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Collaborative filtering recommendation algorithm based on interval-valued fuzzy numbers

机译:基于间隔值模糊数的协同过滤推荐算法

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摘要

Most collaborative filtering recommendation algorithms use crisp ratings to represent the users' preferences. However, users' preferences are subjective and changeable, crisp ratings can't measure the uncertainty of users' preferences effectively. In order to solve this problem, this paper proposes the interval-valued triangular fuzzy rating model. This model replaces crisp ratings with interval-valued triangular fuzzy numbers on the basis of users' rating statistics information, which can measure the users' preferences in a more reasonable way. Based on this model, the collaborative filtering recommendation algorithm based on interval-valued fuzzy numbers is designed. The algorithm calculates the users' similarity by the interval-valued triangular fuzzy numbers, and takes the ambiguity of ratings into consideration in the prediction stage. Our experiments prove that, compared with other fuzzy and traditional algorithms, our algorithm can increase the prediction precision and rank accuracy effectively with a little time cost, and has an obvious advantage when implemented in a sparse dataset which has more users than items. Thus our method has strong effectiveness and practicability.
机译:大多数协作过滤推荐算法使用CRESP评级来表示用户的偏好。但是,用户的偏好是主观和可变的,清晰的评级无法有效地测量用户偏好的不确定性。为了解决这个问题,本文提出了间隔值三角形模糊额定模型。该模型在用户评级统计信息的基础上取代了间隔值三角模糊数的酥脆评级,可以以更合理的方式衡量用户的偏好。基于该模型,设计了基于间隔值模糊数的协同过滤推荐算法。该算法通过间隔值三角形模糊数计算用户的相似性,并考虑预测阶段的额度的歧义。我们的实验证明,与其他模糊和传统算法相比,我们的算法可以通过一点时间成本提高预测精度和秩精度,并且在具有更多用户的稀疏数据集中实现了显而易见的优势。因此,我们的方法具有强大的有效性和实用性。

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