An Efficient Keywords Search in Temporal Social Networks

IF 5.1 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Science and Engineering Pub Date : 2023-09-09 DOI:10.1007/s41019-023-00218-7
Youming Ge, Zitong Chen, Yubao Liu
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引用次数: 1

Abstract

Abstract With the increasing of requirements from many aspects, various queries and analyses arise focusing on social network. Time is a common and necessary dimension in various types of social networks. Social networks with time information are called temporal social networks, in which time information can be the time when a user sends message to another user. Keywords search in temporal social networks consists of finding relationships between a group users that has a set of query labels and is valid within the query time interval. It provides assistance in social network analysis, classification of social network users, community detection, etc. However, the existing methods have limitations in solving temporal social network keyword search problems. We propose a basic algorithm, the discrete timestamp algorithm, with the intention of turning the problem into a traditional keyword search on social networks. We also propose an approximative algorithm based on the discrete timestamp algorithm, but it still suffers from the traditional algorithms’ low efficiency. To further improve the performance, we propose a new algorithm based on dynamic programming to solve the keyword search in temporal social network. The main idea is to extend a vertex into a solution by edge-growth operation and tree-merger operation. We also propose two powerful pruning techniques to reduce the intermediate results during the extension. Additionally, all of the algorithms we proposed are capable of handling a variety of ranking functions, and all of them can be made to conform to top-N keyword querying. The efficiency and effectiveness of the proposed algorithms are verified through extensive empirical studies.
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时间社会网络中一种高效的关键词搜索方法
随着各方面需求的增加,针对社交网络出现了各种各样的查询和分析。在各种类型的社交网络中,时间是一个常见且必要的维度。具有时间信息的社交网络称为时态社交网络,其中时间信息可以是一个用户向另一个用户发送消息的时间。时态社交网络中的关键字搜索包括查找具有一组查询标签且在查询时间间隔内有效的用户组之间的关系。它在社交网络分析、社交网络用户分类、社区检测等方面提供帮助。然而,现有的方法在解决时态社会网络关键词搜索问题时存在局限性。我们提出了一种基本算法,即离散时间戳算法,旨在将该问题转化为传统的社交网络上的关键字搜索。我们还提出了一种基于离散时间戳算法的近似算法,但它仍然存在传统算法效率低的缺点。为了进一步提高性能,我们提出了一种新的基于动态规划的算法来解决时态社交网络中的关键字搜索问题。其主要思想是通过边生长操作和树合并操作将一个顶点扩展成一个解。我们还提出了两种强大的修剪技术来减少扩展过程中的中间结果。此外,我们提出的所有算法都能够处理各种排序函数,并且所有算法都可以符合top-N关键字查询。通过大量的实证研究验证了所提出算法的效率和有效性。
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来源期刊
Data Science and Engineering
Data Science and Engineering Engineering-Computational Mechanics
CiteScore
10.40
自引率
2.40%
发文量
26
审稿时长
12 weeks
期刊介绍: The journal of Data Science and Engineering (DSE) responds to the remarkable change in the focus of information technology development from CPU-intensive computation to data-intensive computation, where the effective application of data, especially big data, becomes vital. The emerging discipline data science and engineering, an interdisciplinary field integrating theories and methods from computer science, statistics, information science, and other fields, focuses on the foundations and engineering of efficient and effective techniques and systems for data collection and management, for data integration and correlation, for information and knowledge extraction from massive data sets, and for data use in different application domains. Focusing on the theoretical background and advanced engineering approaches, DSE aims to offer a prime forum for researchers, professionals, and industrial practitioners to share their knowledge in this rapidly growing area. It provides in-depth coverage of the latest advances in the closely related fields of data science and data engineering. More specifically, DSE covers four areas: (i) the data itself, i.e., the nature and quality of the data, especially big data; (ii) the principles of information extraction from data, especially big data; (iii) the theory behind data-intensive computing; and (iv) the techniques and systems used to analyze and manage big data. DSE welcomes papers that explore the above subjects. Specific topics include, but are not limited to: (a) the nature and quality of data, (b) the computational complexity of data-intensive computing,(c) new methods for the design and analysis of the algorithms for solving problems with big data input,(d) collection and integration of data collected from internet and sensing devises or sensor networks, (e) representation, modeling, and visualization of  big data,(f)  storage, transmission, and management of big data,(g) methods and algorithms of  data intensive computing, such asmining big data,online analysis processing of big data,big data-based machine learning, big data based decision-making, statistical computation of big data, graph-theoretic computation of big data, linear algebraic computation of big data, and  big data-based optimization. (h) hardware systems and software systems for data-intensive computing, (i) data security, privacy, and trust, and(j) novel applications of big data.
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