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Beyond Surveys: Rethinking Customer Engagement Through Behavioral Insight

Traditional surveys fall short. Behavioral analytics offer deeper, more actionable customer insights.

Gary Class
Gary Class
15. Juli 2025 3 min Lesezeit

All financial institutions aim to deepen customer relationships. Traditionally, customer satisfaction surveys have been the go-to method for gauging engagement. While intuitively appealing, these surveys have serious limitations when it comes to assessing the complex dynamics of behavioral loyalty—such as actual customer attrition—by relying on attitudinal loyalty, or the stated intention to remain loyal.

Customer satisfaction surveys ask respondents to self-assess their satisfaction using a five- or seven-point ordinal scale. However, these ordinal responses are not continuous, and in practice, they tend to cluster into three broad categories: “good,” “bad,” or “indifferent.”
 

The Net Promoter Score: Popular but problematic

The Net Promoter Score (NPS) is a widely used metric based on a single survey question: How likely are you to recommend this company to a friend? Developed by Fred Reichheld of Bain Consulting and popularized through a 2003 Harvard Business Review article, NPS categorizes respondents as "promoters" (9 – 10), "passives" (7 – 8), or "detractors" (6 or below). The score is calculated by subtracting the percentage of detractors from the percentage of promoters.1

However, NPS has several methodological flaws. It arbitrarily discards responses rated 7 or 8—eliminating a significant portion of the population—and lacks predictive validity. Academic research has shown that NPS does not reliably correlate with financial outcomes like revenue growth.2

Understanding the drivers of satisfaction

To truly measure and monitor behavioral loyalty, banks must develop robust predictive models of customer attrition. Tools like ClearScape Analytics® support this by enabling the use of econometric methods (e.g., logistic regression) and machine learning techniques (e.g., gradient-boosted decision trees).

In my banking career, my team was tasked with extracting actionable insights from customer satisfaction surveys. When we overlaid survey results with attrition risk model scores, the findings were striking: Customers with the lowest attrition risk were overrepresented in survey responses, while those at highest risk were underrepresented. In other words, the voices the bank most needed to hear were the least heard.

We also examined how service issue resolution impacted engagement. By comparing behavioral profiles with responses to the “willingness to recommend” question, we found that satisfaction scores were influenced by three key factors: the customer, the channel used, and the nature of the task. For example, resolving fraudulent transactions elicited stronger emotional responses than checking a savings account balance.3 

Unlocking insights from free-text responses

Many surveys include free-text responses, which are difficult to categorize manually and often inconsistently interpreted. Fortunately, the Bring Your Own Model capability in ClearScape Analytics® allows banks to apply advanced language models to analyze these responses—identifying topics and sentiment with precision. These insights can then be appended to customer records, enhancing root cause analysis and enabling more targeted engagement strategies. 

1. Frederick F. Reichheld, "The One Number You Need to Grow," Harvard Business Review, 2003, https://hbr.org/2003/12/the-one-number-you-need-to-grow.
2. Timothy L. Keiningham et al., "A Longitudinal Examination of Net Promoter and Firm Revenue Growth," Journal of Marketing, 2007.
3. Gary Class, “Customer Journey Analytics in Banking,” 2024, https://www.teradata.com/resources/white-papers/customer-journey-analytics-in-banking.

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Über Gary Class

Gary is an accomplished industry strategist with extensive experience in financial services, where he has made significant contributions to advanced analytics and AI. Gary spent over three decades at Wells Fargo Bank as the Director of Advanced Analytics at the forefront of innovation during the transformational era of “anytime, anywhere” banking. His visionary leadership has shaped the landscape of financial services through innovation, data-driven insights, and strategic thinking.

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