In recent years, Customer Lifetime Value (LTV) has been described in an array of guiding articles in general terms, calculating formulas, and often accompanied by a list of suggestions for improvement. More useful perhaps, is a reminder of specifically what LTV can do when calculated correctly, why it sometimes fails to provide useful information, and, finally, why it continues to hold value.
Why is Customer Lifetime Value, or LTV, a key business metric? For one, customer LTV represents how much the average customer spends during his or her entire relationship with a company–whether three years or (in cases of excellent brand loyalty) their literal lifetime. In other words, the LTV is the complete profit margin the company expects to achieve during the entire business-customer relationship.
Knowing the future value of a company’s customers–individual, by segment, and in total–informs the leadership of both potential revenue and a limit.
Customer lifetime value (CLV, CLTV, or LTV) can be used as part of any business model focused on future profitability predictions–whether in judging investments, product lines, marketing, or even customer care costs.
The customer LTV functions as the maximum limit of what a company should be willing to pay to acquire a new customer. Spending beyond this limit offers the company no economic benefit. The Customer Acquisition Cost (CAC) is the total cost of acquiring a new customer–in other words, all company costs until a first purchase is made and the prospect becomes a customer. If the CAC is $500, and the LTV is $350, the business would lose money on the customer. In this way, the CAC is an indicator of the lowest LTV needed to reach profitability.
While the LTV is a key part of balancing the basic profit equation, it can also calculate comparative LTV for customers in different channels or even customer segments. A company might identify different marketing techniques used in higher-profit channels, and replicate them across other, lower-profit ones. It could also validate different maintenance and support costs or even product offerings by channel or profit tier.
Knowing the value of a customer is an asset. It is a reference point that all other spending, decisions, and income can be measured against. Customer LTV can be monitored to measure the impact of ongoing marketing, customer engagement, promotions, communication.
Getting this number right (and maintaining it), and plugging it into any Business Intelligence or predictive models is essential to running a data-driven business.
Customer LTV formulae and calculations vary from the vastly oversimplified to a loaded formula value that strives to account for all cost variables entering the customer’s domain, potentially impacting a customer’s future value. The simplest model uses purchase revenue and the most recent year, while the more complex includes live individual totals and counts, tempered with churn rate, discount rates, multi-margins, acquisition/marketing costs, retention costs, risks, all over a multi-period calculation.
At its simplest, Customer Lifetime Value is customer profit over time:
(Average Annual Customer Profit) x (Average Duration of Customer Retention)
However, in order to calculate even this formula, a basic component breakdown is below:
(Average Value of Sale) x (Number of Transactions) x (Gross Margin) x (Retention Time Period)
When using this formula, it is critical to remember that “Average” is neither a guess, range, nor assumption; instead, it is the result of a formula populated with real business data pulled from a system of record, such as the Enterprise Accounting System (EAS) or similar system, the Customer Data Platform (CDP) or Customer Relationship Management (CRM), and, in some cases, the Digital Advertising Platform.
For Avg Value of Sale, the Total Annual Sales Revenue and the Total Annual Number of Orders should be based on the financial system record for a recent 12-month window. If, however, one wanted to determine the LTV of a particular segment, the Total Annual Revenue and Number of Orders by targeted segment would be used for the calculation, and would require the financial system tag revenue and order with a field (label or metadata) indicating segment for the data comprising revenue and orders
The analyst would similarly compute Avg Number of Transactions: Over the same 12-month period, the Total Annual Number of Orders is divided by the Total Annual Number of Unique Customers, data again coming from the financial system of record, and potentially the CDP/CRM depending on data structures and storage rules. Again, if the goal was for a subset of customers, only the values for the targeted customers would be compiled.
Gross Margin is typically used in this model and calculates the profit the product makes beyond production costs (COGS). Operating Margin and Net Margin adds administrative costs, and taxes plus any other expenses, respectively. Models not including margin and used as a comparison to other revenue can easily end up being compared to profit-only figures. Leads and Managers reviewing final LTV reports must ensure that the revenue/profit calculations are clearly indicated before making comparisons or decisions in planning and operations.
Retention Time Period or Customer Lifetime Period
Approach 1: With existing long-term customer data. Calculated by adding all customer “lifespans” of business with the company, then dividing by the total # of customers.
Total Lifespans / Total # Customers = Avg Lifespans
Ex. Company has been in business for 4 years, with a total # of unique served customers of 750 in the CDP. Also, in the CDP are records of the relationship length with each customer. The total # of years tenure, when added together, is 1474 years (customer tenure ranged from 3.8 years to .08 years).
1474/750=1.96, or 2 years on average
Approach 2: With limited customer data. Another way to calculate Retention Time Period is using the Churn Rate. To determine Churn Rate, track how many customers at the beginning and end of the time period (typically 1 year).
Churn Rate = (# of Customers at End of Time Period – # of Customers at Beginning of Time Period) / # of Customers at Beginning of Time Period.
(80 Customers at End) – (100 Customers at Beginning) = -20/100 or .2 or 20% Churn Rate
Retention Rate (80 Customers at End) / (100 Customers at Beginning) = 80/200 or .8 or 80%
Customer Lifetime Period = 1/Churn Rate
Customer Lifetime Period = 1/.2 or 5 years
SwiftClean is a natural all-purpose cleanser popularized in social media campaigns 5 years ago. With an average sale of $38.95 with a 24% profit margin. The average customer purchases 3.7 times per year over 3 years.
38.95 (avg sale) x 3.7 (transactions) x 3 (period) = $432.35 x .24 (margin) = $103.76 LTV
The CAC is relatively low due to minimal marketing costs = $15.73
(Note: Most examples of LTV calculations do not differentiate between gross, net, or operating margins. To gain an accurate LTV, comparisons should define the margin type, and ensure comparisons of value use the same margin type.)
In some cases, however, the CAC may be higher than the return from the first (several) customer transactions, but still within the limit of the LTV. For example, a subscription service like Netflix may offer a low monthly rate of around $15, and marketing costs and promotions expenses are considerable, driving CAC to $200. From their LTV (e.g., $250), Netflix knows the future value of the customer exceeds $200 and makes the transaction worthwhile.
While inaccurate data will always be the easiest error to make when calculating LTV, several mistakes are common in calculation or using the data point beyond its applicability.
Many of the errors or limitations above result from failure to use actual business data when calculating the customer LTV. Without the data, the calculation no longer has significant value beyond aspirational guessing. With Arcalea's Galileo attribution platform, marketers can calculate CAC and LTV by channel, initiative, and marketing asset. As a result, low-performing resources can be eliminated or reallocated to higher performing ones.
Companies that are diligent with infrastructure, maintaining platforms and other data sources as a singular part of the business model, are more likely to make data-driven decisions and produce accurate outputs from business calculations, including customer LTV.