识别误导信息来源,通过屏蔽用户阻止传播

Girishkumar K. Patnaik, Akash D. Waghmare, Dinesh
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引用次数: 0

摘要

导读:目前,人们越来越依赖于互联网资源的任何种类的信息或新闻。因此,新闻/信息需要保存,不应被任何用户修改。为新闻数据提供安全性是一个主要问题。为了加强新闻的安全性,采用了区块链的去中心化方法。现有的区块链框架提供了开放性、防篡改性、私密性、控制信息和监视功能,在提议的工作中得到继承。确切地说,这个想法是建立一个安全的平台,可以在社交媒体平台上发现虚假新闻。即使环境是脆弱的,基于区块链的去中心化点对点环境也为发布的信息提供了安全性。目标:由于最近计算机技术领域的创新和进步,社交媒体网络已经成为当代人类生存中最重要的方面之一。社交媒体已经发展成为众所周知的信息传播和新闻平台,以及日常报道的平台。社交媒体有很多好处;但是,反过来说,有很多误导性的新闻和数据会误导读者。社交媒体的一个主要问题是,可以依赖的信息和真实的世界新闻一样缺乏。由于社交媒体上的误导性新闻,用户被误导了。因此,为了建立一个信任的环境,早期发现误导性新闻是必要的。创新的机器学习方法有助于更准确地识别和识别误导性新闻。方法:误导性新闻比真实新闻更具病毒性。人们很快就相信了错误的信息。因此,有必要减少社交媒体上误导性信息的传播。为了最大限度地减少误导性新闻的传播,需要追踪新闻的来源。总的来说,所提出的系统利用区块链并应用所提出的机器学习方法来识别误导性新闻,然后通过阻止虚假用户来减少误导性信息的传播。结果:实验分析表明,本文提出的分类算法具有较好的准确率。为了产生有用的训练规则和评估测试分类器,从数据输入中提取了许多特征,如TF-IDF、N-Gram特征和面向依赖的NLP特征。结论:提出的方法分析每个用户上传的信息,识别欺诈用户,通过屏蔽用户减少虚假信息的传播。
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Identification of Source of Misleading Information and Stop the Dissemination through Blocking the User
Introduction: At present, people are more dependent on Internet sources for any sort of information or news. So, the news/information needs to be preserved and should not be modified by any user. Providing security for the news data is a major concern. The decentralized approach of a chain of blocks is used in order to strengthen the security of the news. The existing blockchain framework that offers openness, tamper-proofing, privacy, controlling information, and monitoring is inherited in the proposed work. Precisely, the idea is to build a safe platform that can detect bogus news on social media platforms. Even if the environment is fragile, the chain of blocks-based decentralised peer-to-peer environment provides security to the published information. Objectives: As a result of recent innovations and advancements in the field of computer technology, social media networks have emerged as one of the most crucial aspects of contemporary human existence. Social media has developed into a well-known platform for information dissemination and news, as well as for daily reports. There are a variety of benefits associated with social media; but, on the converse, there is a great deal of misleading news and data that can mislead the reader. One of the major issues with social media is that there is a dearth of information that can be relied on as well as real world news. Because of misleading news on social media, users are misled. So, to build a trustful environment, early detection of misleading news is necessary. Innovative machine learning methodologies are useful to identify and recognize misleading news more accurately. Methods: Misleading news is more viral than real news. People instantly believe on the false information. So, there is a need to reduce the dissemination of misleading information on social media. In order to minimize the spread of misleading news, the source of the news needs to be traced. In overall, proposed system utilizes the chain of blocks and applies proposed machine learning methodologies in order to identify misleading news and thereafter reduce the propagation of misleading information by blocking the fake user.   Results: An experimental analysis reveals that the proposed classification algorithm obtains a better accuracy rate. In order to produce useful training rules and evaluate the test classifier, a number of features are extracted like TF-IDF, N-Gram features, and dependency-oriented NLP features from the data input. Conclusions: The proposed method analyzes every user's uploaded information, identify fraudulent users and reduce the propagation of false information by blocking the user.
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