SPSS Lesson 44 – Customer Analytics | Dataplexa

Customer Analytics

Modern businesses survive and grow by understanding their customers.

Customer analytics uses data to study customer behavior, preferences, and patterns to improve decision-making.

SPSS plays a key role in turning customer data into actionable insights.


What Is Customer Analytics?

Customer analytics focuses on:

  • Understanding customer behavior
  • Identifying valuable customers
  • Reducing customer churn
  • Improving customer satisfaction

It combines statistics, predictive modeling, and business knowledge.


Common Customer Data

Businesses collect various types of customer data:

  • Demographic data
  • Purchase history
  • Interaction records
  • Survey responses

SPSS helps analyze both structured and survey-based data.


Key Customer Analytics Metrics

Important customer metrics include:

  • Customer Lifetime Value (CLV)
  • Churn Rate
  • Retention Rate
  • Customer Satisfaction Scores

These metrics guide strategic business decisions.


Customer Segmentation

Customer segmentation divides customers into meaningful groups based on shared characteristics.

Segmentation helps businesses:

  • Target marketing efforts
  • Personalize offers
  • Optimize resource allocation

SPSS techniques used:

  • Cluster analysis
  • Descriptive statistics

Churn Analysis Example

A company wants to identify customers likely to leave.

Variables include:

  • Usage frequency
  • Customer complaints
  • Subscription length

Using logistic regression, SPSS predicts churn probability for each customer.


Predictive Models in Customer Analytics

Common predictive models include:

  • Logistic regression for churn
  • Decision trees for segmentation
  • Regression for spending prediction

These models help prioritize high-impact customer actions.


Using SPSS for Customer Analytics

Typical SPSS workflow:

  • Import customer data
  • Clean and prepare variables
  • Explore descriptive statistics
  • Build predictive models
  • Interpret and act on results

SPSS outputs support data-driven marketing strategies.


Real-World Business Impact

Customer analytics enables businesses to:

  • Reduce marketing costs
  • Increase customer loyalty
  • Improve product offerings

Small improvements in retention often lead to large revenue gains.


Common Mistakes

Common errors in customer analytics:

  • Using poor-quality data
  • Ignoring business context
  • Overfitting predictive models

Analytics must align with business goals.


Quiz 1

What is the goal of customer analytics?

To understand and improve customer behavior and decisions.


Quiz 2

Which metric estimates customer value over time?

Customer Lifetime Value (CLV).


Quiz 3

Which model is commonly used for churn prediction?

Logistic regression.


Quiz 4

Why is segmentation important?

It helps target customers more effectively.


Quiz 5

Does customer analytics require business context?

Yes.


Mini Practice

Imagine a business with customer data.

Identify:

  • One metric to measure loyalty
  • One variable that might predict churn

Explain how you would analyze them using SPSS.

Focus on linking data analysis to business decisions.


What’s Next

In the final lesson, you will prepare for SPSS exams and interviews, and celebrate completing the course.