n this video, we’ll explore the basics of linear regression, one of the most common techniques used in data science and statistics. Linear regression is a method used to model the relationship between a dependent variable (what you want to predict) and an independent variable (the input you use to make predictions). The goal is to find the best-fitting straight line through the data points.
We’ll discuss how the line is determined using the formula:
y=mx+b
Where:
y is the dependent variable (the value you’re predicting),
x is the independent variable (the input data),
m is the slope of the line (how much
y changes with
b is the y-intercept (the value of
By fitting this line to your data, you can make predictions and understand trends. We’ll break down the concept with examples and explain how it’s applied in real-world scenarios like predicting prices, trends, and more.
Watch till the end to see how simple linear regression can be used to make predictions with just a few data points!
Linear Regression Explained Simply
"Understanding Linear Regression: The Basics (For Beginners)"
"What is Linear Regression? A Simple Explanation"
"Learn Linear Regression in 5 Minutes
"Mastering Linear Regression: A Beginner’s Guide"
"Linear Regression Demystified: How It Works in Simple Terms"
"The Power of Linear Regression: Simple Explanation & Examples"
"Predicting with Linear Regression:
"What is Linear Regression and Why It’s Important for Data Science"
"Linear Regression 101: The Essentials
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