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Research on Semi-supervised Recommendation Algorithm Based on Hybrid Model

机译:基于混合模型的半监督推荐算法研究

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In the algorithm model training, the scale of the labeled data and the type of algorithm model determines the accuracy of algorithm model. In reality, when training a new system, the amount of unlabeled data is often much larger than that of labeled data. There are linear models, matrix decomposition models and so on for the selection of recommended algorithm models. Given the above problems, consider using the semi-supervised co-training method to construct a dual-view hybrid model algorithm framework through co-training of recommendation algorithm models based on different mathematical foundations. The algorithm framework is verified on the movie data set MovieLens. The experimental results show that the semi-supervised co-training recommendation algorithm based on the hybrid model reduces the root-mean-square error by 1.4%, the accuracy of recommendation results is improved.
机译:在算法模型训练中,标记数据的比例和算法模型的类型决定了算法模型的准确性。实际上,在培训新系统时,未标记的数据量通常大于标记数据的数量。有线型号,矩阵分解模型等开启,用于选择推荐的算法模型。鉴于上述问题,考虑使用基于不同数学基础的推荐算法模型的共同训练来构建双视图混合模型算法框架。算法框架在电影数据集Movielens上验证。实验结果表明,基于混合模型的半监控共培训推荐算法将根均方误差减少1.4%,提高了建议结果的准确性。

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