A spreading activation approach for collaborative filtering
In this Brief Report, we propose a spreading activation approach for collaborative filtering (SA-CF). Under the simplest case with binary resource, the current algorithm has remarkably higher accuracy than the standard collaborative filtering (CF) using Pearson correlation. Furthermore, we introduce a free parameter to regulate the contributions of objects to user-user correlations. The numerical results indicate that decreasing the influence of popular objects can further improve the algorithmic accuracy. We argue that a better algorithm should simultaneously require less computation and generate higher accuracy. Accordingly, we further propose an algorithm involving only the top- similar neighbors for each target user, which has both less computational complexity and higher algorithmic accuracy.
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