Daniel A. Collier, Shubhanshu Mishra, Derek A. Houston, Brandon O. Hensley, Scott Mitchell, Nicholas D. Hartlep
{"title":"Who is Most Likely to Oppose Federal Tuition-Free College Policies? Investigating Variable Interactions of Sentiments to America’s College Promise","authors":"Daniel A. Collier, Shubhanshu Mishra, Derek A. Houston, Brandon O. Hensley, Scott Mitchell, Nicholas D. Hartlep","doi":"10.2139/ssrn.3423054","DOIUrl":null,"url":null,"abstract":"With the conclusion of the 2016 election, Americans were questioning if race and gender identity differences are as prevalent as the election suggests. Attempting to answer that question as it pertains to higher education policy and drawing inspiration from Social Identity Theory, this research utilized thousands of social media comments to analyze the likelihood of standing against the tuition-free policy, America’s College Promise, as determined by source, gender, and race and subsequent variable interactions. To investigate these likelihoods a binomial logistic regression model was calculated. Using marginal estimates, results suggest that separately race and gender are influential factors and of the four sources examined comments from the Fox News source was clearly different than the other three. For most interactions, race is the most dominant influence followed by gender – until interacting with the Fox News source. Next, Bag of Words models were generated to capture tokens (words and phrases) associated to source, gender, and race - and for variable interactions. Uncovered tokens illustrate several obvious differences between political identities and provides nuance to findings and discussion presented. This research concludes by discussing the importance of findings as it relates to intersections of crafting higher education policy and understanding identity differences.","PeriodicalId":188909,"journal":{"name":"EduRN: Other Educational Organization (Topic)","volume":"13 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-07-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"EduRN: Other Educational Organization (Topic)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2139/ssrn.3423054","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 3
Abstract
With the conclusion of the 2016 election, Americans were questioning if race and gender identity differences are as prevalent as the election suggests. Attempting to answer that question as it pertains to higher education policy and drawing inspiration from Social Identity Theory, this research utilized thousands of social media comments to analyze the likelihood of standing against the tuition-free policy, America’s College Promise, as determined by source, gender, and race and subsequent variable interactions. To investigate these likelihoods a binomial logistic regression model was calculated. Using marginal estimates, results suggest that separately race and gender are influential factors and of the four sources examined comments from the Fox News source was clearly different than the other three. For most interactions, race is the most dominant influence followed by gender – until interacting with the Fox News source. Next, Bag of Words models were generated to capture tokens (words and phrases) associated to source, gender, and race - and for variable interactions. Uncovered tokens illustrate several obvious differences between political identities and provides nuance to findings and discussion presented. This research concludes by discussing the importance of findings as it relates to intersections of crafting higher education policy and understanding identity differences.
随着2016年大选的结束,美国人开始质疑种族和性别认同差异是否像选举所显示的那样普遍。为了回答这个与高等教育政策有关的问题,并从社会认同理论中汲取灵感,这项研究利用了数千条社交媒体评论来分析反对免学费政策——美国大学承诺——的可能性,这是由来源、性别、种族和随后的可变互动决定的。为了研究这些可能性,我们计算了二项逻辑回归模型。使用边际估计,结果表明,种族和性别分别是影响因素,在被审查的四个消息来源中,福克斯新闻来源的评论明显不同于其他三个。在大多数互动中,种族是最主要的影响因素,其次是性别——直到与福克斯新闻的互动。接下来,生成Bag of Words模型来捕获与来源、性别和种族相关的标记(单词和短语),并用于可变的交互。未覆盖的标记说明了政治身份之间的几个明显差异,并提供了所提出的发现和讨论的细微差别。本研究最后讨论了研究结果的重要性,因为它涉及到制定高等教育政策和理解身份差异的交叉点。