预测公众对毒品合法化的看法:社会媒体分析和消费趋势

F. Motlagh, Saeedeh Shekarpour, A. Sheth, K. Thirunarayan, M. Raymer
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引用次数: 1

摘要

在本文中,我们专注于收集和分析各州的相关Twitter数据,以(i)通过挖掘Twitter数据中的情绪来衡量公众对大麻合法化的看法,以及(ii)确定六种不同类型大麻的使用趋势。我们克服了推文的非正式和不符合语法的性质所带来的挑战,分析了在2015年11月俄亥俄州大麻合法化投票之前和美国所有州选举后四个月内收集的306,835条相关推文的语料库。我们的分析揭示了两个关键的见解:(i)与药用大麻合法化或根本没有大麻合法化的州相比,娱乐性大麻合法化州的人们对大麻表达了更多的积极情绪;(二)对大麻持积极态度比例较高的州更倾向于授权(例如,允许医用大麻)或扩大其合法使用(例如,允许除医用大麻外的娱乐性大麻)。我们的分析表明,社交媒体可以提供可靠的信息,可以作为传统的毒品使用民意调查和流行病学研究的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Public Opinion on Drug Legalization: Social Media Analysis and Consumption Trends
In this paper, we focus on the collection and analysis of relevant Twitter data on a state-by-state basis for (i) measuring public opinion on marijuana legalization by mining sentiment in Twitter data and (ii) determining the usage trends for six distinct types of marijuana. We overcome the challenges posed by the informal and ungrammatical nature of tweets to analyze a corpus of 306,835 relevant tweets collected over the four-month period, preceding the November 2015 Ohio Marijuana Legalization ballot and the four months after the election for all states in the US. Our analysis revealed two key insights: (i) the people in states that have legalized recreational marijuana express greater positive sentiments about marijuana than the people in states that have either legalized medicinal marijuana or have not legalized marijuana at all; (ii) the states that have a high percentage of positive sentiment about marijuana is more inclined to authorize (e.g., by allowing medical marijuana) or broaden its legal usage (e.g., by allowing recreational marijuana in addition to medical marijuana). Our analysis shows that social media can provide reliable information and can serve as an alternative to traditional polling of public opinion on drug use and epidemiology research.
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