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Training and Testing of Recommender Systems on Data Missing Not at Random

机译:推荐系统的随机数据丢失训练和测试

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Users typically rate only a small fraction of all available items. We show that the absence of ratings carries useful information for improving the top-κ hit rate concerning all items, a natural accuracy measure for recommendations. As to test recommender systems, we present two performance measures that can be estimated, under mild assumptions, without bias from data even when ratings are missing not at random (MNAR). As to achieve optimal test results, we present appropriate surrogate objective functions for e -cient training on MNAR data. Their main property is to account for all ratings-whether observed or missing in the data. Concerning the top-κ hit rate on test data, our experiments indicate dramatic improvements over even sophisticated methods that are optimized on observed ratings only.
机译:用户通常仅对所有可用项目中的一小部分进行评分。我们显示,缺少评分会带来有用的信息,可改善所有项目的top-κ命中率,这是对建议的自然准确度衡量。对于推荐测试系统,我们提出了两种性能指标,可以在温和的假设下估算出性能指标,即使没有随机缺失评级(MNAR),也不会受到数据的影响。为了获得最佳的测试结果,我们提出了适当的替代目标函数,用于对MNAR数据进行有效的训练。它们的主要属性是考虑所有等级-数据中是否观察到或缺失。关于测试数据的前κ命中率,我们的实验表明,即使仅对观察到的评分进行了优化的复杂方法也取得了巨大的进步。

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