Is vinted.cz converting its users into buyers effectively?
Vinted.cz is one of the top e-commerce site in Czech republic (ranked 174 in Czech republic). 2.1 million users visit this site every month. But, only 2.5% of these users buy products. We rate its effectiveness 4.7 out of 10. [1]
Visitors 2.1 million |
Registered 15% |
Enagaged 10% |
Buyers 2.5% |
|||||
Anonymous - 85% |
Unengaged - 90% |
Abandoned - 97.5% |
Conversion Stats
- Traffic: 2.1 million visitors every month through SEO/Ads/Retargeting.
- Signups: 85% of visitors stay anonymous. Only 15% of them sign up.
- Engagement: 90% of registered users don't engage. Only 10% of them add products to cart.
- Conversion: Of the 10% users who add to cart, only 2.5% of them buy.
Comparing with its peers
We have classified vinted.cz as a samaritan in its marketing effectiveness, when compared to its peers in Czech republic. It has relatively better engagement when compared sign ups.
Bottlenecks
It has 2 main bottlenecks in its marketing effectiveness:
1. Signups: 85% vistors don't signup
A huge number of the users who visit vinted.cz do not sign up. This is especially prominent in mobile website, where 93% of users don't signup. Without user's identity, the products are not personalized for individual users and there is no further chance of engaging the user through email. This causes the largest conversion drop off at vinted.cz.
2. Engagement: 90% visitors don't engage
90% of the visitors who visit vinted.cz don't add products to the cart. An average user visits the site atleast 3 times before making the buying the decision. Currently, vinted.cz sends few emails (like cart recovery email) to re-enagage users. This inability to bring back registered users through personalized recommendations causes the second biggest drop off in conversion.
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Disclaimer: This report is created by Guesswork Research Team based on the publicly available traffic data. We use this data to predict the internal metrics of e-commerce companies using our machine learning algorithm. These are indicative numbers. If you have any questions or feedback on this report, please write to us at research@guesswork.co