Dimension Reduction Methods for Collaborative Mobile Gossip Learning

Árpád Berta, István Hegedüs, Márk Jelasity
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引用次数: 8

Abstract

Decentralized learning algorithms are very sensitive to the size of the raw data records due to the resulting large communication cost. This can, in the worst case, even make decentralized learning infeasible. Dimension reduction is a key technique to compress data and to obtain small models. In this paper, we propose a number of robust and efficient decentralized approaches to dimension reduction in the system model where each network node holds only one data record. These algorithms build on searching for good random projections. We present a thorough experimental comparison of the proposed algorithms and compare them with a variant of distributed singular value decomposition (SVD), a state-of-the-art algorithm for dimension reduction. We base our experiments on a trace of real mobile phone usage. We conclude that our method based on selecting good random projections is preferable and provides good quality results when the output is required on a very short timescale, within tens of minutes. We also present a hybrid method that combines the advantages of random projections and SVD. We demonstrate that the hybrid method offers good performance over all timescales.
协同移动八卦学习的降维方法
分散学习算法对原始数据记录的大小非常敏感,因为由此产生的通信成本很大。在最坏的情况下,这甚至会使分散学习变得不可行。降维是数据压缩和获得小模型的关键技术。在本文中,我们提出了许多鲁棒且高效的分散方法来降低系统模型中的维度,其中每个网络节点仅保存一条数据记录。这些算法建立在寻找好的随机投影的基础上。我们对所提出的算法进行了彻底的实验比较,并将它们与分布式奇异值分解(SVD)的变体进行了比较,SVD是一种最先进的降维算法。我们的实验是基于手机的真实使用情况。我们的结论是,我们基于选择好的随机预测的方法是可取的,并且当需要在很短的时间尺度(在几十分钟内)输出时,我们的方法提供了高质量的结果。我们还提出了一种结合随机投影和奇异值分解优点的混合方法。我们证明了混合方法在所有时间尺度上都具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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