Social Web Artifacts for Boosting Recommenders: Theory and Implementation (Studies in Computational Intelligence)
暫譯: 社交網路文物提升推薦系統:理論與實作(計算智慧研究)
Cai-Nicolas Ziegler
- 出版商: Springer
- 出版日期: 2015-05-16
- 售價: $4,210
- 貴賓價: 9.5 折 $4,000
- 語言: 英文
- 頁數: 208
- 裝訂: Paperback
- ISBN: 3319032879
- ISBN-13: 9783319032870
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商品描述
Recommender systems, software programs that learn from human behavior and make predictions of what products we are expected to appreciate and purchase, have become an integral part of our everyday life. They proliferate across electronic commerce around the globe and exist for virtually all sorts of consumable goods, such as books, movies, music, or clothes.
At the same time, a new evolution on the Web has started to take shape, commonly known as the “Web 2.0” or the “Social Web”: Consumer-generated media has become rife, social networks have emerged and are pulling significant shares of Web traffic. In line with these developments, novel information and knowledge artifacts have become readily available on the Web, created by the collective effort of millions of people.
This textbook presents approaches to exploit the new Social Web fountain of knowledge, zeroing in first and foremost on two of those information artifacts, namely classification taxonomies and trust networks. These two are used to improve the performance of product-focused recommender systems: While classification taxonomies are appropriate means to fight the sparsity problem prevalent in many productive recommender systems, interpersonal trust ties – when used as proxies for interest similarity – are able to mitigate the recommenders' scalability problem.
商品描述(中文翻譯)
推薦系統是從人類行為中學習並預測我們可能欣賞和購買的產品的軟體程式,已成為我們日常生活中不可或缺的一部分。它們在全球電子商務中廣泛存在,幾乎涵蓋所有類型的消費品,如書籍、電影、音樂或衣物。
同時,網路上出現了一種新的演變,通常被稱為「Web 2.0」或「社交網路」:消費者生成的媒體變得普遍,社交網路的興起吸引了大量的網路流量。隨著這些發展,新的資訊和知識產物在網路上變得隨手可得,這是數百萬人共同努力的結果。
本教科書介紹了利用新的社交網路知識源的方法,首先聚焦於兩種資訊產物,即分類分類法和信任網路。這兩者用於改善以產品為中心的推薦系統的性能:分類分類法是解決許多生產性推薦系統中普遍存在的稀疏性問題的適當手段,而人際信任關係——當用作興趣相似性的代理時——能夠減輕推薦系統的可擴展性問題。