Re-expressing the Data: Get It Straight!

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Re-expressing the Data: Get It Straight! Chapter 9 Re-expressing the Data: Get It Straight!

Straight to the Point We cannot use a linear model unless the relationship between the two variables is linear. Often re-expression can save the day, straightening bent relationships so that we can fit and use a simple linear model. Two simple ways to re-express data are with logarithms and reciprocals. Re-expressions can be seen in everyday life—everybody does it.

Straight to the Point (cont.) The relationship between fuel efficiency (in miles per gallon) and weight (in pounds) for late model cars looks fairly linear at first:

Straight to the Point (cont.) A look at the residuals plot shows a problem:

Straight to the Point (cont.) We can re-express fuel efficiency as gallons per hundred miles (a reciprocal) and eliminate the bend in the original scatterplot:

Straight to the Point (cont.) A look at the residuals plot for the new model seems more reasonable:

Goals of Re-expression Goal 1: Make the distribution of a variable (as seen in its histogram, for example) more symmetric.

Goals of Re-expression (cont.) Goal 2: Make the spread of several groups (as seen in side-by-side boxplots) more alike, even if their centers differ.

Goals of Re-expression (cont.) Goal 3: Make the form of a scatterplot more nearly linear.

Goals of Re-expression (cont.) Goal 4: Make the scatter in a scatterplot spread out evenly rather than thickening at one end. This can be seen in the two scatterplots we just saw with Goal 3:

The Ladder of Powers There is a family of simple re-expressions that move data toward our goals in a consistent way. This collection of re-expressions is called the Ladder of Powers. The Ladder of Powers orders the effects that the re-expressions have on data.

The Ladder of Powers Ratios of two quantities (e.g., mph) often benefit from a reciprocal. The reciprocal of the data –1 An uncommon re-expression, but sometimes useful. Reciprocal square root –1/2 Measurements that cannot be negative often benefit from a log re-expression. We’ll use logarithms here “0” Counts often benefit from a square root re-expression. Square root of data values ½ Data with positive and negative values and no bounds are less likely to benefit from re-expression. Raw data 1 Try with unimodal distributions that are skewed to the left. Square of data values 2 Comment Name Power

Plan B: Attack of the Logarithms When none of the data values is zero or negative, logarithms can be a helpful ally in the search for a useful model. Try taking the logs of both the x- and y-variable. Then re-express the data using some combination of x or log(x) vs. y or log(y).

Plan B: Attack of the Logarithms (cont.)

Multiple Benefits We often choose a re-expression for one reason and then discover that it has helped other aspects of an analysis. For example, a re-expression that makes a histogram more symmetric might also straighten a scatterplot or stabilize variance.

Why Not Just Use a Curve? If there’s a curve in the scatterplot, why not just fit a curve to the data?

Why Not Just Use a Curve? (cont.) The mathematics and calculations for “curves of best fit” are considerably more difficult than “lines of best fit.” Besides, straight lines are easy to understand. We know how to think about the slope and the y-intercept.

What Can Go Wrong? Don’t expect your model to be perfect. Don’t stray too far from the ladder. Don’t choose a model based on R2 alone:

What Can Go Wrong? (cont.) Beware of multiple modes. Re-expression cannot pull separate modes together. Watch out for scatterplots that turn around. Re-expression can straighten many bent relationships, but not those that go up then down, or down then up.

What Can Go Wrong? (cont.) Watch out for negative data values. It’s impossible to re-express negative values by any power that is not a whole number on the Ladder of Powers or to re-express values that are zero for negative powers. Watch for data far from 1. Data values that are all very far from 1 may not be much affected by re-expression unless the range is very large. If all the data values are large (e.g., years), consider subtracting a constant to bring them back near 1.

What have we learned? When the conditions for regression are not met, a simple re-expression of the data may help. A re-expression may make the: Distribution of a variable more symmetric. Spread across different groups more similar. Form of a scatterplot straighter. Scatter around the line in a scatterplot more consistent.

What have we learned? (cont.) Taking logs is often a good, simple starting point. To search further, the Ladder of Powers or the log-log approach can help us find a good re-expression. Our models won’t be perfect, but re-expression can lead us to a useful model.

AP Tips Make sure that you can make accurate predictions using a transformed equation. Make sure that your descriptions use the transformed variable names, not the original variables, as appropriate. For example, “89.6% of the variation in log(weight)…” Don’t get lost in the technology. Most AP problems will ask you evaluate the given output, not ask you to execute long calculator processes.