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Effect of linear biases in latent factor models on high-dimensional and sparse matrices from recommender systems

机译:潜在因子模型中的线性偏差对推荐系统的高维和稀疏矩阵的影响

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Latent factor (LF)-based models have been proven to be efficient in implementing recommender systems, owing to their ability to well represent high-dimensional and sparse matrices. While prior works focus on boosting both the prediction accuracy and computation efficiency of original LF model by adding linear biases to it, the individual and combinational effects by linear biases in such performance gain remains unclear. To address this issue, this work thoroughly investigates the effect of prior linear biases and training linear biases. We have investigated the parameter update rules and training processes of an LF model with different combinations of linear biases. Empirical validations are conducted on a high dimensional and sparse matrix from industrial systems currently in use. The results show that each linear bias does have positiveegative effects in the performance of an LF model. Such effects are partially data dependent; however, some linear biases like the global average can bring stable performance gain into an LF model. The theoretical and empirical results along with analysis provide guidance in designing the bias scheme in an LF model for recommender systems.
机译:由于基于潜因子(LF)的模型能够很好地表示高维和稀疏矩阵,因此已被证明可有效地实施推荐系统。尽管先前的工作着重于通过向其添加线性偏差来提高原始LF模型的预测精度和计算效率,但仍不清楚线性偏差在此类性能增益中的单独作用和组合作用。为了解决这个问题,这项工作彻底研究了先前的线性偏差和训练线性偏差的影响。我们研究了线性偏置不同组合的LF模型的参数更新规则和训练过程。对来自当前使用的工业系统的高维和稀疏矩阵进行经验验证。结果表明,每个线性偏差在LF模型的性能中确实具有正/负影响。这种影响部分取决于数据。但是,某些线性偏差(例如全局平均值)可以为LF模型带来稳定的性能提升。理论和经验结果以及分析为在推荐系统的LF模型中设计偏差方案提供了指导。

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