Over the past few years, marketers have started to adopt far more data-driven tools and…
Customer Behavior Modeling: The Math-based Approach To Maximizing Revenue
Remember Professor Charles Francis Xavier from X-Men? Professor X, as he was fondly called, was a mutant who had the superhuman ability to read and control the minds of others.
If a person can control the minds of others, let alone understand it, they can control their actions too.
Well, modern-day marketers are more or less like Professor X. Not all of them have telepathic abilities, but there is a tool that makes them like Professor X.
It is called customer behavior modeling.
Customer Behavior Modeling is defined as the creation of a mathematical construct to represent the common behaviors observed among particular groups of customers in order to predict how similar customers will behave under similar circumstances.
In simple words, customer behavior modeling is the use of mathematics to create a persona of users. The persona is created by grouping users having the same actions, preferences, and similar traits into one cohort. This helps predict the action each cohort will take during a given scenario.
For example, users in the age bracket of 21 to 30 are usually willing to buy superhero t-shirts. Whereas, most users in the age category of 30 and above would prefer shirts and formal clothes fit for the workplace.
The age group and clothing preferences help group customers into separate segments. When a marketing campaign is planned, customer behavior modeling helps create separate campaigns that can appeal to each of these customer segments.
How is customer behavior modeling done?
Customer behavior modeling is usually carried out using an analysis of – Recency, Frequency, and Monetary Value (RFM).
- Recency – The notion that customers who spent money buying from the business recently are most likely to spend money again.
- Frequency – The notion that customers who spend money more frequently with a business are most likely to spend compared to others.
- Monetary Value – The notion that customers who have spent the most money with a business are most likely to spend more than other customers.
The positive thing about customer behavior modeling is it holds true for almost every industry and business, regardless of their size, with no distinction.
The Importance of Customer Behavior Modeling
In the 21st century, data is the new oil.
Customer data is like crude oil that can be repurposed for endless uses. A business can get its fill of customer data from multiple sources, including email, live chat tool, social media listening, and even wearable devices. And since the model is created mathematically and not superficially, it is accurate and holds more value.
Customer behavior modeling is important for marketers, startup founders who want to find the right target audience, or even for long-standing businesses that want to release an experimental product into the market.
Some of the benefits are detailed below:
Customer behavior modeling does what every marketer does before pushing out any campaign: it segments customers into smaller groups with distinct traits of common nature. This simplifies creating targeted campaigns that can yield high conversions.
Tracking customer life-cycle
A customer life-cycle refers to the various stages of reach, acquisition, conversion, retention, and loyalty the customer entertains with the business. At each stage of the life-cycle, customers exhibit distinct traits of decision-making, choices, and spending limits. Customer behavior modeling helps track the customer life-cycle for each segment of users.
Predicting consumption patterns
It is common knowledge that retaining existing customers is more profitable than acquiring new ones. That makes churn and retention critical for businesses. Marketing actions and loyalty programs are always driven to ensure churn is prevented, and retention is maximized.
Take the example of Sephora’s Beauty Insider, a tier-based loyalty program that also gives its members access to an exclusive community of like-minded individuals. As a luxury brand, while Sephora almost never offers any discounts on its products, it does reward loyal customers by segmenting them into tiers, according to their annual spending, and offers them personalized rewards based on their spending tier, preferences, and shopping history.
Depending on individual preferences and the tier that a customer falls into, Sephora’s Beauty Insiders get access to a wide range of gifts along with early access to new products and exclusive events. Besides rewarding customers for every single purchase with loyalty points that keep them feeling good and coming back for more, Sephora has successfully created a community of loyal users that gives it access to a wealth of customer data.
Scaling marketing activities
Automation has touched base with almost every business function. And marketing is no exception. It helps marketers plan and execute sophisticated campaigns that otherwise would require extensive manual labor and man-hours.
For marketing automation to work the right way, proper segmentation of users has to be carried out. Customer behavior modeling goes a step further and ensures that such data is readily available, making it possible to drive campaigns at scale.
Quick Overview of Different Customer Behavior Models
There is no single customer behavior model. In fact, there are many. Here are the ten most popular customer behavior models:
1. Pavlovian Model
The Pavlovian theory refers to a learning procedure that pairs a stimulus with a conditioned response. For example, the word ‘sale’ can generate the urge to shop for many people.
2. Economic Model
Here, the central theme is the innate desire of consumers to make the maximum gains while spending the minimum possible amount. The model takes into account homogenous buying patterns, such as when the price of a product is less, consumers tend to buy more of that product.
3. Input, Process, Output Model
In this simple model of consumer behavior, the input for the customer is a brand’s marketing effort (such as product, price, etc.) and the social environment, which consists of the family, culture, etc. that influence the decision-making process of the customer.
4. Psychological Model
A. H. Maslow postulated the psychological model of customer behavior in his hierarchy of needs. This model propounds that the behavior of an individual is driven by his or her strongest need at the time. The model further says that needs have priority, and individuals first satisfy basic needs, followed by secondary needs.
5. Howarth Sheth Model
In the Howarth Sheth Model, consumer behavior is dependent on inputs in the form of Stimuli. The model also defines outputs, which are reactions to a given stimulus and end with the purchase decision. Between the inputs and outputs are the variables that affect learning. They are hypothetical in nature as they cannot be directly measured.
6. Sociological Model
This model takes into account the impact of society in the decision-making process of a buyer. For example, if a buyer belongs to an elite category that only wears a certain kind of dress, the buyer will conform to the choices of his or her society and purchase similar stuff.
7. Family Decision-Making Model
In this model, the impact of one’s family in buying-decisions is analyzed. Family decision making refers to the collective decision making by the family, even if the product is being purchased by an individual.
8. Engel-Blackwell-Kollat Model
This is a comprehensive model that interconnects four components in consumer behavior, which are information processing (exposure, attention, etc.), central control unit (personality and attitude of the consumer), decision process (problem recognition, information retention, etc.), and environmental influences (income, social class, etc.).
9. Industrial Buying Model
The industrial model of consumer behavior is influenced by organizational factors or task-oriented objectives, such as best-product quality, lowest price, and non-task objectives such as job security, promotions, personal treatment, etc.
10. Nicosia Model
The Nicosia Model focuses on the relationship between the organization and its potential customers. According to this model, the messages from an organization (like ads) influence the predisposition of a consumer towards its product or service, which may lead the consumer to find out more information about the product.
These customer behavior models use a variety of variables and stimuli to determine how customers would react in specific scenarios. For example, in the Pavlovian model, a known stimulus can result in a conditioned response. The model can help in heightening brand recall, building brand loyalty, and, ultimately, maximizing revenue.
How Customer Behavior Modeling Can Boost Revenue
From a bird’s eye point of view, customer behavior modeling helps maximize the value of customer relationships. It gives actionable insights about customers and their preferences, which can lead to valuable outcomes.
What are those insights? What are those valuable outcomes? How do they boost revenue?
Here is a quick look at the answers to those questions.
Maximize the customer lifetime value
Customer lifetime value is the amount of money a customer is expected to spend with a business or on its products during the lifetime of the business relationship. A higher CLTV is considered favorable for most, if not all, businesses.
Maximizing CLTV is a tough challenge for any marketer, owing to the difficulty involved in retaining existing customers and keeping customer acquisition costs at a lower level.
With customer behavior modeling, businesses can easily look at customer segments that are ripe for up-selling, cross-selling, and repeat purchases. These three sales maximizing tactics will maximize CLTV and also bring in more dollars to the business coffers.
Reduce customer churn
Be it in eCommerce or in brick and mortar stores, or, for that matter, in any industry, customers exhibit a set of common traits that indicate their likelihood of churning strongly.
For example, a financial services company can identify customers who are likely to churn with the following factors:
- Customers are not accepting the financial plans suggested by the advisers,
- A reduction in the volume of investments handled by the company,
- A passive or negative response in customer feedback responses.
For instance, a startup, Groove, successfully reduced its churn rate by defining its users’ issues through qualitative surveys. Once they red-flagged the issues, they developed a triggered messaging campaign to prevent churn and increased their customer retention rates by about 71%.
Customer behavior modeling helps look at these traits in minute detail. It also gives a comprehensive overview of customer data that is pulled together from CRM, email, social, and other sources, making it authentic. Using such data, proactive actions can be taken to prevent such customers from churning. A reduction in customer churn directly uplifts the revenue.
44% of consumers say that they will likely become repeat buyers after a personalized shopping experience with a particular company. A lack of a personalized shopping experience reverses the equation. Customers are more likely to churn if they are treated as one among hundreds, thousands, and millions of other customers.
Personalization is the marketing theme of the century, and it cannot be achieved without the power of data.
Customer behavior modeling makes it possible to create targeted marketing campaigns that are tailor-made to each segment of customers. The end result is higher conversions and ROI for every dollar spent.
Our own Convert Nexus is a tool that helps brands personalize their websites and improve content relevance. By customizing the customer journey for each segment of customers, businesses are able to boost conversions and revenue.
Bringing it all together
Mathematics has always been looked down upon as a serious and non-glamorous subject. But, if it is applied to marketing, to understanding customers, it can unearth insights that are hidden in plain sight. Customer behavior modeling is one such math-based analytical approach.
It creates a mathematical model of customers by grouping customers with similar traits. These groups can be used by businesses to create targeted promotions, personalized services, or even to reduce churn. Needless to say, customer behavior modeling does help in swelling the bottom line.
So, how is your business going to use customer behavior modeling for maximizing revenue?