Endogenous Variable: Definition, Meaning, and Examples

Will Kenton is an expert on the economy and investing laws and regulations. He previously held senior editorial roles at Investopedia and Kapitall Wire and holds a MA in Economics from The New School for Social Research and Doctor of Philosophy in English literature from NYU.

Updated October 30, 2020 Reviewed by Reviewed by Khadija Khartit

Khadija Khartit is a strategy, investment, and funding expert, and an educator of fintech and strategic finance in top universities. She has been an investor, entrepreneur, and advisor for more than 25 years. She is a FINRA Series 7, 63, and 66 license holder.

Endogenous Variable

What Is an Endogenous Variable?

An endogenous variable is a variable in a statistical model that is changed or determined by its relationship with other variables within the model. In other words, an endogenous variable is synonymous with a dependent variable, meaning it correlates with other factors within the system being studied. Therefore, its values may be determined by other variables.

Endogenous variables are the opposite of exogenous variables, which are independent variables or outside forces. However, exogenous variables can have an impact on endogenous factors.

Key Takeaways

Understanding Endogenous Variables

Endogenous variables are important in econometrics and economic modeling because they show whether a variable causes a particular effect. Economists employ causal modeling to explain outcomes by analyzing dependent variables based on a variety of factors. For example, in a model studying supply and demand, the price of a good is an endogenous factor because the price can be changed by the producer (supplier) in response to consumer demand.

Economists also include independent variables to help determine to which extent a result can be attributed to an exogenous or endogenous cause. Endogenous variables have values that shift as part of a functional relationship between other variables within the model. The relationship is also referred to as dependent and is seen as predictable in nature.

The variables typically correlate in such a way that a movement in one variable should result in a move in the other variable. In other words, the variables should correlate with each other. However, they don’t necessarily need to move in the same direction, meaning a rise in one factor could cause a fall in another. As long as the change in the variables is correlating, it’s considered endogenous—regardless of whether it’s a positive or negative correlation.

Although endogenous variables are the dependent variables that correlate with each other, knowing to what extent exogenous variables impact a model is important to consider.

Outside of economics, other fields that use models with endogenous variables include meteorology and agriculture. Sometimes, the relationship in these models is only endogenous in one direction. For example, while pleasant weather may lead to a higher rate of tourism, higher tourism rates do not affect the weather.

Endogenous vs. Exogenous Variables

In contrast to endogenous variables, exogenous variables are considered independent. In other words, one variable within the formula doesn’t dictate or directly correlate to a change in another. Exogenous variables have no direct or formulaic relationship. For example, personal income and color preference, rainfall and gas prices, and education obtained and favorite flower would all be considered exogenous factors.

Examples of Endogenous Variables

For example, assume a model is examining the relationship between employee commute times and fuel consumption. As the commute time rises within the model, fuel consumption also increases. The relationship makes sense since the longer a person’s commute, the more fuel it takes to reach the destination. For example, a 30-mile commute requires more fuel than a 20-mile commute. Other relationships that may be endogenous include:

In What Areas Are Endogenous Variables Important?

Endogenous variables show whether a variable causes a particular effect. That makes them important in econometrics and economic modeling.

What Other Fields Use Endogenous Variables?

Agriculture and meteorology are among the other fields that use models with endogenous variables.

How Do Endogenous Variables Differ from Exogenous Variables?

Unlike endogenous variables, exogenous variables are considered independent. One variable within the formula doesn’t dictate or directly correlate to a change in another.

The Bottom Line

An endogenous variable is a variable in a statistical model. It’s changed or determined by its relationship with other variables within the model.

To put it another way, an endogenous variable is synonymous with a dependent variable, meaning it correlates with other factors within the system being studied. Therefore, its values may be determined by other variables.