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Public Perception of Autonomous Mobility Using ML-Based Sentiment Analysis over Social Media Data

机译:在社交媒体数据中使用基于ML的情感分析的公众对自主流动性的认识

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The purpose of this article is to present a framework for capturing and analyzing social media posts using a sentiment analysis tool to determine the views of the general public towards autonomous mobility. The paper presents the systems used and the results of this analysis, which was performed on social media posts from Twitter and Reddit. To achieve this, a specialized lexicon of terms was used to query social media content from the dedicated application programming interfaces (APIs) that the aforementioned social media platforms provide. The captured posts were then analyzed using a sentiment analysis framework, developed using state-of-the-art deep machine learning (ML) models. This framework provides labeling for the captured posts based on their content (i.e., classifies them as positive or negative opinions). The results of this classification were used to identify fears and autonomous mobility aspects that affect negative opinions. This method can provide a more realistic view of the general public’s perception of automated mobility, as it has the ability to analyze thousands of opinions and encapsulate the users’ opinion in a semi-automated way.
机译:本文的目的是使用情绪分析工具展示一个捕获和分析社交媒体帖子的框架,以确定公众对自主移动性的一般性。本文介绍了所使用的系统和该分析的结果,这些分析是在来自Twitter和Reddit的社交媒体帖子上进行的。为此,术语的专门词典用于查询上述社交媒体平台提供的专用应用程序编程接口(API)的社交媒体内容。然后使用情感分析框架分析捕获的帖子,使用最先进的深机械学习(ML)模型开发。此框架根据其内容提供捕获的帖子的标签(即,将它们分类为正面或负面意见)。该分类的结果用于识别影响负面意见的恐惧和自主行动方面。这种方法可以提供一般的公众和rsquo的逼真观点,因为它具有自动流动性的看法,因为它有能力分析数千点意见并封装用户和rsquo;以半自动化方式意见。

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