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- 360 pages
- 13 hours of reading
More about the book
This book explores the technical workings of rankings, product recommendations, and online matchmaking services. It demonstrates how to develop Web 2.0 applications that search and analyze the vast amounts of data generated by users of current web applications. Introducing the world of machine learning and statistics, it explains how to draw conclusions from user experience, personal preferences, and human behavior. The book illustrates how to leverage user data and user-generated content to extract "collective intelligence" using the right algorithms, creating real value for applications. It provides practical insights into complex topics, using clear examples to explain how machine learning algorithms operate. Key techniques covered include collaborative filtering, clustering methods, optimization algorithms, Bayesian filtering, and support vector machines. Each algorithm is succinctly described with understandable Python code. Real-world examples from sites like Facebook and eBay, along with numerous exercises, encourage experimentation and showcase new techniques to enhance Web 2.0 websites.
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Programming Collective Intelligence, Toby Segaran
- Language
- Released
- 2011
- product-detail.submit-box.info.binding
- (Paperback),
- Book condition
- Damaged
- Price
- €3.01
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- Language
- English
- Authors
- Toby Segaran
- Publisher
- O'Reilly Media
- Released
- 2011
- Format
- Paperback
- Pages
- 360
- ISBN10
- 0596529325
- ISBN13
- 9780596529321
- Series
- Tags
- Non-Fiction, Technology & Engineering, Computers & Internet, Technology, Software, Artificial Intelligence
- Original title
- Programming collective intelligence
- Rating
- 4.1 out of 5
- Description
- This book explores the technical workings of rankings, product recommendations, and online matchmaking services. It demonstrates how to develop Web 2.0 applications that search and analyze the vast amounts of data generated by users of current web applications. Introducing the world of machine learning and statistics, it explains how to draw conclusions from user experience, personal preferences, and human behavior. The book illustrates how to leverage user data and user-generated content to extract "collective intelligence" using the right algorithms, creating real value for applications. It provides practical insights into complex topics, using clear examples to explain how machine learning algorithms operate. Key techniques covered include collaborative filtering, clustering methods, optimization algorithms, Bayesian filtering, and support vector machines. Each algorithm is succinctly described with understandable Python code. Real-world examples from sites like Facebook and eBay, along with numerous exercises, encourage experimentation and showcase new techniques to enhance Web 2.0 websites.




