Predictive Customer Analytics
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.86 GB | Duration: 3h 24m
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.86 GB | Duration: 3h 24m
Build predictive machine learning and forecasting models in Excel to build customer decision and customer behavior
What you'll learn
Discover how to preprocess customer data for predictive modeling using Excel.
Master the application of linear regression in Excel to predict customer behavior.
Explore the use of logistic regression for customer churn prediction and retention strategies.
Analyze customer data using clustering techniques to segment customer groups.
Build sales forecasting models using Excel’s Solver and time series analysis.
Implement XLSTAT for advanced statistical analysis in customer predictions.
Develop and run logistic regression models using Excel Macros for automation.
Predict future customer behavior with additive and multiplicative time series models.
Interpret the results of regression and clustering models to make actionable business decisions.
Evaluate the effectiveness of your predictive models in improving customer retention and business strategies.
Requirements
A PC/ laptop with good internet connection and MS Excel installed on it
Description
Are you an aspiring data analyst or business professional looking to make data-driven decisions that impact customer behavior and retention? Do you want to leverage Excel to build predictive models without the complexity of advanced coding? If yes, this course is for you.In today’s competitive market, understanding customer behavior is key to business success. Predictive Customer Analytics helps you stay ahead by forecasting customer decisions, improving retention, and driving targeted marketing strategies. This course will empower you to use Excel as a powerful tool for building predictive machine learning models and forecasting techniques, even if you’re not an expert in data science.In this course, you will:Develop a solid understanding of linear and logistic regression techniques in Excel to predict customer behavior.Master clustering techniques for customer segmentation, identifying key groups within your customer base.Build sales forecasting models using Excel’s Solver and time series methods.Implement real-world solutions with case studies, such as predicting customer churn and segmenting customers for better marketing strategies.Why is Predictive Customer Analytics so important? By using Excel, a tool most professionals are already familiar with, you can unlock deeper insights into customer data, enabling better decision-making without needing advanced technical skills. From forecasting sales trends to retaining key customers, predictive analytics is a game-changer for businesses looking to grow and scale.Throughout the course, you will complete hands-on exercises in Excel, including:Preprocessing customer data for linear and logistic regressionBuilding predictive models using XLSTAT and Excel MacrosClustering customer data for segmentation analysisImplementing time series forecasting to predict salesWhat sets this course apart is its focus on practical, easy-to-implement techniques that don’t require programming knowledge. You’ll learn how to utilize Excel’s advanced features to get accurate, actionable results quickly.Ready to transform your customer insights? Enroll today and start building your own predictive models in Excel!
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 Course resources
Lecture 3 The Importance of Predictive Customer Analytics
Lecture 4 Types of Predictive Models
Lecture 5 Sneak Peek into the Course
Section 2: Fundamentals of Linear Regression
Lecture 6 Introduction to Linear Regression
Lecture 7 Conceptual Understanding of Linear Regression
Lecture 8 Understanding the output of Linear Regression
Lecture 9 Understanding the Data for Linear Regression
Lecture 10 Data Preprocessing for Linear Regression
Lecture 11 Interpreting Linear Regression Outputs
Lecture 12 Making Predictions with Linear Regression
Lecture 13 Implementing Linear Regression using XLSTAT
Section 3: Customer Retention and Logistic Regression
Lecture 14 Customer Retention: Key Insights
Lecture 15 Introduction to Logistic Regression
Lecture 16 Understanding the Confusion Matrix
Lecture 17 Case Study: Logistic Regression for Customer Churn
Lecture 18 Implementing Logistic Regression using XLSTAT
Lecture 19 Logistic Regression using Macros
Section 4: Customer Segmentation with Clustering
Lecture 20 Introduction to Clustering
Lecture 21 K-Mean Clustering basics
Lecture 22 Case Study: Clustering for Customer Segmentation
Lecture 23 Implementing Clustering using XLSTAT
Section 5: Forecasting Techniques
Lecture 24 Introduction to Forecasting
Lecture 25 Sales Forecasting
Lecture 26 Additive time series model in Excel
Lecture 27 Multiplicative time series model in Excel
Section 6: Conclusion
Lecture 28 About your certificate
Lecture 29 Bonus lecture
Marketing professionals who want to use data to predict customer behavior and enhance targeted campaigns.,Sales managers looking to forecast sales trends and improve customer retention strategies.,Data analysts who want to build predictive models in Excel without needing complex coding skills.,Small business owners aiming to make data-driven decisions to optimize customer acquisition and retention.