Ever wanted to do a kick starter project? Take a look at the data first!
Introduction:
I've often considered starting a kick-starter project for one of the many business ideas I've had. But I've never actually gone through with the process before, like many of you. But earlier today I was browsing kaggle looking through some of their datasets and I came across a kick starter dataset. I decided to explore it a little bit.
I wanted to see how the distribution by country broke down and how things broke down by category as well. I threw it into powerbi to just take a little bit of a look tonight. I might consider loading up R and taking a more in-depth look later.
Distribution by country
I decided to first look at USD dollar amounts and see how it breaks down. I discovered that the US pledges far more in terms of absolute numbers than any other country. So I decided for a more interesting comparison I'd look at the average per country. The greener the country, the higher average pledge amount, black countries have smaller amounts.
Average usd pledged by country
Then I looked at the Average, Max, and Medium amounts pledged by country.
I decided against showing the minimum because... well it was tiny, a few cents.
Duration
Then I looked at the duration of the kick starter campaigns to see which country has the longest contribution periods. I consistently found this odd country called "N,0"" in the dataset. But it's apparently, a real place, not a country, or even a land mass. But a small bouy off the coast of Africa. Further, when when doing the max duration by country I found that the US had somewhere near 2,000 plus days for it's max duration, while the other countries had near 90. I found that within the dataset there were canceled projects which weren't ended after they got canceled, so they had no pledges but just racked up tons of days. I decided to prune that data out because it was an outlier. This shows the importance of cleaning your dataset before you analyze it.
Then finally I looked at amount of backers and how the cateogries broke down
A word cloud of the names used by the projects
Conclusion
Seems like if you want the best chance of getting a funded project, it had better be a game, a technology, or a film/video. As those categories have both the biggest number of backers and largest donations. Just a few thoughts to consider on your way to crowd funding a new business idea!
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To support your work, I also upvoted your post!