Essentials of Pattern Recognition An Accessible Approach
- Textbook
Description
This textbook introduces fundamental concepts, major models, and popular applications of pattern recognition for a one-semester undergraduate course. To ensure student understanding, the text focuses on a relatively small number of core concepts with an abundance of illustrations and examples. Concepts are reinforced with hands-on exercises to nurture the student's skill in problem solving. New concepts and algorithms are framed by real-world context and established as part of the big picture introduced in an early chapter. A problem-solving strategy is…
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Key features
- Focuses on core concepts to ensure mastery of the fundamentals
- Presents a strategy for problem-solving so that students can solve unfamiliar problems
- Features an abundance of thought-provoking real-world issues and exercises to help students connect theory with practice
- Patient, step-by-step explication of algorithms so that students understand which to apply in which situation
About the book
- DOI https://doi.org/10.1017/9781108650212
- Subjects Computational Statistics, Machine Learning and Information Science,Computer Science,Machine Learning and Pattern Recognition,Statistics and Probability
- Format: Hardback
- Publication date: 17 December 2020
- ISBN: 9781108483469
- Dimensions (mm): 244 x 170 mm
- Weight: 0.96kg
- Page extent: 398 pages
- Availability: In stock
- Format: Digital
- Publication date: 08 December 2020
- ISBN: 9781108650212
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Online publication date: 23 September 2020