In today’s data-rich environment, organizations often find themselves inundated with information, leading to a common pitfall: leveraging available data to find a purpose, rather than identifying a clear purpose and seeking the necessary data to support it.
Consider a company that developed a sophisticated algorithm to predict customer churn. Acting on this prediction, they sent gifts to customers deemed at risk. While the model accurately identified potential churners, it failed to answer a critical question: Does sending gifts actually reduce churn? The initiative, though data-driven, lacked a purpose-driven approach, resulting in actions that were not substantiated by evidence of effectiveness.
This scenario underscores a prevalent issue in many organizations: the tendency to let available data dictate actions, rather than starting with a clear decision or objective and then gathering the data needed to inform it. As highlighted in the MIT Sloan Management Review article Leading with Decision-Driven Data Analytics, this approach often leads to answering the wrong questions, thereby misaligning efforts and resources.
Core Principles
- Start with the decision, not the data.
- Avoid the data availability trap.
- Design experiments to test interventions.