Kim Kardashian's Tweets
Tracking Changes in Engagement Over Time
By Twitter [source]
About this dataset
This dataset provides an illuminating insight into the social media reach of Kim Kardashian through analysis of her tweets and the amount of engagement they generate. Analyzing likes, retweets, replies, and quotes for each tweet allows insightful comparison into the discourse created from her posts over time. With this data, researchers can pinpoint public responses to different topics or issues over different months, as well as their sentiment. Through visualizing these engagement numbers over time it is possible to gain understanding into how Kim influences conversation in her industry and beyond. This dataset promises to be an invaluable resource for examining public reaction on a range of issues and understanding why so much power is held by one voice in our society today
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How to use the dataset
How to Use This Dataset
This dataset provides an in-depth analysis of the engagement Kim Kardashian's tweets have received on social media. In order to gain insights from this data, there are several steps you can take that rely on visualizing the numbers with appropriate charts and diagrams.
To start, you will want to clean up the data by organizing it into categories by month or topic. You might even choose to sort by Kim's followers via demographic or other relevant factors such as where she is mentioned in posts and how many shares, etc. An organized layout will make it easier for further visualization and analysis.
Once the data is sorted it’s time to create visuals that allow quick comparisons between different months/topics or changes over time in engagements per tweet per post type (likes/retweets/replies/etc). Examples of these visuals may include line graphs showing change over time, scatterplots showing how different topics relate when it comes to engagement levels, or bar graphs comparing key metrics across posts types. Other types of visualizations are also possible depending on what information you would like to extract from this dataset.
Pulling out any insights drawn from these visuals can provide useful information when analyzing Kim’s presence on social media platforms and her influence upon public opinion & discourse surrounding various issues across a given period of time based on engagement with each individual post she makes - allowing powerful conclusions to be drawn when looking at both current events & long-term trends related directly & indirectly connected with her brand awareness & presence in pop culture today!
Research Ideas
- Comparing Impact of Different Messages: This dataset can be used to compare the impact of different messages that Kim tweeted, such as her opinion on contentious topics or support for various initiatives. By comparing likes, retweets, replies and quotes by month or another time period, it is possible to determine which messages are resonating with her followers and have more influence in public discourse.
- Understanding Followers & Detractors Sentiment: Through a combined analysis of both tweet content and engagement data it might be possible to explore sentiment among fans through likes/retweets versus those who are displeased with current happenings through their replies/quotes range. This offers an interesting insight into the individuals opinion on certain issues since they've interacted directly with Kim’s work whereas simply looking at tweet content alone can often leave questions unanswered about how much agreement/disagreement there might actually be surrounding a given topic
Acknowledgements
If you use this dataset in your research, please credit the original authors.
Data Source
License
License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication
No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.
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Acknowledgements
If you use this dataset in your research, please credit the original authors.
If you use this dataset in your research, please credit Twitter.