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Predicting Customer Detractors (Part 2): Opportunity Analysis from Open Feedback
This case study explores opportunities to increase the likelihood that customers recommend the company’s customer service. It is a continuation of the project [Predicting Customer Detractors (Part 1): Analyzing Contextual Factors via Logistic Regression](https://rpubs.com/galdovaldonavas/1335090), which identified the service contexts with the lowest likelihood of recommendation (i.e., contact methods, contact reasons, and countries). Building on those findings, this follow-up project focuses on **understanding the root causes of dissatisfaction** and quantifying the potential benefits of addressing them. Specifically, we conduct a thematic analysis of open-ended feedback from Net Promoter Score (NPS) surveys to identify actionable issues. We then assess the expected impact of solving these problems on customers’ likelihood to recommend. The analysis includes: - Data simulation and cleaning. - Exploratory analysis with descriptive statistics and visualizations. - Logistic regression modeling. - Simulation-based predictions using bootstrapping. Although based on a real-world project, all data, variables, and insights presented here have been simulated to ensure confidentiality.
720 Discussion Week 3
Week 3 Discussion
Assignment 1
Aula 1 - Regressão Linear Multipla
Exercício de regressão linear múltipla utilizando a PNAD Contínua do 4tri de 2024
Coeficiente de Correlación de Spearman
Coeficiente de Correlación de Spearman
hw2_Hoffman
pdf version
Prova
Boa noite. Segue prova realizada hoje
HW2_Hoffman
HW2_Hoffman
Atividade_2