Performance of recommender algorithms on top-n recommendation tasks 论文

2010引用 1427
Recommender Systems and TechniquesAdvanced Bandit Algorithms ResearchConsumer Market Behavior and Pricing

摘要

In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating values are not. This is usually referred to as a top-N recommendation task, where the goal of the recommender system is to find a few specific items which are supposed to be most appealing to the user. Common methodologies based on error metrics (such as RMSE) are not a natural fit for evaluating the top-N recommendation task. Rather, top-N performance can be directly measured by alternative methodologies based on accuracy metrics (such as precision/recall).