Inferring Networks of Substitutable and Complementary Products

June 29, 2015 ยท Declared Dead ยท ๐Ÿ› Knowledge Discovery and Data Mining

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Authors Julian McAuley, Rahul Pandey, Jure Leskovec arXiv ID 1506.08839 Category cs.SI: Social & Info Networks Cross-listed cs.IR Citations 797 Venue Knowledge Discovery and Data Mining Last Checked 1 month ago
Abstract
In a modern recommender system, it is important to understand how products relate to each other. For example, while a user is looking for mobile phones, it might make sense to recommend other phones, but once they buy a phone, we might instead want to recommend batteries, cases, or chargers. These two types of recommendations are referred to as substitutes and complements: substitutes are products that can be purchased instead of each other, while complements are products that can be purchased in addition to each other. Here we develop a method to infer networks of substitutable and complementary products. We formulate this as a supervised link prediction task, where we learn the semantics of substitutes and complements from data associated with products. The primary source of data we use is the text of product reviews, though our method also makes use of features such as ratings, specifications, prices, and brands. Methodologically, we build topic models that are trained to automatically discover topics from text that are successful at predicting and explaining such relationships. Experimentally, we evaluate our system on the Amazon product catalog, a large dataset consisting of 9 million products, 237 million links, and 144 million reviews.
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