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Trust-Distrust Aware Recommendation by Integrating Metric Learning with Matrix Factorization

机译:通过将度量学习与矩阵因式分解相集成来建立信任-不信任感知推荐

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With the upsurge of e-commence and social activities on the Web, Recommender system has attracted widespread attention from both researchers and practitioners. Motivated by the fact that trusted users tend to have small distance whereas distrusted users tend to have large distance, we propose to model trust aware recommendation based on distance metric learning. Furthermore, by incorporating with classical matrix factorization method, we build an integrated optimization framework and convex loss function. Gradient descent method is employed to optimize the loss function. Experiments are conducted on the Epinions dataset, which shows that the performance of the proposed method is remarkably superior to competitive methods in terms of precision, recall and F1-measure, and compatible in terms of MEA and RMSE, demonstrating advantages of modeling recommendation with trust-distrust aware metric learning and matrix factorization. To the best of our knowledge, this is the first attempt in modeling and optimizing recommendation in a unified framework of trust aware distance metric learning and matrix factorization.
机译:随着网上电子商务和社交活动的兴起,Recommender系统引起了研究人员和从业人员的广泛关注。出于受信任的用户倾向于具有较小的距离而不受信任的用户倾向于具有较大的距离这一事实的动机,我们建议基于距离度量学习对信任感知的推荐进行建模。此外,通过结合经典矩阵分解方法,我们构建了一个集成的优化框架和凸损失函数。采用梯度下降法对损失函数进行优化。在Epinions数据集上进行的实验表明,该方法的性能在精度,查全率和F1度量方面明显优于竞争方法,并且在MEA和RMSE方面兼容,证明了信任建模建议的优势-不信任意识的度量学习和矩阵分解。据我们所知,这是在信任感知距离度量学习和矩阵分解的统一框架中对推荐进行建模和优化的首次尝试。

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