Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10321790 | Expert Systems with Applications | 2015 | 14 Pages |
Abstract
The rapid growth of the world-wide-web has been challenging information sciences for the effective screening of useful information from a vast amount of online resources. Although recent studies have suggested that recommendation approaches relying on the concept of complex networks usually exhibit excellent performance, there still lacks a unified framework to guide the design of a recommender system from the viewpoint of network inference. Besides, two critical questions for a network-based approach, the quality of the object-user network and the measure of the strength of association between an object node and a user node in such a network, are still not systematically explored in existing studies. Aiming to answer these questions, here we introduce a general framework for network-based top-N recommendation and propose a novel method named ROUND that integrates (i) relationships among objects, (ii) relationships among users, and (iii) relationships between objects and users, in a single network model. We adopt a k-nearest neighbor strategy to filter out unreliable connections in the network, and we use a random walk with restart model to characterize the strength of associations between object nodes and user nodes, thereby making significant progress in addressing the critical questions in network-based recommendation. We demonstrate the effectiveness of our method via large-scale cross-validation experiments across two real datasets (MovieLens and Netflix) and show the superiority of our method over such state-of-the-art approaches as non-negative matrix factorization and singular value decomposition in terms of not only recommendation accuracy and diversity but also retrieval performance.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Mingxin Gan, Rui Jiang,