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#Metoo: People’s concerns, emotions, and shared information on Twitter
Tahamtan, Iman
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https://hdl.handle.net/2142/105381
Description
- Title
- #Metoo: People’s concerns, emotions, and shared information on Twitter
- Author(s)
- Tahamtan, Iman
- Issue Date
- 2019-09-24
- Keyword(s)
- Sexual harassment
- Sexual assault
- #metoo
- Social movement
- Text mining
- Social networks
- Social media
- Abstract
- This study uses text mining to explore the tweets posted and shared by people regarding the #MeToo movement. We used the Twitter’s Application Programming Interface (API) to collect English language tweets that contained #MeToo or MeToo keywords. Using RStudio, 17956 tweets (re-tweets excluded) were retrieved and analyzed. The data was cleaned, tweets with more than 5 hashtags and screen names with multiple tweets were excluded, resulting in 10952 tweets. The most frequently shared words were #metoo (n=10701), women (n=2728), movement (n=1879), sexual (n=1330), harassment (n=818), rape (n=724), accused (n=717), don’t (n=678), people (635), and stand (n=510). The most frequent negative sentiments were harassment (n=638), rape (n=575), assault (n=280), abuse (n=239), afraid (n=212), uncomfortable (n=172), allegations (n=165), bad (n=136), hurts (n=136) and wrong (n=133). The top positive sentiments were support (n=223), love (n=119), powerful (n=86), golden (n=73), survivor (n=68), respect (64), safe (57), free (53), protect (53) and supporting (n=50). The network analysis of keywords with a correlation of higher than 0.6 demonstrated 5 clusters of keywords: {study, hurts, mentor, afraid, @nypost}, {#metoo, forces, legal, test}, {represent, caught, middle, accusers, unions}, {#fightfor15, standing, UK, workers, fighting}, and {teaching, consent, debate, kids}. Results demonstrated the major topics shared by people on Twitter regarding sexual harassment and the MeToo movement. For example, one cluster pointed to a recent study which indicated managers are afraid of mentoring women after the #MeToo movement.
- Series/Report Name or Number
- Machine learning
- Social media
- Information use
- Data visualization
- Big data
- Type of Resource
- text
- Permalink
- http://hdl.handle.net/2142/105381
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