Amazon.com recommendations: item-to-item collaborative filtering
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Abstract
Recommendation algorithms are best known for their use on e-commerce Web sites, where they use input about a customer's interests to generate a list of recommended items. Many applications use only the items that customers purchase and explicitly rate to represent their interests, but they can also use other attributes, including items viewed, demographic data, subject interests, and favorite artists. At Amazon.com, we use recommendation algorithms to personalize the online store for each customer. The store radically changes based on customer interests, showing programming titles to a software engineer and baby toys to a new mother. There are three common approaches to solving the recommendation problem:…
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Authors
3Topics & keywords
Topics
Keywords
- Collaborative filtering
- Computer science
- Recommender system
- Quality (philosophy)
- Product (mathematics)
- E-commerce
- World Wide Web
- Filter (signal processing)
UN Sustainable Development Goals
- Industry, innovation and infrastructure
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