Cascaded Semantic Fractionation for identifying a domain in social media

James Danowski, Ken Riopelle, Bei Yan
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Abstract

Searching social media to find relevant semantic domains often results in large text files, many of which are irrelevant due to cross-domain content resulting from word polysemy, abstractness, and degree centrality. Through an iterative pruning process, Cascaded Semantic Fractionation (CSF) systematically removes these cross-domain links. The social network procedure performs community detection in semantic networks, locates the semantic groups containing the terms of interest, excludes intergroup links, and repeats community detection on the pruned intragroup network until the domain of interest is clarified. To illustrate CSF, we analyzed public Facebook posts, using the CrowdTangle app for historical data search, from February 3, 2020, to March 13, 2021, about the possible Wuhan lab leak of COVID-19 over a daily interval. The initial search using keywords located six multi-day bursts of posts of more than 500 per day among 95 K posts. These posts were network analyzed to find the domain of interest using the iterative community detection and pruning process. CSF can be applied to capture the evolutions in semantic domains over time. At the outset, the lab leak theory was presented in conspiracy theory terms. Over time, the conspiratorial elements washed out in favor of an accidental release as the issue moved from social to mainstream media and official government views. CSF identified the relevant social media semantic domain and tracked its changes.
级联语义分割法识别社交媒体中的领域
通过搜索社交媒体来查找相关语义域往往会产生大量文本文件,其中许多都是由于单词多义性、抽象性和程度中心性导致的跨域内容而变得无关紧要。通过迭代剪枝过程,级联语义分馏(CSF)系统地删除了这些跨域链接。该社会网络程序在语义网络中执行社群检测,找到包含相关术语的语义组,排除组间链接,并在剪枝后的组内网络上重复进行社群检测,直至明确相关领域。为了说明 CSF,我们使用 CrowdTangle 应用程序进行历史数据搜索,分析了 2020 年 2 月 3 日至 2021 年 3 月 13 日期间 Facebook 上关于 COVID-19 可能在武汉实验室泄漏的每日间隔的公开帖子。使用关键词进行的初步搜索在 95 K 个帖子中找到了 6 个多日突发帖子,每天超过 500 个。通过对这些帖子进行网络分析,使用迭代社区检测和剪枝过程找到了感兴趣的领域。CSF 可用于捕捉语义域随时间的演变。一开始,实验室泄密理论是用阴谋论的术语来表述的。随着时间的推移,阴谋论元素逐渐消失,转而支持意外泄漏,因为这一问题已经从社交媒体转向主流媒体和政府官方观点。CSF 确定了相关的社交媒体语义域并跟踪其变化。
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来源期刊
CiteScore
3.50
自引率
0.00%
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审稿时长
14 weeks
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