基于动态编辑距离的社交网络相关信息提取方法

Q1 Mathematics
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引用次数: 1

摘要

在线社交网络,如Facebook, Twitter, LinkedIn等,随着大量信息的出现,近年来呈指数级增长。这些社交网络拥有大量的数据,尤其是结构化、文本化和非结构化的数据,这些数据经常导致网络恐怖主义、网络欺凌等网络犯罪,从这些数据中提取信息以确保数据安全已经成为一个严峻的挑战。在这项工作中,我们提出了一种新的、有监督的基于远程动态编辑的Web资源信息提取(IE)方法,称为eide。我们的方法是基于掩模提取的IE方法家族的一部分,并围绕三种算法进行阐述:(i)标记算法,(ii)学习和推理算法,以及(iii)扩展编辑距离算法。我们提出的方法能够在元组中存在异常的情况下工作,例如缺少属性、多值属性、属性排列以及网页结构。我们在一个标准的网页数据库上进行的实验研究表明,与基于经典编辑距离的方法相比,我们的eied方法的性能更好,并且与标准指标召回系数、精度和F1-measure有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Editing Distance-based Extracting Relevant Information Approach from Social Networks
Online social networks, such as Facebook, Twitter, LinkedIn, etc., have grown exponentially in recent times with a large amount of information. These social networks have huge volumes of data especially in structured, textual, and unstructured forms which have often led to cyber-crimes like cyber terrorism, cyber bullying, etc., and extracting information from these data has now become a serious challenge in order to ensure the data safety. In this work, we propose a new, supervised approach for Information Extraction (IE) from Web resources based on remote dynamic editing, called EIDED. Our approach is part of the family of IE approaches based on masks extraction and is articulated around three algorithms: (i) a labeling algorithm, (ii) a learning and inference algorithm, and (iii) an extended edit distance algorithm. Our proposed approach is able to work even in the presence of anomalies in the tuples such as missing attributes, multivalued attributes, permutation of attributes, and in the structure of web pages. The experimental study, which we conducted, on a standard database of web pages, shows the performance of our EIDED approach compared to approaches based on the classic edit distance, and this with respect to the standard metrics recall coefficient, precision, and F1-measure.
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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