Ask your data
  • Blog
  • About & Contact

Want to (re-)discover your Donor Data? Let’s take a deep dive!

6/21/2024

0 Comments

 
Picture
If you're not thinking segments, you're not thinking, Theodore Levitt once said. Fundraisers have traditionally put immense efforts in developing and tracking segments - so we are definitely not talking about something completely new for fundraisers. However, in times of Predictive AI and Data Science, advanced algorithms enable us to shed new light on the data of our supporters. In this blog post, we explore how advanced algorithms can generate new insights from donor data, improving targeted fundraising strategies. This deep dive into donor data segmentation reveals the importance of understanding and leveraging different segmentation techniques for optimal results.

Why should we segment Donor Data?

Segmentation is the process of dividing a market of individuals or organizations into subgroups based on common characteristics. This process allows organizations to align their products, services, and communication strategies with the specific needs of different segments. In the case of fundraising, by understanding what drives donor groups and their available choices, organizations can tailor their approaches for more effective engagement.

Key Dimensions for Donor Segmentation

Donor segmentation can be approached from various dimensions, including psychographic, geographical, behavioral, and demographic factors. Each dimension offers unique insights:
  • Behavioral: Payment behavior, loyalty, lifetime value, etc.  - this is the "classic" and common denominator for many.
  • Psychographic: Lifestyle, interests, attitudes, etc.
  • Geographical: Country, region, topography, etc.
  • Demographic: Age, income, gender, occupational group, etc.
These dimensions provide a framework for understanding donors' motivations and behaviors, which is essential for creating targeted and effective fundraising campaigns.


Picture
Of course, not all data necessary for the above-mentioned dimensions is available right away. Some of it is hard to obtain, only indirectly available, or not obtainable at all. In a stylized, way, the possibilites can be summarized as follows:
​

Picture

​​Behavior-Based Segmentation with RFM

One of the most effective methods for behavior-based segmentation is the RFM model, which evaluates donors based on Recency, Frequency, and Monetary value:
  • Recency: When did a donor last donate?
  • Frequency: How often does a donor donate over a certain period?
  • Monetary Value: How much do donors contribute per donation or a set time period such as a year?
This classic approach is easy to understand and implement, making it a popular choice for many organizations.

Unsupervised Learning for Donor Segmentation

In addition, not necessarily as a replacement, unsupervised learning offers a more advanced technique for donor segmentation. Unlike RFM, which relies on predefined categories, unsupervised learning models detect patterns or groups within the data without prior labels. This method is highly flexible and can uncover hidden (sub-)segments that traditional methods might overlook.

A simplified "cooking recipe" for a clustering approach like k-means looks as follows:
  1. Randomly select reference points in the data (e.g. a donor with her / his values for R, F and M)
  2. Assign adjacent data to the closest reference point.
  3. Move reference points to the data center.
  4. Reassign data based on new affiliations.
  5. Repeat until reference points are centered within correctly associated data.
​
Picture
Comparing RFM vs. Unsupervised Learning
​

Both RFM and unsupervised learning have their advantages and limitations:
  • RFM: Simple, easy to implement, but may miss nuanced behavioral patterns.
  • Unsupervised Learning: Flexible and data-driven, but can be challenging to interpret without additional effort.
Despite their differences, these approaches can coexist, providing a comprehensive understanding of donor behavior. By leveraging both methods, organizations can gain deeper insights and develop more effective fundraising strategies.

So What? A straightforward conclusion
​

Unsupervised methods of donor segmentation are designed to incorporate various data types unbiasedly, offering a data-driven approach to understanding donor behavior. While these methods provide valuable insights, they also come with limitations, particularly regarding traceability and group stability over time. Ultimately, a combination of RFM and unsupervised learning techniques can yield the most comprehensive and actionable insights for donor-centered fundraising.

Inspired? Interested? In need for a chat? Or are there experiences you can share? Please go ahead and do so and do not hesitate to reach out.

All the best and have a great summer!
0 Comments

    This website uses marketing and tracking technologies. Opting out of this will opt you out of all cookies, except for those needed to run the website. Note that some products may not work as well without tracking cookies.

    Opt Out of Cookies

    Categories

    All
    Artificial Intelligence
    Attribution Modelling
    Because It´s Fun!
    Churn
    Clustering
    Data Sciene @NPO
    Data Strategy
    Data Visualization
    Ethical AI
    Facebook
    Machine Learning
    Maps
    Marketing Mix Modelling
    Natural Language Processing
    Neural Nets
    Next Best Action
    Power BI
    Predictive Analytics
    Recommender Systems
    Segmentation
    Social Media
    Time Series
    Trends
    Twitter

    Archive

    December 2024
    September 2024
    August 2024
    June 2024
    December 2023
    August 2023
    March 2023
    January 2023
    October 2022
    August 2022
    December 2021
    September 2021
    June 2021
    January 2021
    November 2020
    September 2020
    August 2020
    May 2020
    April 2020
    February 2020
    December 2019
    November 2019
    September 2019
    June 2019
    April 2019
    March 2019
    January 2019
    December 2018
    October 2018
    August 2018
    June 2018
    May 2018
    March 2018
    February 2018
    December 2017
    November 2017
    October 2017
    September 2017
    August 2017
    July 2017
    May 2017
    April 2017
    March 2017
    February 2017
    January 2017

About

Copyright © 2018
  • Blog
  • About & Contact