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project: (Customer Personality Analysis for Marketing Optimization); database: (Customer Segmentation: Clustering)

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ferserna95/analysis-of-different-databases-

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Customer Personality Analysis for Marketing Optimization

This project analyzes the personality of customers of a company that sells products through various channels (physical store, website, catalog), using purchase data, campaigns and demographic characteristics.

πŸ“Š Project Objectives

  • Customer Segmentation: Group customers according to purchasing behavior and demographic characteristics.
  • Identification of Popular Products: Determine the most purchased products and the segments with the highest spending.
  • Campaign Effectiveness Evaluation: Measure the effectiveness of marketing campaigns according to client characteristics.
  • Campaign Response Prediction: Predict the probability that a customer will respond to future campaigns.
  • Optimization of Marketing Strategies: Focus resources on the most valuable segments.

πŸ› οΈ Methodology

  • Segmentation: Use of the Elbow Method to determine the optimal number of clusters (3 suggested clusters).
  • Campaign Effectiveness Analysis: Visualization of response rates, segmentation by demographic characteristics and ROI analysis.
  • Predictive Models: Classification with Random Forest to predict the response to campaigns based on income, total spending and in-store purchases.

⚑ Key Results

  • Identified Segments: Three main segments:
    • High income/expense
    • Young people with low spending
    • Frequent buyers in stores
  • Campaign Response Rate: The overall rate is low (7% max.), but certain segments respond better.
  • Model Accuracy: 84% accuracy, although the ROC AUC is low (0.55), which indicates opportunity for improvement.

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project: (Customer Personality Analysis for Marketing Optimization); database: (Customer Segmentation: Clustering)

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