The Predictive Analytics Boom and Its Impact on E-commerce Marketers Today
Steadily but surely, predictive analytics has been gaining in popularity. It’s expected to explode this year as it becomes more accessible and goes from being a competitive advantage to a necessity. To fully understand how it impacts e-commerce marketers today, first we’ve got to look back to the past.
Traditionally, predictive analytics has been reserved for top brands such as eBay and Netflix. eBay is focused on using predictive analytics to make its shopping experience better for both buyers and sellers. Indeed, eBay considered predictive analytics so important that it acquired SalesPredict to boost its AI, machine learning and data science efforts.
When a company like eBay spends millions on an acquisition for the sake of predictive analytics, e-commerce marketers must take note.
There are a couple of reasons that eBay made this move:
- Better understanding of what their customers wanted.
- Access to advanced insights for improving conversion rates and accelerating sales cycles.
- More targeted offers with relevant information for buyers.
- The ability to build-out predictive models that can define the probability of selling a given product at a given price over time.
In other words, predictive analytics answers some of the biggest challenges facing e-commerce marketers and business owners.
How to Use Predictive Analytics Like eBay Does
To achieve similar benefits to eBay, you only need to take the following four steps:
- Track e-commerce metrics and create a one-day forecast. Then identify any deviation between the forecast and the actual metrics.
- Determine the cause of deviations from your one-day predictions. Assuming the deviation can be minimized, take steps to do so; otherwise, use it to establish a confidence level in your predictions.
- Create progressively longer-term predictions, ranging from one day to 18 months.
- Use predictions to answer “what if” questions such as, “What if we increase advertising spend?” or “what if we decrease stock for this item?” and more.
Obviously, it’s easier said than done, but with the proper tools and strategy, you can be predicting the future in no time.
Overcoming Common Challenges
Predictive analytics isn’t without its challenges. For one, it can be difficult to trust the data, especially when your “gut” and past experiences may indicate otherwise. But even more challenging is doing predictive analytics right.