Purchase Abandonment Predictor: Difference between revisions

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(Created page with " Wing Yung Chan <wingyungchan@gmail.com> There are many online shopping sites where users become frustrated - they can't find what they want, get bored, or simply fail to comp...")
 
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Client: Philip Wilson, The Hut Group <Philip.wilson@thehutgroup.com>


Wing Yung Chan <wingyungchan@gmail.com>
There are many online shopping sites where users become frustrated - they can't find what they want, get bored, or simply fail to complete a purchase. Retailers would be happy to help out such customers, if only they knew which ones were most likely to benefit. If you could predict which shoppers are about to abandon their shopping basket based on click stream analysis, then it would be possible to offer the customer incentives to stay on the site. Incentives could be discounts, pop-ups or contextual product recommendations.
There are many online shopping sites where users become frustrated - they can't find what they want, get bored, or simply fail to complete a purchase. Retailers would be happy to help out such customers, if only they knew which ones were most likely to benefit. If you could predict which shoppers are about to abandon their shopping basket based on click stream analysis, then it would be possible to offer the customer incentives to stay on the site. Incentives could be discounts, pop-ups or contextual product recommendations.


If successful, the system may be trialled on a large popular e-commerce site such as MyProtein.com, LookFantastic.com or IWantOneOfThose.com.
If successful, the system may be trialled on a large popular e-commerce site such as MyProtein.com, LookFantastic.com or IWantOneOfThose.com.

Latest revision as of 15:44, 14 October 2013

Client: Philip Wilson, The Hut Group <Philip.wilson@thehutgroup.com>

There are many online shopping sites where users become frustrated - they can't find what they want, get bored, or simply fail to complete a purchase. Retailers would be happy to help out such customers, if only they knew which ones were most likely to benefit. If you could predict which shoppers are about to abandon their shopping basket based on click stream analysis, then it would be possible to offer the customer incentives to stay on the site. Incentives could be discounts, pop-ups or contextual product recommendations.

If successful, the system may be trialled on a large popular e-commerce site such as MyProtein.com, LookFantastic.com or IWantOneOfThose.com.