基于PySpark的大规模大数据管理的分布式Gibbs采样和LDA建模

Christos N. Karras, Aristeidis Karras, D. Tsolis, K. Giotopoulos, S. Sioutas
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引用次数: 5

摘要

大数据管理方法在现代时代是至关重要的,因为应用程序往往会创建来自各种来源的大量数据。因此,迫切需要创建能够有效处理大量数据集的自适应、快速和健壮的框架。像Apache Spark这样的分布式环境是值得注意的,因为它们可以通过创建集群来处理这些数据,其中一部分数据存储在本地,然后使用弹性分布式数据集(rdd)返回结果。本文利用Metropolis Hastings Random Walker在PySpark上实现了广泛应用的潜在狄利克雷分配(latent Dirichlet allocation, LDA)模型的分布式边际Gibbs抽样方法。分布式LDA (Distributed LDA)算法将给定的数据集分布到P个分区中,并在每个分区上独立地对每个文档执行本地LDA。在每第n次迭代中,对在不同分区上训练的局部LDA模型进行组合,以确保模型的收敛能力。实验结果是有希望的,因为所提出的系统在最终模型质量方面表现出与顺序LDA相当的性能,并且在使用大量数据集时实现了显着的加速时间优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Gibbs Sampling and LDA Modelling for Large Scale Big Data Management on PySpark
Big data management methods are paramount in the modern era as applications tend to create massive amounts of data that comes from various sources. Therefore, there is an urge to create adaptive, speedy and robust frameworks that can effectively handle massive datasets. Distributed environments such as Apache Spark are of note, as they can handle such data by creating clusters where a portion of the data is stored locally and then the results are returned with the use of Resilient Distributed Datasets (RDDs). In this paper a method for distributed marginal Gibbs sampling for widely used latent Dirichlet allocation (LDA) model is implemented on PySpark along with a Metropolis Hastings Random Walker. The Distributed LDA (DLDA) algorithm distributes a given dataset into P partitions and performs local LDA on each partition, for each document independently. Every nth iteration, local LDA models, that were trained on distinct partitions, are combined to assure the model ability to converge. Experimental results are promising as the proposed system demonstrates comparable performance in the final model quality to the sequential LDA, and achieves significant speedup time-optimizations when utilized with massive datasets.
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期刊介绍: Computer Engineering and Design is supervised by China Aerospace Science and Industry Corporation and sponsored by the 706th Institute of the Second Academy of China Aerospace Science and Industry Corporation. It was founded in 1980. The purpose of the journal is to disseminate new technologies and promote academic exchanges. Since its inception, it has adhered to the principle of combining depth and breadth, theory and application, and focused on reporting cutting-edge and hot computer technologies. The journal accepts academic papers with innovative and independent academic insights, including papers on fund projects, award-winning research papers, outstanding papers at academic conferences, doctoral and master's theses, etc.
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