使用Twitter情绪和谷歌趋势的情绪分析进行决策

Q Social Sciences
E. D’Avanzo, G. Pilato, Miltiadis Demetrios Lytras
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引用次数: 33

摘要

越来越多的知识证明了现实世界现象与谷歌上发布的搜索查询数据之间的相关性,如下面的文献调查所示。本文的目的是介绍一个管道,作为一个web服务实现,它从最近的谷歌趋势开始,允许决策者监控Twitter关于这些趋势的情绪,使用户能够为他们的监视器选择地理区域。除了关于谷歌趋势的积极/消极情绪之外,该管道还提供了在同一个仪表板上查看谷歌趋势在Twitter用户中引发的情绪的能力。这样的一套工具,作为一个整体,允许实时监控Twitter上对谷歌趋势的感受,否则只能属于搜索统计,即使有用。作为一个整体,管道对其追踪的趋势没有预测能力。相反,它旨在为用户提供有关谷歌趋势的指导,正如科学文献所表明的那样,谷歌趋势与许多现实世界的现象(例如流行病学,经济学,政治学)有关。提出的实验框架允许谷歌搜索查询数据和Twitter社交数据的集成。随着谷歌搜索中出现新的趋势,该管道会询问Twitter,以追踪Twitter用户对新趋势的感受和情绪,也包括地理位置。该管道的核心是一个情感分析框架,该框架利用贝叶斯机器学习设备,利用深度自然语言处理模块,将情感和情感取向分配给微博平台上地理定位的推文集合。管道可以作为web服务访问,任何用户都可以使用凭据进行授权。在三个不同的监测任务(即消费电子,医疗保健和政治)中使用管道显示了拟议方法的可行性,以衡量社交媒体对谷歌搜索中出现的趋势的看法和情绪。提出的方法旨在弥合谷歌搜索查询数据和Twitter上出现的关于这些趋势的情绪之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Twitter sentiment and emotions analysis of Google Trends for decisions making
An ever-growing body of knowledge demonstrates the correlation among real-world phenomena and search query data issued on Google, as showed in the literature survey introduced in the following. The purpose of this paper is to introduce a pipeline, implemented as a web service, which, starting with recent Google Trends, allows a decision maker to monitor Twitter’s sentiment regarding these trends, enabling users to choose geographic areas for their monitors. In addition to the positive/negative sentiments about Google Trends, the pipeline offers the ability to view, on the same dashboard, the emotions that Google Trends triggers in the Twitter population. Such a set of tools, allows, as a whole, monitoring real-time on Twitter the feelings about Google Trends that would otherwise only fall into search statistics, even if useful. As a whole, the pipeline has no claim of prediction over the trends it tracks. Instead, it aims to provide a user with guidance about Google Trends, which, as the scientific literature demonstrates, is related to many real-world phenomena (e.g. epidemiology, economy, political science).,The proposed experimental framework allows the integration of Google search query data and Twitter social data. As new trends emerge in Google searches, the pipeline interrogates Twitter to track, also geographically, the feelings and emotions of Twitter users about new trends. The core of the pipeline is represented by a sentiment analysis framework that make use of a Bayesian machine learning device exploiting deep natural language processing modules to assign emotions and sentiment orientations to a collection of tweets geolocalized on the microblogging platform. The pipeline is accessible as a web service for any user authorized with credentials.,The employment of the pipeline for three different monitoring task (i.e. consumer electronics, healthcare, and politics) shows the plausibility of the proposed approach in order to measure social media sentiments and emotions concerning the trends emerged on Google searches.,The proposed approach aims to bridge the gap among Google search query data and sentiments that emerge on Twitter about these trends.
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来源期刊
Program-Electronic Library and Information Systems
Program-Electronic Library and Information Systems 工程技术-计算机:信息系统
CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: ■Automation of library and information services ■Storage and retrieval of all forms of electronic information ■Delivery of information to end users ■Database design and management ■Techniques for storing and distributing information ■Networking and communications technology ■The Internet ■User interface design ■Procurement of systems ■User training and support ■System evaluation
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