Repositório para o #alurachallengedatascience1
-
Updated
May 30, 2022 - Jupyter Notebook
Repositório para o #alurachallengedatascience1
Machine-Learning-1
A churn model is a mathematical representation of how churn impacts your business. Churn calculations are built on existing data (the number of customers who left your service during a given time period). A predictive churn model extrapolates on this data to show future potential churn rates.
- The project is based on a bank dataset where we analyzed each feature. To understand why customers are leaving.
Churn Modelling using XGBoost
⚡ Code for machine Learning Pipeline with Scikit-learn ⚡
Customer churn prediction for telecom dataset
Repositório destinado a documentar o desafio de Data Science da Alura #alurachallengedatascience1
Used Random Forest model to predict customers likely to churn and recommended discount and pricing strategies to improve customers retention.
Challenge de Data Science da Alura - Alura-Voz
This repository presents a machine learning classification project focused on predicting customer churn in the telecommunications industry.
Churn Modelling - unusual rate at which customers leaving the company, we need to figure out why? we need to understand the problem? We actually need to create a demographic segmentation model to tell the bank/company which customers are at high risk of leaving.
Churn prediction for banking customers using logistic regression and decision trees, implemented from scratch in R.
Graduation Project Repository - Bogazici University IE 492 - Spring 2024
Данный проект выполнен в процессе обучения в Яндекс Практикум по программе Специалист Data Science +. Проект посвящен прогнозированию оттока клиентов банка на основе исторических данных.
Built a logistic regression based predictive model to identify customers at high risk of churn and identify the main indicators of churn.
Churn_Modelling Using Deep Learning (Implemented ANN)
Churn Modelling with Bank Customer Prediction using ANN: Utilizing Artificial Neural Networks for predicting customer churn in banking scenarios.
Add a description, image, and links to the churn-modelling topic page so that developers can more easily learn about it.
To associate your repository with the churn-modelling topic, visit your repo's landing page and select "manage topics."