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When Recommenders Fail: Predicting Recommender Failure for Algorithm Selection and Combination

机译:推荐人失败时:预测推荐人失败以进行算法选择和组合

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Hybrid recommender systems - systems using multiple algorithms together to improve recommendation quality - have been well-known for many years and have shown good performance in recent demonstrations such as the NetFlix Prize. Modern hybridization techniques, such as feature-weighted linear stacking, take advantage of the hypothesis that the relative performance of recommenders varies by circumstance and attempt to optimize each item score to maximize the strengths of the component recommenders. Less attention, however, has been paid to understanding what these strengths and failure modes are. Understanding what causes particular recommenders to fail will facilitate better selection of the component recommenders for future hybrid systems and a better understanding of how individual recommender personalities can be harnessed to improve the recommender user experience. We present an analysis of the predictions made by several well-known recommender algorithms on the MovieLens 10M data set, showing that for many cases in which one algorithm fails, there is another that will correctly predict the rating.
机译:混合推荐系统-一起使用多种算法来提高推荐质量的系统-多年来众所周知,并在最近的演示(例如NetFlix奖)中显示出良好的性能。现代杂交技术(例如特征加权线性堆叠)利用了以下假设:推荐者的相对表现随情况而变化,并尝试优化每个项目的得分以最大化组件推荐者的优势。但是,人们很少注意了解这些优势和失败模式。了解导致特定推荐程序失败的原因将有助于为将来的混合系统更好地选择组件推荐程序,并更好地理解如何利用单个推荐程序个性来改善推荐程序用户体验。我们对MovieLens 10M数据集上几种著名的推荐算法进行的预测进行了分析,结果表明,在许多情况下,一种算法失败,还有另一种算法可以正确预测收视率。

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