ANALYSIS OF CUSTOMER SATISFACTION IN PURCHASING SKINCARE IN THE TOKOPEDIA APPLICATION USING TEXT CLASSIFICATION AND TOPIC MODELING

Authors

  • Fauzi Latif Soeroto Telkom University
  • Puspita Kencana Sari Telkom University

Abstract

This study aims to analyze customer satisfaction in purchasing skincare products on the
Tokopedia platform using sentiment classification and topic modeling approaches. Amid the
growing trend of online shopping, customer reviews as a form of User-Generated Content (UGC)
have become a crucial source of information that directly reflects consumers’ experiences and
perceptions. The study uses 14,716 reviews from five leading local skincare brands, analyzed using
the IndoBERT model for sentiment classification and BERTopic to identify the main themes across
several e-satisfaction dimensions, namely: Delivery, Product Quality, Offers & Discount, and
Customer Support. The analysis shows that the Delivery dimension most frequently receives
negative sentiment, while Product Quality dominates positive reviews. Topic modeling reveals key
issues discussed by users, such as delayed shipping, packaging conditions, product quality, and
promotional programs, which reflect both the strengths and weaknesses of the services. These
findings provide strategic insights for e-commerce platforms and skincare brands to enhance
logistics, maintain product quality, refine marketing strategies, and improve the overall customer
experience.

Tokopedia, Customer Satisfaction, Skincare, Sentiment Analysis, BERTopic, ESatisfaction

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Published

2026-06-03

Issue

Section

Prodi S1 International ICT Business