A MapReduce-Based Approach for Fast Connected Components Detection from Large-Scale Networks.

IF 2.6 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Big Data Pub Date : 2024-01-29 DOI:10.1089/big.2022.0264
Sajid Yousuf Bhat, Muhammad Abulaish
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Abstract

Owing to increasing size of the real-world networks, their processing using classical techniques has become infeasible. The amount of storage and central processing unit time required for processing large networks is far beyond the capabilities of a high-end computing machine. Moreover, real-world network data are generally distributed in nature because they are collected and stored on distributed platforms. This has popularized the use of the MapReduce, a distributed data processing framework, for analyzing real-world network data. Existing MapReduce-based methods for connected components detection mainly struggle to minimize the number of MapReduce rounds and the amount of data generated and forwarded to the subsequent rounds. This article presents an efficient MapReduce-based approach for finding connected components, which does not forward the complete set of connected components to the subsequent rounds; instead, it writes them to the Hadoop Distributed File System as soon as they are found to reduce the amount of data forwarded to the subsequent rounds. It also presents an application of the proposed method in contact tracing. The proposed method is evaluated on several network data sets and compared with two state-of-the-art methods. The empirical results reveal that the proposed method performs significantly better and is scalable to find connected components in large-scale networks.

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基于 MapReduce 的大规模网络连接组件快速检测方法。
由于现实世界的网络规模越来越大,使用传统技术处理这些网络已经变得不可行。处理大型网络所需的存储量和中央处理单元时间远远超出了高端计算机的能力。此外,现实世界的网络数据通常是分布式的,因为它们是在分布式平台上收集和存储的。因此,使用分布式数据处理框架 MapReduce 来分析现实世界的网络数据得到了普及。现有的基于 MapReduce 的连接组件检测方法主要致力于尽量减少 MapReduce 轮数以及生成并转发到后续轮的数据量。本文提出了一种高效的基于 MapReduce 的查找连接组件的方法,该方法不会将连接组件的完整集合转发给后续轮次,而是在找到连接组件后立即将其写入 Hadoop 分布式文件系统,以减少转发给后续轮次的数据量。报告还介绍了所提方法在接触追踪中的应用。本文在多个网络数据集上对所提出的方法进行了评估,并将其与两种最先进的方法进行了比较。实证结果表明,所提出的方法在大规模网络中寻找连接组件方面表现明显更好,并且具有可扩展性。
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来源期刊
Big Data
Big Data COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
9.10
自引率
2.20%
发文量
60
期刊介绍: Big Data is the leading peer-reviewed journal covering the challenges and opportunities in collecting, analyzing, and disseminating vast amounts of data. The Journal addresses questions surrounding this powerful and growing field of data science and facilitates the efforts of researchers, business managers, analysts, developers, data scientists, physicists, statisticians, infrastructure developers, academics, and policymakers to improve operations, profitability, and communications within their businesses and institutions. Spanning a broad array of disciplines focusing on novel big data technologies, policies, and innovations, the Journal brings together the community to address current challenges and enforce effective efforts to organize, store, disseminate, protect, manipulate, and, most importantly, find the most effective strategies to make this incredible amount of information work to benefit society, industry, academia, and government. Big Data coverage includes: Big data industry standards, New technologies being developed specifically for big data, Data acquisition, cleaning, distribution, and best practices, Data protection, privacy, and policy, Business interests from research to product, The changing role of business intelligence, Visualization and design principles of big data infrastructures, Physical interfaces and robotics, Social networking advantages for Facebook, Twitter, Amazon, Google, etc, Opportunities around big data and how companies can harness it to their advantage.
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