BIBLIO is the largest independent book marketplace in the world, with over 100 million books.

Skip to content

Machine Learning for the Quantified Self : On the Art of Learning from Sensory Data

Machine Learning for the Quantified Self : On the Art of Learning from Sensory Data

Machine Learning for the Quantified Self : On the Art of Learning from Sensory Data Hardback - 2017

by Mark Hoogendoorn

Add to wish list
  • New
  • Hardback
New

Description

Hardcover. New. New Book; Fast Shipping from UK; Not signed; Not First Edition; This book explains the complete loop to effectively use self-tracking data for machine learning. While it focuses on self-tracking data, the techniques explained are also applicable to sensory data in general, making it useful for a wid
Ask the seller a question Add to wish list
A$288.13
A$15.57 Delivery to USA
Standard delivery: 7 to 12 days
More delivery options
Ships from Ria Christie Collections (Greater London, United Kingdom)

Details

  • Title Machine Learning for the Quantified Self : On the Art of Learning from Sensory Data
  • Author Mark Hoogendoorn
  • Binding Hardback
  • Condition New
  • Pages 231
  • Volumes 1
  • Language ENG
  • Publisher Springer
  • Publication date 2017-10-05
  • Illustrated Yes
  • Features Illustrated
  • Bookseller's Inventory # ria9783319663074_inp
  • ISBN 9783319663074 / 3319663070
  • Weight 1.16 lbs (0.53 kg)
  • Dimensions 9.21 x 6.14 x 0.63 in (23.39 x 15.60 x 1.60 cm)
  • Category Computers - General Information
  • Dewey Decimal Code 006.3
  • Quantity available 124

About Ria Christie Collections Greater London, United Kingdom

Biblio member since 2014

Hello We are professional online booksellers. We sell mostly new books and textbooks and we do our best to provide a competitive price. We are based in Greater London, UK. We pride ourselves by providing a good customer service throughout, shipping the items quickly and replying to customer queries promptly. Ria Christie Collections

Terms of Sale:

30 day return guarantee, with full refund including original shipping costs for up to 30 days after delivery if an item arrives misdescribed or damaged.

Browse books from Ria Christie Collections

Reader reviews for Machine Learning for the Quantified Self : On the Art of Learning from Sensory Data

From the publisher

This book explains the complete loop to effectively use self-tracking data for machine learning. While it focuses on self-tracking data, the techniques explained are also applicable to sensory data in general, making it useful for a wider audience. Discussing concepts drawn from from state-of-the-art scientific literature, it illustrates the approaches using a case study of a rich self-tracking data set. Self-tracking has become part of the modern lifestyle, and the amount of data generated by these devices is so overwhelming that it is difficult to obtain useful insights from it. Luckily, in the domain of artificial intelligence there are techniques that can help out: machine-learning approaches allow this type of data to be analyzed. While there are ample books that explain machine-learning techniques, self-tracking data comes with its own difficulties that require dedicated techniques such as learning over time and across users.

From the rear cover

This book explains the complete loop to effectively use self-tracking data for machine learning. While it focuses on self-tracking data, the techniques explained are also applicable to sensory data in general, making it useful for a wider audience. Discussing concepts drawn from state-of-the-art scientific literature, it illustrates the approaches using a case study of a rich self-tracking data set. Self-tracking has become part of the modern lifestyle, and the amount of data generated by these devices is so overwhelming that it is difficult to obtain useful insights from it. Luckily, in the domain of artificial intelligence there are techniques that can help out: machine-learning approaches allow this type of data to be analyzed. While there are sample books that explain machine-learning techniques, self-tracking data comes with its own difficulties that require dedicated techniques such as learning over time and across users.
tracking-