DiFacto:分布式分解机器

Mu Li, Ziqi Liu, Alex Smola, Yu-Xiang Wang
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引用次数: 55

摘要

因式分解机提供了良好的性能和有用的数据嵌入。然而,它们在扩展到大量数据和大量特性时成本很高。本文描述了DiFacto,它使用一种改进的分解机模型,具有稀疏内存自适应约束和频率自适应正则化。我们将展示如何使用Parameter Server框架在多台机器上通过异步计算minibatch上的分布式子梯度来分发DiFacto。我们分析了它的收敛性,并证明了它在具有数十亿个示例和特征的计算广告数据集上的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DiFacto: Distributed Factorization Machines
Factorization Machines offer good performance and useful embeddings of data. However, they are costly to scale to large amounts of data and large numbers of features. In this paper we describe DiFacto, which uses a refined Factorization Machine model with sparse memory adaptive constraints and frequency adaptive regularization. We show how to distribute DiFacto over multiple machines using the Parameter Server framework by computing distributed subgradients on minibatches asynchronously. We analyze its convergence and demonstrate its efficiency in computational advertising datasets with billions examples and features.
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