This website collects cookies to deliver better user experience. Cookie Policy
Accept
Sign In
The Wall Street Publication
  • Home
  • Trending
  • U.S
  • World
  • Politics
  • Business
    • Business
    • Economy
    • Real Estate
    • Markets
    • Personal Finance
  • Tech
  • Lifestyle
    • Lifestyle
    • Style
    • Arts
  • Health
  • Sports
  • Entertainment
Reading: Unlocking Hidden Patterns: Machine Learning for More Granular Customer Segments
Share
The Wall Street PublicationThe Wall Street Publication
Font ResizerAa
Search
  • Home
  • Trending
  • U.S
  • World
  • Politics
  • Business
    • Business
    • Economy
    • Real Estate
    • Markets
    • Personal Finance
  • Tech
  • Lifestyle
    • Lifestyle
    • Style
    • Arts
  • Health
  • Sports
  • Entertainment
Have an existing account? Sign In
Follow US
© 2024 The Wall Street Publication. All Rights Reserved.
The Wall Street Publication > Blog > Tech > Unlocking Hidden Patterns: Machine Learning for More Granular Customer Segments
TechTrending

Unlocking Hidden Patterns: Machine Learning for More Granular Customer Segments

Editorial Board Published November 10, 2023
Share
Unlocking Hidden Patterns: Machine Learning for More Granular Customer Segments
SHARE

Customer segmentation is crucial for targeted marketing, identifying the right customers to approach at the optimal time. Customer profiling considers demographics, location, lifestyle, values and needs. This article utilises transactional data from a retail business to segment customer through machine learning (ML) algorithms and enhances a company’s ability to target and serve customers effectively. This analysis is conducted on a real-world dataset from a convenience store, encompassing records of 3,000 customers and their 195,547 transactions over six months. Each transaction included detailed information such as purchase date and time, quantity, value, and the number of categories in the basket.

Methodology

K-means and hierarchical clustering are deployed for this study. Behavioural attributes are observed through transactional RFM (Recency, Frequency, Monetary) model. This unsupervised machine learning algorithm involves comprehensive data processing, including correlation analysis and outlier removal through standardization/scaling. Principal Component Analysis (PCA) technique helps in reducing complexity and identifying segments. K-means clustering is used for segmentation, preceded by dimensionality reduction to streamline data processing. Although the optimal number of clusters are three (identified through silhouette score), six segments are created to achieve granularity requirement while maintaining a reasonable silhouette score.

Data Preparation and Cleaning

Despite having no missing values, the dataset included negative values for basket quantity and spending, which were removed for better analysis. Correlation checks and standardization ensured the data was suitable for clustering.

RFM Model Implementation

The RFM model was built by calculating:

  • Recency: Time since the last purchase.
  • Frequency: Number of purchases.
  • Monetary Value: Total spending over six months.

Clustering and Evaluation

K-means clustering is chosen for its robustness and efficiency, with the elbow method determining the initial three-cluster solution. However, six segments are finalized to meet the marketing granularity in customer segments. The silhouette score indicated acceptable clustering quality.

Key Findings

Six kinds of customers are clearly differentiated by this study: champions, loyalists, potential loyalists, promising, those needing special attention, and those at risk of churning.

  1. Champions: These are the best customers, with recent and frequent purchases of high-value items. They should be rewarded to maintain their loyalty and promote new products.
  2. Loyal Customers: Representing 24% of the customer base, they have high purchase frequency and significant monetary value. Engaging them through feedback and incentives can enhance their loyalty.
  3. Potential Loyalists: They form the largest segment, buying frequently in large quantities, but with slightly lower recency. Special incentives like loyalty cards can convert them into champions.
  4. Promising Customers: Although their purchase frequency is lower, they spend a considerable amount when they do shop. Personalized marketing can increase their visit frequency.
  5. At Risk of Churn: These customers have not shopped recently and have low purchase frequency and monetary value. Reminders and personalized offers can re-engage them.
  6. Needs Attention: This group has a moderate recency and purchase frequency, indicating they could become regular customers with the right incentives.

Recommendations

This study suggests group-based marketing for each segment:

  • Champions: Rewarding and engaging to maintain loyalty and promote new products.
  • Loyal Customers: Targeting high value upsell products and engaging through surveys and feedback.
  • Potential Loyalists: Offering membership deals and discounts to convert them into loyalists.
  • Promising Customers: Providing personalized offers and incentives to increase purchase frequency.
  • At Risk of Churn: Sending reminders and improving customer experiences to prevent churn.
  • Needs Attention: Offering limited-time promotions based on previous purchases to encourage repeat visits.

Conclusion

Customer segmentation uses vast amount of data to identify patterns and behaviours. It helps target customers based on their needs, preferences, and purchasing habits. Knowing customer behaviour helps in tailoring marketing and product offering that produce tangible results. Targeted marketing ensures right message for right audiences to improve efficiency and reduce costs. It also helps in high retention through identifying churners and deploying retention strategies. Making granular segments can help businesses gather targeted feedback for product development and enhancements. ML algorithms have potential to unearth emerging clients with new market opportunities. By addressing the unique needs of each segment, the retail/similar stores can improve sales, customer loyalty, and overall market presence.

About Author:

Nadeem Ahmed

Machine Learning and Big Data Expert based in London. He has been mentoring students across Pakistan.

Share This Article
Twitter Email Copy Link Print
Previous Article Corporate Governance in Emerging Markets: A Quantitative Analysis of Current Trends and Implications Corporate Governance in Emerging Markets: A Quantitative Analysis of Current Trends and Implications
Next Article Psychedelic Purr: Fusing Fashion with Feline Welfare Psychedelic Purr: Fusing Fashion with Feline Welfare

Editor's Pick

Alyssa Farah Griffin: ‘The View’ Co-Host is Pregnant With Child #1!

Alyssa Farah Griffin: ‘The View’ Co-Host is Pregnant With Child #1!

Studying Time: 3 minutes The View co-host Alyssa Farah Griffin is pregnant! On ‘The View,’ Alyssa Farah Griffin breaks the…

By Editorial Board 3 Min Read
Mandy Moore ‘Unrecognizable’ to Followers After Debuting New Face
Mandy Moore ‘Unrecognizable’ to Followers After Debuting New Face

Studying Time: 4 minutes Mandy Moore has followers scratching their heads. This…

6 Min Read
Arturo Gatti Jr. Reason behind Dying: Son of Boxing Legend Passes Away at 17
Arturo Gatti Jr. Reason behind Dying: Son of Boxing Legend Passes Away at 17

Studying Time: 2 minutes Aruturo Gatti Jr. — an aspiring boxer and…

3 Min Read

Oponion

Trump plans new option to torment Democrats as his shutdown continues

Trump plans new option to torment Democrats as his shutdown continues

President Donald Trump has discovered a brand new option to…

October 2, 2025

YouTube Shuts Division for Original Programming

Google’s YouTube is folding its effort…

January 18, 2022

Zohran Mamdani calls out Trump’s meddling in NYC mayoral race

New York Metropolis Democratic mayoral candidate…

August 7, 2025

Shake Shack Tests Bitcoin Rewards to Lure Younger Consumers

Shake Shack Inc. is offering the…

March 3, 2022

Walton Goggins & Aimee Lou Wooden: This is Why ‘White Lotus’ Followers Assume the Costars Are Feuding

Studying Time: 3 minutes In case…

April 9, 2025

You Might Also Like

WIRED’S Favourite PC Monitor Is  Off
Tech

WIRED’S Favourite PC Monitor Is $75 Off

In case you're uninterested in staring a tiny laptop computer display whereas working from residence, think about scooping up our…

3 Min Read
Your Cat In all probability Is not Ingesting Sufficient Water. A Fountain Can Assist.
Tech

Your Cat In all probability Is not Ingesting Sufficient Water. A Fountain Can Assist.

Evaluate Our PicksOthers We ExaminedCourtesy of PetkikPetkit Eversweet Max for $90: This techy computerized fountain will be both cordless or…

17 Min Read
Wish to Begin a Web site? These Are the Finest Web site Builders
Tech

Wish to Begin a Web site? These Are the Finest Web site Builders

Prime Web site BuildersFinest for Most IndividualsSquarespace CoreLearn ExtraFinest Low cost Web site BuilderHostinger Web site BuilderLearn ExtraFinest for Small…

5 Min Read
Specialised’s New Electrical Mountain Bike Is So Enjoyable I Forgot to Go House
Tech

Specialised’s New Electrical Mountain Bike Is So Enjoyable I Forgot to Go House

The following experience was on singletrack from my home to Spirit Mountain, Duluth’s downhill lift-accessed park with 24 trails starting…

4 Min Read
The Wall Street Publication

About Us

The Wall Street Publication, a distinguished part of the Enspirers News Group, stands as a beacon of excellence in journalism. Committed to delivering unfiltered global news, we pride ourselves on our trusted coverage of Politics, Business, Technology, and more.

Company

  • About Us
  • Newsroom Policies & Standards
  • Diversity & Inclusion
  • Careers
  • Media & Community Relations
  • WP Creative Group
  • Accessibility Statement

Contact

  • Contact Us
  • Contact Customer Care
  • Advertise
  • Licensing & Syndication
  • Request a Correction
  • Contact the Newsroom
  • Send a News Tip
  • Report a Vulnerability

Term of Use

  • Digital Products Terms of Sale
  • Terms of Service
  • Privacy Policy
  • Cookie Settings
  • Submissions & Discussion Policy
  • RSS Terms of Service
  • Ad Choices

© 2024 The Wall Street Publication. All Rights Reserved.

Welcome Back!

Sign in to your account

Lost your password?