Recommender Systems: The Textbook (推薦系統:教科書)
Charu C. Aggarwal
- 出版商: Springer
- 出版日期: 2016-04-04
- 售價: $2,900
- 貴賓價: 9.5 折 $2,755
- 語言: 英文
- 頁數: 498
- 裝訂: Hardcover
- ISBN: 3319296574
- ISBN-13: 9783319296579
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相關分類:
推薦系統
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相關翻譯:
推薦系統:原理與實踐 (Recommender Systems: The Textbook) (簡中版)
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其他版本:
Recommender Systems: The Textbook (Paperback)
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相關主題
商品描述
This book comprehensively covers the topic of recommender systems, which provide personalized recommendations of products or services to users based on their previous searches or purchases. Recommender system methods have been adapted to diverse applications including query log mining, social networking, news recommendations, and computational advertising. This book synthesizes both fundamental and advanced topics of a research area that has now reached maturity. The chapters of this book are organized into three categories:
- Algorithms and evaluation: These chapters discuss the fundamental algorithms in recommender systems, including collaborative filtering methods, content-based methods, knowledge-based methods, ensemble-based methods, and evaluation.
- Recommendations in specific domains and contexts: the context of a recommendation can be viewed as important side information that affects the recommendation goals. Different types of context such as temporal data, spatial data, social data, tagging data, and trustworthiness are explored.
- Advanced topics and applications: Various robustness aspects of recommender systems, such as shilling systems, attack models, and their defenses are discussed.
In addition, recent topics, such as learning to rank, multi-armed bandits, group systems, multi-criteria systems, and active learning systems, are introduced together with applications.
Although this book primarily serves as a textbook, it will also appeal to industrial practitioners and researchers due to its focus on applications and references. Numerous examples and exercises have been provided, and a solution manual is available for instructors.
商品描述(中文翻譯)
本書全面介紹了推薦系統的主題,該系統根據用戶的先前搜索或購買行為,為用戶提供個性化的產品或服務推薦。推薦系統方法已被適應到各種應用中,包括查詢日誌挖掘、社交網絡、新聞推薦和計算廣告。本書綜合了一個已經成熟的研究領域的基礎和高級主題。本書的章節分為三個類別:
- 算法和評估:這些章節討論了推薦系統中的基本算法,包括協同過濾方法、基於內容的方法、基於知識的方法、基於集成的方法和評估方法。
- 特定領域和上下文中的推薦:推薦的上下文可以被視為影響推薦目標的重要附加信息。本書探討了不同類型的上下文,如時間數據、空間數據、社交數據、標籤數據和可信度數據。
- 高級主題和應用:本書討論了推薦系統的各種韌性方面,如操縱系統、攻擊模型及其防禦方法。此外,還介紹了最近的主題,如學習排序、多臂搶錢機、群體系統、多標準系統和主動學習系統,以及相關應用。
儘管本書主要作為教材,但由於其對應用和參考文獻的關注,也將吸引工業從業人員和研究人員。書中提供了大量的例子和練習,並且教師可以獲得解答手冊。