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Data Forecasting and Segmentation Using Microsoft Excel

You're reading from   Data Forecasting and Segmentation Using Microsoft Excel Perform data grouping, linear predictions, and time series machine learning statistics without using code

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Product type Paperback
Published in May 2022
Publisher Packt
ISBN-13 9781803247731
Length 324 pages
Edition 1st Edition
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Author (1):
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Fernando Roque Fernando Roque
Author Profile Icon Fernando Roque
Fernando Roque
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Table of Contents (19) Chapters Close

Preface 1. Part 1 – An Introduction to Machine Learning Functions
2. Chapter 1: Understanding Data Segmentation FREE CHAPTER 3. Chapter 2: Applying Linear Regression 4. Chapter 3: What is Time Series? 5. Part 2 – Grouping Data to Find Segments and Outliers
6. Chapter 4: Introduction to Data Grouping 7. Chapter 5: Finding the Optimal Number of Single Variable Groups 8. Chapter 6: Finding the Optimal Number of Multi-Variable Groups 9. Chapter 7: Analyzing Outliers for Data Anomalies 10. Part 3 – Simple and Multiple Linear Regression Analysis
11. Chapter 8: Finding the Relationship between Variables 12. Chapter 9: Building, Training, and Validating a Linear Model 13. Chapter 10: Building, Training, and Validating a Multiple Regression Model 14. Part 4 – Predicting Values with Time Series
15. Chapter 11: Testing Data for Time Series Compliance 16. Chapter 12: Working with Time Series Using the Centered Moving Average and a Trending Component 17. Chapter 13: Training, Validating, and Running the Model 18. Other Books You May Enjoy

Summary

The forecast calculation depends entirely on the quality of autocorrelation in the data. If present values are dependent on past data, then the data will give good future predictions for the time series. The Durbin-Watson probe to check the level of autocorrelation of the time series tells us how good the prediction will be by measuring the influence of past data on the current values.

The season component depends on the CMA distance to the data. The season component is determined by the forecast as a factor to move the trend (linear regression) up or down, depending on the cycles of the time series. Comparing the forecast time-series line chart with the original data gives us an idea of how accurate the model's prediction is.

In this chapter, we learned to use the CMA to smooth the peaks and troughs of the seasonal values over the years. The CMA helps to calculate the seasonal trend weight that leads the regression line up and down for the monthly dependable forecasting...

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