that can be followed by re-interpreting concepts like in the original example(s). Finally, each section closes with solutions to the original problem(s) afforded by these techniques, perhaps in various ways to compare and contrast dis/advantages to other solutions.

Dimensionality Reduction in Data Science (1st ed. 2022): Max Garzon, Ching-Chi Yang, Deepak Venugopal, Nirman Kumar, Kalidas... Dimensionality Reduction in Data Science (1st ed. 2022)
Max Garzon, Ching-Chi Yang, Deepak Venugopal, Nirman Kumar, Kalidas Jana, …
R1,631 Discovery Miles 16 310 Ships in 18 - 22 working days

This book provides a practical and fairly comprehensive review of Data Science through the lens of dimensionality reduction, as well as hands-on techniques to tackle problems with data collected in the real world. State-of-the-art results and solutions from statistics, computer science and mathematics are explained from the point of view of a practitioner in any domain science, such as biology, cyber security, chemistry, sports science and many others. Quantitative and qualitative assessment methods are described to implement and validate the solutions back in the real world where the problems originated. The ability to generate, gather and store volumes of data in the order of tera- and exo bytes daily has far outpaced our ability to derive useful information with available computational resources for many domains. This book focuses on data science and problem definition, data cleansing, feature selection and extraction, statistical, geometric, information-theoretic, biomolecular and machine learning methods for dimensionality reduction of big datasets and problem solving, as well as a comparative assessment of solutions in a real-world setting. This book targets professionals working within related fields with an undergraduate degree in any science area, particularly quantitative. Readers should be able to follow examples in this book that introduce each method or technique. These motivating examples are followed by precise definitions of the technical concepts required and presentation of the results in general situations. These concepts require a degree of abstraction that can be followed by re-interpreting concepts like in the original example(s). Finally, each section closes with solutions to the original problem(s) afforded by these techniques, perhaps in various ways to compare and contrast dis/advantages to other solutions.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Cricut Joy Ultimate Permanent Fine Point…
R1,399 R581 Discovery Miles 5 810
Stellenbosch: Murder Town - Two Decades…
Julian Jansen Paperback R340 R304 Discovery Miles 3 040
Ideal 42110C 5-Speed Industrial Ceiling…
R955 Discovery Miles 9 550
Moonfall
Halle Berry, Patrick Wilson, … DVD  (1)
R441 Discovery Miles 4 410
Sluggem Pellets (500g)
R159 R140 Discovery Miles 1 400
Elecstor 18W In-Line UPS (Black)
R999 R359 Discovery Miles 3 590
ZA Cute Puppy Love Paw Set (Necklace…
R712 R499 Discovery Miles 4 990
Ralph Lauren Polo Black Eau De Toilette…
R2,360 R1,566 Discovery Miles 15 660
Loot
Nadine Gordimer Paperback  (2)
R367 R340 Discovery Miles 3 400
Dreambaby Mini Multi Purpose Latch - 2…
R140 Discovery Miles 1 400

 

Partners