
BOOKS - OS AND DB - Statistical Methods for Recommender Systems

Statistical Methods for Recommender Systems
Author: Deepak K. Agarwal, Bee-Chung Chen
Year: 2016
Format: PDF
File size: 6,6 MB
Language: ENG

Year: 2016
Format: PDF
File size: 6,6 MB
Language: ENG

It covers both traditional methods such as collaborative filtering and matrix factorization, as well as more recent approaches like deep learning. The authors emphasize the importance of understanding the underlying data distribution and the challenges of dealing with large datasets. They also discuss the ethical considerations of using these techniques in realworld applications. Book Description: Statistical Methods for Recommender Systems Authors: [Author Names] 2016 298 Deepak K. Agarwal, Bee-Chung Chen Summary: This book provides a comprehensive guide to state-of-the-art statistical techniques used to power recommender systems. It covers both traditional methods such as collaborative filtering and matrix factorization, as well as more recent approaches like deep learning. The authors emphasize the importance of understanding the underlying data distribution and the challenges of dealing with large datasets. They also discuss the ethical considerations of using these techniques in real-world applications. Long Description: In today's technology-driven world, recommender systems have become an essential tool for businesses and individuals alike. These systems help users discover new products, services, and content that align with their preferences, leading to increased customer satisfaction and revenue for businesses. However, developing and implementing effective recommender systems requires a deep understanding of statistical methods and their applications.
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