Regression

Regression

Regression is a statistical method used in finance, investing, and other disciplines that attempts to determine the strength and character of the relationship between one dependent variable (usually denoted by Y) and a series of other variables (known as independent variables). The general form of each type of regression is: **Simple linear regression:** Y = a + bX + u **Multiple linear regression:** Y = a + b1X1 + b2X2 + b3X3 + ... + btXt + u Y = the variable that you are trying to predict (dependent variable). X = the variable that you are using to predict Y (independent variable). a = the intercept. b = the slope. u = the regression residual. Simple linear regression uses one independent variable to explain or predict the outcome of the dependent variable Y, while multiple linear regression uses two or more independent variables to predict the outcome. 1:21 The two basic types of regression are simple linear regression and multiple linear regression, although there are non-linear regression methods for more complicated data and analysis. There are two basic types of regression: simple linear regression and multiple linear regression.

Regression helps investment and financial managers to value assets and understand the relationships between variables

What Is Regression?

Regression is a statistical method used in finance, investing, and other disciplines that attempts to determine the strength and character of the relationship between one dependent variable (usually denoted by Y) and a series of other variables (known as independent variables).

Regression helps investment and financial managers to value assets and understand the relationships between variables, such as commodity prices and the stocks of businesses dealing in those commodities.

Regression helps investment and financial managers to value assets and understand the relationships between variables
Regression can help finance and investment professionals as well as professionals in other businesses.

Regression Explained

The two basic types of regression are simple linear regression and multiple linear regression, although there are non-linear regression methods for more complicated data and analysis. Simple linear regression uses one independent variable to explain or predict the outcome of the dependent variable Y, while multiple linear regression uses two or more independent variables to predict the outcome.

Regression can help finance and investment professionals as well as professionals in other businesses. Regression can also help predict sales for a company based on weather, previous sales, GDP growth, or other types of conditions. The capital asset pricing model (CAPM) is an often-used regression model in finance for pricing assets and discovering costs of capital.

The general form of each type of regression is:

There are two basic types of regression: simple linear regression and multiple linear regression.

Regression takes a group of random variables, thought to be predicting Y, and tries to find a mathematical relationship between them. This relationship is typically in the form of a straight line (linear regression) that best approximates all the individual data points. In multiple regression, the separate variables are differentiated by using subscripts.

A Real World Example of How Regression Analysis Is Used

Regression is often used to determine how many specific factors such as the price of a commodity, interest rates, particular industries, or sectors influence the price movement of an asset. The aforementioned CAPM is based on regression, and it is utilized to project the expected returns for stocks and to generate costs of capital. A stock's returns are regressed against the returns of a broader index, such as the S&P 500, to generate a beta for the particular stock.

Beta is the stock's risk in relation to the market or index and is reflected as the slope in the CAPM model. The return for the stock in question would be the dependent variable Y, while the independent variable X would be the market risk premium.

Additional variables such as the market capitalization of a stock, valuation ratios, and recent returns can be added to the CAPM model to get better estimates for returns. These additional factors are known as the Fama-French factors, named after the professors who developed the multiple linear regression model to better explain asset returns.

Related terms:

Capital Asset Pricing Model (CAPM)

The Capital Asset Pricing Model is a model that describes the relationship between risk and expected return. read more

Commodity

A commodity is a basic good used in commerce that is interchangeable with other goods of the same type. read more

Depression

An economic depression is a steep and sustained drop in economic activity featuring high unemployment and negative GDP growth. read more

Error Term

An error term is a variable in a statistical model when the model doesn't represent the actual relationship between the independent and dependent variables. read more

Line Of Best Fit

The line of best fit is an output of regression analysis that represents the relationship between two or more variables in a data set. read more

Multiple Linear Regression (MLR)

Multiple linear regression (MLR) is a statistical technique that uses several explanatory variables to predict the outcome of a response variable. read more

Defining Nonlinear Regression

Nonlinear regression is a form of regression analysis in which data fit to a model is expressed as a mathematical function. read more

Nonlinearity

Options have a high degree of nonlinearity, which may make them seem unpredictable. Learn about nonlinearity and how to manage your options trading risk. read more

Random Variable

A random variable is a variable whose value is unknown, or a function that assigns values to each of an experiment's outcomes. read more

Recession

A recession is a significant decline in activity across the economy lasting longer than a few months.  read more