PERANCANGAN MODEL SEGMENTASI PELANGGAN B2B PT XY DENGAN CUSTOMER LIFETIME VALUE MENGGUNAKAN METODE DATA MINING
PT XY is an information and communication technology (ICT) services company that implements Business to Business (B2B) model. PT XY's efforts to maintain relationships with their customers is by creating an account plan. Account plan is a strategy developed by PT XY’s account managers (AM) t...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/84146 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | PT XY is an information and communication technology (ICT) services company
that implements Business to Business (B2B) model. PT XY's efforts to maintain
relationships with their customers is by creating an account plan. Account plan is
a strategy developed by PT XY’s account managers (AM) to ensure customer
retention by encouraging them to continue using PT XY's services and products and
keep renewing their contracts. The goal of creating an account plan to improve
customer retention, keep existing customers, and expand sales potential. However,
PT XY is experiencing sales issues that did not meet the desired target throughout
2023, along with a declining trend of enterprises customer amount from 2021 to
2023. This problem emerged because PT XY did not use their customers’ data to
determine customer segmentation and the appropriate account plan strategies for
each segment. As a result, the purpose of this research is to design a customer
segmentation model for PT XY using data mining methods based on customer
transaction data, with the hope of improving the effectiveness of PT XY's account
plan strategies.
The customer segmentation model in this research is made using the CRISP-DM
methodology and clustering as one of data mining techniques, based on the Recency,
Frequency, and Monetary (RFM) model, with segments that are categorized based
on Customer Lifetime Value (CLV). The modeling process are carried out with
cluster analysis based on RFM variables using algorithms such as k-means, CLARA,
agglomerative, DBSCAN, OPTICS, spectral, and EM. Based on the performance
evaluation of the clustering models, the CLARA algorithm produces the best
clusters, and so the results of the CLARA clustering are used to calculate the CLV
values. Customers are then categorized into segments based on their CLV values.
The outcome of this research is a customer segmentation model prototype designed
using a shiny web app on RStudio software.
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