£60.89

CRC Press Cost-Sensitive Machine Learning (Chapman & Hall/Crc: Machine Learning & Pattern Recognition)

Price data last checked 56 day(s) ago - refreshing...

View at Amazon

Price History & Forecast

Last 35 days • 35 data points (No recent data available)

Historical
Generating forecast...
£61.18 £53.24 £54.97 £56.70 £58.44 £60.17 £61.90 25 January 2026 02 February 2026 11 February 2026 19 February 2026 28 February 2026

Price Distribution

Price distribution over 35 days • 5 price levels

Days at Price
Current Price
4 days 1 day 8 days 2 days 20 days · current 0 5 10 15 20 £54 £58 £58 £60 £61 Days at Price

Price Analysis

Most common price: £61 (20 days, 57.1%)

Price range: £54 - £61

Price levels: 5 different prices over 35 days

Description

Product Description 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. About the Author Balaji Krishnapuram is a senior R&D manager at Siemens Medical Solutions. He earned a Ph.D. in electrical and computer engineering from Duke University. His research interests include statistical data mining and information retrieval. Shipeng Yu is a senior staff scientist at Siemens Medical Solutions. He earned a Ph.D. in computer science from the University of Munich. His research interests include statistical machine learning, data mining, Bayesian analysis, information retrieval and extraction, healthcare analytics, and personalized medicine. R. Bharat Rao is senior director and head of Knowledge Solutions at Siemens Medical Solutions, where was recognized as one of its Inventors of the Year in 2005. He also received the 2011 ACM SIGKDD Lifetime Service Award for pioneering applications of data mining for healthcare. He earned a Ph.D. in electrical and computer engineering from the University of Illinois at Urbana-Champaign. His research interests include machine learning, healthcare analytics, mining large data, and personalized medicine.

Product Specifications

Format
Paperback
Domain
Amazon UK
Release Date
19 September 2019
Listed Since
25 June 2019

Barcode

No barcode data available