The goal of a model is to get the smallest possible sum of squares and draw a line that comes closest to the data. Technically, a regression analysis model is based on the sum of squares, which is a mathematical way to find the dispersion of data points. Regression analysis helps you understand how the dependent variable changes when one of the independent variables varies and allows to mathematically determine which of those variables really has an impact.
Independent variables (aka explanatory variables, or predictors) are the factors that might influence the dependent variable. In statistical modeling, regression analysis is used to estimate the relationships between two or more variables:ĭependent variable (aka criterion variable) is the main factor you are trying to understand and predict. Regression analysis in Excel - the basics
But how do you know which ones are really important? Run regression analysis in Excel. You have discovered dozens, perhaps even hundreds, of factors that can possibly affect the numbers. Imagine this: you are provided with a whole lot of different data and are asked to predict next year's sales numbers for your company.
The tutorial explains the basics of regression analysis and shows a few different ways to do linear regression in Excel.