Get Free Shipping on orders over $79
Cost-Sensitive Machine Learning : Machine Learning & Pattern Recongnition - Balaji Krishnapuram

Cost-Sensitive Machine Learning

By: Balaji Krishnapuram (Editor), Shipeng Yu (Editor), R. Bharat Rao (Editor)

Hardcover | 19 December 2011 | Edition Number 1

At a Glance

Hardcover


RRP $206.00

$181.75

12%OFF

or 4 interest-free payments of $45.44 with

 or 

Available for Backorder. We will order this from our supplier however there isn't a current ETA.

In machine learning applications, practitioners must take into account the cost associated with the algorithm. These costs include:







  • Cost of acquiring training data


  • Cost of data annotation/labeling and cleaning


  • Computational cost for model fitting, validation, and testing


  • Cost of collecting features/attributes for test data


  • Cost of user feedback collection


  • Cost of incorrect prediction/classification




Cost-Sensitive Machine Learning is one of the first books to provide an overview of the current research efforts and problems in this area. It discusses real-world applications that incorporate the cost of learning into the modeling process.





The first part of the book presents the theoretical underpinnings of cost-sensitive machine learning. It describes well-established machine learning approaches for reducing data acquisition costs during training as well as approaches for reducing costs when systems must make predictions for new samples. The second part covers real-world applications that effectively trade off different types of costs. These applications not only use traditional machine learning approaches, but they also incorporate cutting-edge research that advances beyond the constraining assumptions by analyzing the application needs from first principles.





Spurring further research on several open problems, this volume highlights the often implicit assumptions in machine learning techniques that were not fully understood in the past. The book also illustrates the commercial importance of cost-sensitive machine learning through its coverage of the rapid application developments made by leading companies and academic research labs.

More in Algorithms & Data Structures

Addiction by Design : Machine Gambling in Las Vegas - Natasha Dow Schll
Code Dependent : Living in the Shadow of AI - Madhumita Murgia

RRP $24.99

$21.75

13%
OFF
Python for Algorithmic Trading : From Idea to Cloud Deployment - Yves Hilpisch
How to Prove It : A Structured Approach - Daniel J. Velleman

RRP $73.95

$70.75

Learning Spark : Lightning-Fast Data Analytics - Brooke Wenig

RRP $152.00

$73.75

51%
OFF
Tiny Machine Learning Techniques for Constrained Devices - Khalid El-Makkaoui
New Storytelling : Learning through Metaphors - Anna Ursyn

RRP $103.00

$91.75

11%
OFF
Uncertain Data Analysis : Fuzzy Vector Algorithms - Sansanee Auephanwiriyakul
Uncertain Data Analysis : Fuzzy Vector Algorithms - Sansanee Auephanwiriyakul

RRP $94.99

$85.75

10%
OFF
Scheduling Variable Capacity Resources for Sustainability - Anne Benoit
Applied Data Science in FinTech : Models, Tools, and Case Studies - Juraj Hric