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- Customer Satisfaction (CSAT) – What It Is, Pros & Cons, and How to Measure It
Companies have long recognized the need for customer feedback, but the focus on customer satisfaction, while always a priority, shifted into high gear during the pandemic. Consumers’ trust and loyalty were put to the test, and many brands responded with flexible return policies, pricing and change policies.
Customer satisfaction is a metric that matters: Most Americans have decided not to buy a company's products because of a poor customer service experience, and it takes 12 positive customer experiences to make up for one negative one. Research by Microsoft found that 90% of people say customer service is important to their choice of and loyalty to a brand.
Customer Satisfaction Score (CSAT) reflects how satisfied a customer feels with a particular interaction or overall experience. Measured as a percentage – the higher the better – it functions across industries as a key metric reflecting customer service, product quality and the customer experience. In addition, more than one-third of organizations use CSAT to measure their digital customer experience improvement, according to the CMSWire State of Digital Customer Experience 2021 survey.
For businesses that do not have a full CX or analytics program, CSAT is often measured through customer feedback in the form of a survey question or questions that ask respondents to rate their satisfaction. Businesses use varying methods; some use a ten-point scale to correlate responses to their overall Net Promoter Score (NPS), while others use a five-point scale. One commonly used question is as follows:
Rate your overall satisfaction with the [goods/service] you received:
To calculate a CSAT score from the responses, you typically use the two highest values – in the example above, 4 (satisfied) and 5 (very satisfied). The two highest values on feedback surveys have been shown to be the most accurate predictor of customer retention.
Then, you perform a simple calculation:
Number of satisfied customers (those who selected 4 and 5) / Number of survey responses x 100 = % of satisfied customers.
The CSAT score can give you insight into your customers, their experience with your business, and areas that need improvement, but it’s not an infallible metric – there are pros and cons associated with it.
Getting a true measurement of your customers’ satisfaction with your organization requires a big-picture understanding – one that can be far more powerful when survey data is incorporated into omnichannel analytics. Linking all customer satisfaction survey data alongside additional predictive metrics in contact center interactions such as sentiment or churn risk allows evaluators to use workflows to narrow down priority customer interactions. By narrowing the focus, supervisors can review a smaller sample of specific recorded calls or chat text to gain a clearer understanding of:
With a more in-depth understanding of their customer lifecycle across all communication channels, the additional insights gathered empower all roles in the organization to take clear action to improve CSAT. Traditional scoring methods only provide an output—without AI omnichannel analytics to look deeper into the data, there is no way to improve the score over time.
Measuring CSAT is just part of the equation; what you do with the information and insights you gather is just as important. Here’s how to use CSAT for maximum impact:
CSAT is not the only metric or key performance indicator to consider when measuring service quality. There are others, such as Customer Effort Score or Customer Success Score. However, it still remains a valuable one – it can tell you a lot about your customers' feelings toward your brand. NiCE can help you measure customer satisfaction and help improve your customer satisfaction score, as well as other metrics that are important markers of service quality, customer loyalty and customer engagement, in an easy and simple way. Enlighten AI leverages sophisticated, purpose-built behavior models that empower contact center agents to understand in real time how their behaviors affect CSAT, while Customer Engagement Analytics lets organizations take interaction data from any source at any customer touchpoint and weave it into an end-to-end customer journey complete with metrics and insights that help organizations understand and better serve customers.