What Twitter is saying about Women in Technology

Kelsey M Stephens, Kodey Crandall
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Abstract

As technology continues to evolve and expand, the number of women in technology-related fields remains devastatingly low. Consequently, it is vital to determine the reasons why women are hesitant to enter these fields or leave upon entering. In addition to this, it is essential to understand the current experiences and conversations surrounding women in technology to determine what changes are needed. This paper analyzes Twitter data, including tweets and Twitter profile information. Tweets containing hashtags related to women in technology to answer the research questions, “What are the current perceptions of women in technology?” and “Are the conversations about women in technology negatively or positively influencing women to enter this field?” Approximately 200 tweets containing user profile information and hashtags were collected and analyzed to determine the diverse interests, skills, and views of women in the industry and their experiences within the field of technology. The results of this study may allow for industry stereotypes to be diminished and provide insight into the challenges and successes of women in the field.
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推特是怎么说科技界女性的
随着技术的不断发展和扩展,在技术相关领域工作的女性人数仍然非常少。因此,确定女性对进入这些领域犹豫不决或一进入就离开的原因是至关重要的。除此之外,有必要了解当前围绕技术领域女性的经验和对话,以确定需要做出哪些改变。本文分析Twitter数据,包括tweets和Twitter个人资料信息。包含与科技女性相关标签的推文,以回答研究问题,“目前对科技女性的看法是什么?”以及“关于科技领域女性的讨论对女性进入这一领域的影响是消极的还是积极的?”收集并分析了大约200条包含用户个人资料信息和标签的推文,以确定该行业中女性的不同兴趣、技能和观点以及她们在技术领域的经验。这项研究的结果可能会减少对行业的刻板印象,并为妇女在该领域的挑战和成功提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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