基于噪声聚类隶属函数估计的鲁棒模糊分解机

Katsuhiro Honda, Keita Hoshii, Seiki Ubukata, Akira Notsu
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引用次数: 1

摘要

因子分解机(FM)是一种很有前途的基于模型的协同过滤(CF)算法,但当数据集包含低置信度的用户时,其性能较差。本文将基于噪声聚类的噪声抑制机制引入到模糊调频中,利用用户的模糊隶属度来考虑每个用户在调频建模中的责任,提出了一种鲁棒调频模型。通过基于用户的预测误差标准自动更新模糊隶属度,该模型能够更好地拟合可靠用户,并有望提高预测未知项目偏好程度的泛化能力。通过对MovieLens电影评价数据的数值实验,证明了该方法的特点,通过对噪声敏感权值的精心调整,不仅可以提高对训练评分的预测能力,还可以提高对可靠用户测试评分的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust fuzzy factorization machine with noise clustering-based membership function estimation

Factorization machine (FM) is a promising model-based algorithm for collaborative filtering (CF), but can bring inferior performances if datasets include users having low confidence. In this paper, a robust FM model is proposed by introducing the noise clustering-based noise rejection mechanism into Fuzzy FM, which utilizes fuzzy memberships of users for considering the responsibility of each user in FM modeling. By automatically updating fuzzy memberships with user-wise criteria of prediction errors, the FM model is better fitted to reliable users and is expected to improve the generalization ability for predicting the preference degrees of unknown items. The characteristics of the proposed method are demonstrated through numerical experiments with MovieLens movie evaluation data such that the prediction ability for not only the training ratings but also the test ratings of reliable users can be improved by carefully tuning the noise sensitivity weight.

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