November 21, 2024
AI Can Be Your Most Powerful Tool for Growing Midlevel Giving
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Greenpeace used Dataro’s donor scoring to send less mail and raise more money in their 2019 Spring Appeal
Dataro recently teamed up with a leading environmental organisation to test machine learning techniques against traditional segmentation for a direct mail shoulder appeal. Using a custom ‘live-tracking’ app, Dataro tracked and reported on campaign results as they came in. After 65 days of responses, the results showed a clear win for machine learning:
Here’s how we did it.
Choosing which supporters to contact in a direct mail appeal has traditionally been a time consuming task. Using manual methods such as RFM (recency, frequency, monetary value), charities or their agencies have created ‘segments’ to group supporters together based on recent giving history. Certain segments are then selected for inclusion in the campaign.
Rather than segments, Dataro uses machine learning to analyse patterns in the charity’s entire history of fundraising, including transactions, engagement and communications data, to paint a much more detailed picture of giving. Each donor is then given a ‘propensity score’ reflecting their probability of giving. We can then make a recommendation about who to include and who to exclude from the campaign, as well as the optimum list size and ask strategy.
In order to measure the difference between the RFM list vs Dataro’s list, we used the following methodology:
Using a custom-built web-app, Dataro tracked responses from each category of donors. In every measure, the machine learning list outperformed the RFM selections. Critically, the results highlighted some of the shortcomings of the traditional RFM approach, including:
Net revenue is the critical test of performance. In this case, net revenue takes into account the total costs vs total returns from the campaign. The Dataro campaign performed nearly 13% better than RFM campaign.
ROI is another important measure of performance. Critically in this case, the results showed that the ‘red’ segment (i.e. the donors selected with RFM but that Dataro suggested be removed) actually returned an ROI of less than 1, meaning the charity partner lost money by contacting those donors. The ‘green’ section (i.e. ‘extra’ donors Dataro identified) had an ROI of close to 5, while the blue segment (i.e. donors on both lists) had an ROI of close to 12.
Response rates can be useful to track the effectiveness of list selections. Of course, some ‘segments’ normally respond and higher levels than others. Again, however, the analysis showed that the ‘red’ segment responded at under 1%, while the ‘green’ segment performed much better (nearly 4%) and the blue segment performed strongly (nearly 8%).
The test demonstrates how the ability to identify donors who are more likely to participate can help charities to save costs (through reduced mail volumes), save time (through easier list selections), and raise more funds from DM appeals.
“"Dataro is completely reinventing how we use data in our fundraising. These guys are one of the most exciting things to happen in the industry for years."”
Fundraising Manager