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Integrating machine learning and open data into social Chatbot for filtering information rumor

机译:将机器学习和开放数据集成到社交聊天中过滤信息谣言

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摘要

Social networks have become a major platform for people to disseminate information, which can include negative rumors. In recent years, rumors on social networks has caused grave problems and considerable damages. We attempted to create a method to verify information from numerous social media messages. We propose a general architecture that integrates machine learning and open data with a Chatbot and is based cloud computing (MLODCCC), which can assist users in evaluating information authenticity on social platforms. The proposed MLODCCC architecture consists of six integrated modules: cloud computing, machine learning, data preparation, open data, chatbot, and intelligent social application modules. Food safety has garnered worldwide attention. Consequently, we used the proposed MLODCCC architecture to develop a Food Safety Information Platform (FSIP) that provides a friendly hyperlink and chatbot interface on Facebook to identify credible food safety information. The performance and accuracy of three binary classification algorithms, namely the decision tree, logistic regression, and support vector machine algorithms, operating in different cloud computing environments were compared. The binary classification accuracy was 0.769, which indicates that the proposed approach accurately classifies using the developed FSIP.
机译:社交网络已成为人们传播信息的主要平台,这可能包括负面谣言。近年来,社交网络的谣言引起了严重的问题和相当大的损害。我们试图创建一种方法来验证来自众多社交媒体消息的信息。我们提出了一般的架构,将机器学习和打开数据与Chatbot集成,并是基于云计算(MLoDCCC),可以帮助用户在社交平台上评估信息真实性。该建议的MLoDCCC架构由六个集成模块组成:云计算,机器学习,数据准备,开放数据,聊天和智能社交应用模块。食品安全在全世界的关注中获得了奖励。因此,我们使用所提出的MLoDCCC架构来开发食品安全信息平台(FSIP),提供在Facebook上提供友好的超链接和Chatbot接口,以确定可靠的食品安全信息。比较了三个二进制分类算法的性能和准确性,即决策树,逻辑回归和支持矢量机算法,在不同云计算环境中操作。二进制分类准确度为0.769,这表明所提出的方法准确地使用开发的FSIP进行分类。

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