Training Streaming Factorization Machines with Alternating Least Squares

Xueyu Mao, Saayan Mitra, Sheng Li
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引用次数: 0

Abstract

Factorization Machines (FM) have been widely applied in industrial applications for recommendations. Traditionally FM models are trained in batch mode, which entails training the model with large datasets every few hours or days. Such training procedure cannot capture the trends evolving in real time with large volume of streaming data. In this paper, we propose an online training scheme for FM with the alternating least squares (ALS) technique, which has comparable performance with existing batch training algorithms. We incorporate an online update mechanism to the model parameters at the cost of storing a small cache. The mechanism also stabilizes the training error more than a traditional online training technique like stochastic gradient descent (SGD) as data points come in, which is crucial for real-time applications. Experiments on large scale datasets validate the efficiency and robustness of our method.
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交替最小二乘训练流分解机
因式分解机(FM)在工业应用中得到了广泛的应用。传统的FM模型是以批处理模式训练的,这需要每隔几个小时或几天用大型数据集训练模型。这样的训练过程在大量流数据的情况下,无法实时捕捉变化的趋势。本文提出了一种基于交替最小二乘(ALS)技术的FM在线训练方案,该方案与现有的批处理训练算法性能相当。我们将在线更新机制整合到模型参数中,代价是存储一个小缓存。随着数据点的输入,该机制比传统的在线训练技术(如随机梯度下降(SGD))更能稳定训练误差,这对实时应用至关重要。大规模数据集实验验证了该方法的有效性和鲁棒性。
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