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Convergent Algorithms for Collaborative Filtering

机译:用于协作滤波的收敛算法

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A collaborative filtering system analyzes data on the past behavior of its users so as to make recommendations ― a canonical example is the recommending of books based on prior purchases. The full potential of collaborative filtering implicitly rests on the premise that, as an increasing amount of data is collected, it should be possible to make increasingly high-quality recommendations. Despite the prevalence of this notion at an informal level, the theoretical study of such convergent algorithms has been quite limited. To investigate such algorithms, we generalize a model of collaborative filtering proposed by Kumar et al., in which the recommendations made by an algorithm are compared to those of an omniscient algorithm that knows the hidden preferences of users. Within our generalized model, we develop a recommendation algorithm with a strong convergence property ― as the amount of data increases, the quality of its recommendations approach those of the optimal omniscient algorithm. We also consider a further generalization, a mixture model proposed by Hofmann and Puzicha.
机译:协作过滤系统分析了其用户过去行为的数据,以便提出建议 - 规范示例是根据先验购买的推荐。协作滤波的全部潜力隐含地搁置在前提下,因为收集了越来越多的数据,应该可以提出越来越高质的建议。尽管这种概念在非正式水平下​​普遍存在,但这种收敛算法的理论研究非常有限。为了调查这些算法,我们概括了Kumar等人提出的协作滤波模型,其中算法提出的建议与知道用户隐藏的偏好的算法。在我们的广义模型中,我们开发了一种具有强大收敛性的推荐算法 - 随着数据量的增加,其建议的质量方法接近最佳无所不知的算法。我们还考虑进一步的概括,是Hofmann和Puzicha提出的混合模型。

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