PERANCANGAN MODEL SEGMENTASI PELANGGAN PT X BERDASARKAN NILAI CUSTOMER LIFETIME VALUE MENGGUNAKAN TEKNIK DATA MINING
PT X is a technology company that provides information about job vacancies for blue-collar workers. In an effort to improve user retention and seek funding for the company, the company created a business model, executed by the Digital Services Division. This business model combines affiliate mark...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/80793 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | PT X is a technology company that provides information about job vacancies for blue-collar
workers. In an effort to improve user retention and seek funding for the company, the
company created a business model, executed by the Digital Services Division. This business
model combines affiliate marketing, crowdsourcing, and gamification. The Digital Services
Division of PT X acts as an intermediary between other companies and PT X service users,
earning commissions to prompt desired actions from service users, while also utilizing
crowdsourcing and gamification to encourage service user engagement in affiliate
marketing tasks set by other companies. However, observing a declining trend in task
completion, it was found that the marketing carried out by the Digital Services Division was
done without using targeting or understanding the behaviors of the customers. Therefore, a
customer segmentation model using data mining technique will be designed to help the
company understand customer behaviors and improve data-driven marketing strategy
effectiveness.
The customer segmentation model is designed based on Customer Lifetime Value (CLV),
data mining techniques, and the CRISP-DM methodology. User data is grouped based on
the Recency, Frequency, Monetary (RFM) model along with additional variables such as
the number of clicks and success rate. Then, the CLV of each user is calculated based on the
weighted value of these variables obtained through the pairwise comparison method, and
cluster analysis is performed using the K-Means, agglomerative clustering, GMM, BIRCH,
and genetic algorithm. Evaluation of the modeling results shows that the BIRCH algorithm
has an advantage in terms of clustering quality scores compared to other algorithms, thus
hyperparameter tuning is conducted, resulting in a threshold of 0.8 and a total of 3 clusters
with a silhouette score of 0.799. The final outcome of this method is a prototype designed
using Streamlit.
|
---|