What is an Interaction?
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Revision as of 02:59, 29 June 2007
- Interactions are when the effect of two, or more, variables is not simply additive. This page describes the interaction between two variables. It is possible to examine the interactions of three or more variables but this is beyond the scope of this page.
Examples
- Imagine a study about the effect of energy bars and energy drinks on time to run the 1500 meters. The quantity of energy bars and energy drinks represent two variables. The dependent variable is the time taken to run 1500 meters.
- Example 1 - An interaction occurs if running speed improves by more than just the additive effect of having either an energy bar or an energy drink. For example, imagine eating a certain amount of energy bars increases running speed by 3 seconds, and drinking energy drinks increases running speed by 2 seconds. An interaction occurs if the joint effect of energy bars and energy drinks increases running speed by more than 5 seconds, such as liquid in the drink amplifying the ability to digest the energy in the bar leading to faster times.
- Chart 1a below shows an additive effect
- Chart 1b below shows an Interaction.
- Example 2 - A second example of an interaction is that alone neither variable may have an effect on running speed, such as imagining that an energy bar by itself, or an energy drink by itself, is unable to increase running speed. But, there might be an interaction effect that influences running speed when you eat the bar and drink the drink, such as the energy bar having a chemical that unleashes the power of the energy drink to increase running speed.
- Chart 2a shows when neither variable has an effect, with no Interaction
- Chart 2b also shows when neither variable has an effect, but now with an Interaction
- Example 3 - A final example is when one of the variables has an effect but not the other. When a variable has an effect (such as the energy bar increasing running speed, or the energy drink increasing running speed) that is called a Main Effect.
- Chart 3a shows a Main Effect for the energy bar, with no Interaction
- Chart 3b shows the same Main Effect for the energy bar, but now with an Interaction
- Chart 4a shows a Main Effect for the energy drink, with no Interaction
- Chart 4b shows the same Main Effect for the energy drink, but now with an Interaction
- Example 1 - An interaction occurs if running speed improves by more than just the additive effect of having either an energy bar or an energy drink. For example, imagine eating a certain amount of energy bars increases running speed by 3 seconds, and drinking energy drinks increases running speed by 2 seconds. An interaction occurs if the joint effect of energy bars and energy drinks increases running speed by more than 5 seconds, such as liquid in the drink amplifying the ability to digest the energy in the bar leading to faster times.
Graphical representations of interactions
- ►When an energy bar increases running speed, that is called a "Main Effect" (ME) for the energy bar; and when the energy drink also increases running speed, that is a ME for the energy drink. Chart 1 below shows the graphical result when there are two ME but no Interactions.
- ►
Statistical formula behind interactions
- For those more technically minded, here is the algebra. An interaction effect reflects the effect of the interaction controlling for the two predictors themselves.
- In the following examples:
- energy bar = X1,
- energy drink = X2
- the interaction = X1*X2,
- Y = running speed
- Here is the formula for: Running speed = intercept + b1energy drink + b2energy bar + b3(bar * drink) + e_{i}
- Y_{i} = b_{0} + b_{1}X1_{i} + b_{2}X2_{i} + b_{3}(X1_{i} X2_{i}) + e_{i}
- This formula can be rewritten as
- Y_{i} = (b_{0} + b_{2}X_{2i}) + (b_{1}+ b_{3}X_{2i}) X_{1i} + e_{i}
- where (b_{1}+ b_{3}X_{2i}) represents the effect of X_{1} on Y at specific levels of X_{2}
- and b_{3} indicates how much the slope of X_{1} changes as X_{2} goes up or down one unit.
- It is then possible to factor out X_{2}
- Y_{i} = (b_{0} + b_{1}X_{1i}) + (b_{2}+ b_{3}X_{1i}) X_{2i} + e_{i}
- where (b_{2}+ b_{3}X_{1i}) represents the effect of X_{2} on Y at specific levels of X_{1}
- and b_{3} indicates how much the slope of X_{2} changes as X_{2} goes up or down one unit.
- In the following examples: