# Polynomial contrasts for regression

I cannot understand the usage of polynomial contrasts in regression fitting. In particular, I am referring to an encoding used by R in order to express an interval variable (ordinal variable with equally spaced levels), described at this page.

In the example of that page, if I understood correctly, R fits a model for an interval variable, returning some coefficients which weights its linear, quadratic, or cubic trend. Hence, the fitted model should be:

$${\rm write} = 52.7870 + 14.2587X - 0.9680X^2 - 0.1554X^3,$$

where $X$ should take values $1$, $2$, $3$, or $4$ according to the different level of the interval variable.

Is this correct? And, if so, what was the purpose of polynomial contrasts?

• No, those coefficients are for the orthogonal polynomial terms: you've written the model for raw polynomial terms. Replace $X$, $X^2$, & $X^3$, with values of $L$, $Q$, & $C$ respectively (from the look-up table). Jun 28 '14 at 10:00
• Dear @Scortchi, thank you for your reply. I guess to understand what you mean, but then I did not honestly understand how these orthogonal polynomial terms work. :P Jun 28 '14 at 15:52
• As a notational matter, what you have isn't quite the fitted model. You either need a giant 'hat' over write (or E[write]), which means the predicted value of write or the expected value of write; or you need a '+e' at the end to indicate the residuals. Oct 5 '14 at 2:02
• @Scortchi What is, or how can you find, the "look-up table"? Apr 8 '16 at 13:35
• @AntoniParellada: It's the table in the page the OP linked to: ats.ucla.edu/stat/r/library/contrast_coding.htm#ORTHOGONAL. & got with contr.poly in R. Apr 8 '16 at 13:41

Just to recap (and in case the OP hyperlinks fail in the future), we are looking at a dataset hsb2 as such:

   id     female race ses schtyp prog read write math science socst
1  70        0    4   1      1    1   57    52   41      47    57
2 121        1    4   2      1    3   68    59   53      63    61
...
199 118      1    4   2      1    1   55    62   58      58    61
200 137      1    4   3      1    2   63    65   65      53    61


which can be imported here.

We turn the variable read into and ordered / ordinal variable:

hsb2$readcat<-cut(hsb2$read, 4, ordered = TRUE)
(means = tapply(hsb2$write, hsb2$readcat, mean))
(28,40]  (40,52]  (52,64]  (64,76]
42.77273 49.97849 56.56364 61.83333


Now we are all set to just run a regular ANOVA - yes, it is R, and we basically have a continuous dependent variable, write, and an explanatory variable with multiple levels, readcat. In R we can use lm(write ~ readcat, hsb2)

1. Generating the contrast matrix:

There are four different levels to the ordered variable readcat, so we'll have $n-1=3$ contrasts.

table(hsb2$readcat) (28,40] (40,52] (52,64] (64,76] 22 93 55 30  First, let's go for the money, and take a look at the built-in R function: contr.poly(4) .L .Q .C [1,] -0.6708204 0.5 -0.2236068 [2,] -0.2236068 -0.5 0.6708204 [3,] 0.2236068 -0.5 -0.6708204 [4,] 0.6708204 0.5 0.2236068  Now let's dissect what went on under the hood: scores = 1:4 # 1 2 3 4 These are the four levels of the explanatory variable. y = scores - mean(scores) # scores - 2.5 $y = \small [-1.5, -0.5, 0.5, 1.5]\small \text{seq_len(n) - 1} = [0, 1, 2, 3]$n = 4; X <- outer(y, seq_len(n) - 1, "^") # n = 4 in this case $\small\begin{bmatrix} 1&-1.5&2.25&-3.375\\1&-0.5&0.25&-0.125\\1&0.5&0.25&0.125\\1&1.5&2.25&3.375 \end{bmatrix}$What happened there? the outer(a, b, "^") raises the elements of a to the elements of b, so that the first column results from the operations,$\small(-1.5)^0$,$\small(-0.5)^0$,$\small 0.5^0$and$\small 1.5^0$; the second column from$\small(-1.5)^1$,$\small(-0.5)^1$,$\small0.5^1$and$\small1.5^1$; the third from$\small(-1.5)^2=2.25$,$\small(-0.5)^2 = 0.25$,$\small0.5^2 = 0.25$and$\small1.5^2 = 2.25$; and the fourth,$\small(-1.5)^3=-3.375$,$\small(-0.5)^3=-0.125$,$\small0.5^3=0.125$and$\small1.5^3=3.375$. Next we do a$QR$orthonormal decomposition of this matrix and take the compact representation of Q (c_Q = qr(X)$qr). Some of the inner workings of the functions used in QR factorization in R used in this post are further explained here.

$\small\begin{bmatrix} -2&0&-2.5&0\\0.5&-2.236&0&-4.584\\0.5&0.447&2&0\\0.5&0.894&-0.9296&-1.342 \end{bmatrix}$

... of which we save the diagonal only (z = c_Q * (row(c_Q) == col(c_Q))). What lies in the diagonal: Just the "bottom" entries of the $\bf R$ part of the $QR$ decomposition. Just? well, no... It turns out that the diagonal of a upper triangular matrix contains the eigenvalues of the matrix!

Next we call the following function: raw = qr.qy(qr(X), z), the result of which can be replicated "manually" by two operations: 1. Turning the compact form of $Q$, i.e. qr(X)$qr, into$Q$, a transformation that can be achieved with Q = qr.Q(qr(X)), and 2. Carrying out the matrix multiplication$Qz$, as in Q %*% z. Crucially, multiplying$\bf Q$by the eigenvalues of$\bf R$does not change the orthogonality of the constituent column vectors, but given that the absolute value of the eigenvalues appears in decreasing order from top left to bottom right, the multiplication of$Qz$will tend to decrease the values in the higher order polynomial columns: Matrix of Eigenvalues of R [,1] [,2] [,3] [,4] [1,] -2 0.000000 0 0.000000 [2,] 0 -2.236068 0 0.000000 [3,] 0 0.000000 2 0.000000 [4,] 0 0.000000 0 -1.341641  Compare the values in the later column vectors (quadratic and cubic) before and after the$QR$factorization operations, and to the unaffected first two columns. Before QR factorization operations (orthogonal col. vec.) [,1] [,2] [,3] [,4] [1,] 1 -1.5 2.25 -3.375 [2,] 1 -0.5 0.25 -0.125 [3,] 1 0.5 0.25 0.125 [4,] 1 1.5 2.25 3.375 After QR operations (equally orthogonal col. vec.) [,1] [,2] [,3] [,4] [1,] 1 -1.5 1 -0.295 [2,] 1 -0.5 -1 0.885 [3,] 1 0.5 -1 -0.885 [4,] 1 1.5 1 0.295  Finally we call (Z <- sweep(raw, 2L, apply(raw, 2L, function(x) sqrt(sum(x^2))), "/", check.margin = FALSE)) turning the matrix raw into an orthonormal vectors: Orthonormal vectors (orthonormal basis of R^4) [,1] [,2] [,3] [,4] [1,] 0.5 -0.6708204 0.5 -0.2236068 [2,] 0.5 -0.2236068 -0.5 0.6708204 [3,] 0.5 0.2236068 -0.5 -0.6708204 [4,] 0.5 0.6708204 0.5 0.2236068  This function simply "normalizes" the matrix by dividing ("/") columnwise each element by the$\small\sqrt{\sum_\text{col.} x_i^2}$. So it can be decomposed in two steps:$(\text{i})$apply(raw, 2, function(x)sqrt(sum(x^2))), resulting in 2 2.236 2 1.341, which are the denominators for each column in$(\text{ii})$where every element in a column is divided by the corresponding value of$(\text{i})$. At this point the column vectors form an orthonormal basis of$\mathbb{R}^4$, until we get rid of the first column, which will be the intercept, and we have reproduced the result of contr.poly(4):$\small\begin{bmatrix} -0.6708204&0.5&-0.2236068\\-0.2236068&-0.5&0.6708204\\0.2236068&-0.5&-0.6708204\\0.6708204&0.5&0.2236068 \end{bmatrix}$The columns of this matrix are orthonormal, as can be shown by (sum(Z[,3]^2))^(1/4) = 1 and z[,3]%*%z[,4] = 0, for example (incidentally the same goes for rows). And, each column is the result of raising the initial$\text{scores - mean}$to the$1$-st,$2$-nd and$3$-rd power, respectively - i.e. linear, quadratic and cubic. 2. Which contrasts (columns) contribute significantly to explain the differences between levels in the explanatory variable? We can just run the ANOVA and look at the summary... summary(lm(write ~ readcat, hsb2)) Coefficients: Estimate Std. Error t value Pr(>|t|) (Intercept) 52.7870 0.6339 83.268 <2e-16 *** readcat.L 14.2587 1.4841 9.607 <2e-16 *** readcat.Q -0.9680 1.2679 -0.764 0.446 readcat.C -0.1554 1.0062 -0.154 0.877  ... to see that there is a linear effect of readcat on write, so that the original values (in the third chunk of code in the beginning of the post) can be reproduced as: coeff = coefficients(lm(write ~ readcat, hsb2)) C = contr.poly(4) (recovered = c(coeff %*% c(1, C[1,]), coeff %*% c(1, C[2,]), coeff %*% c(1, C[3,]), coeff %*% c(1, C[4,]))) [1] 42.77273 49.97849 56.56364 61.83333  ... or... ... or much better... Being orthogonal contrasts the sum of their components adds to zero$\displaystyle \sum_{i=1}^t a_i = 0$for$a_1,\cdots,a_t$constants, and the dot product of any two of them is zero. If we could visualized them they would look something like this: The idea behind orthogonal contrast is that the inferences that we can exctract (in this case generating coefficients via a linear regression) will be the result of independent aspects of the data. This would not be the case if we simply used$X^0, X^1, \cdots. X^nas contrasts. Graphically, this is much easier to understand. Compare the actual means by groups in large square black blocks to the prediced values, and see why a straight line approximation with minimal contribution of quadratic and cubic polynomials (with curves only approximated with loess) is optimal: If, just for effect, the coefficients of the ANOVA had been as large for the linear contrast for the other approximations (quadratic and cubic), the nonsensical plot that follows would depict more clearly the polynomial plots of each "contribution": The code is here. • +1 Wow. Can this answer (I haven't read it till the end so far) be seen as an answer to my old, forgotten question too stats.stackexchange.com/q/63639/3277? Apr 9 '16 at 16:24 • (+1) @ttnphns: Arguably it'd fit even better there. Apr 9 '16 at 16:28 • Just a tip: You might want to comment me there with a link to here; or issue an answer there - which I am likely to accept. Apr 9 '16 at 16:31 • @ttnphns and @Scortchi Thank you! I spent quite some time trying to make sense of these concepts, and didn't expect much reaction. So it is a very positive surprise. I think there are some wrinkles to iron out in regards to explaining the qr.qy() function, but I'll definitely try to see if I can say something minimally coherent about your question as soon as I have some time. Apr 9 '16 at 19:17 • @Elvis I did try to choose a good summary sentence and place it somewhere in the post. I think this is a good point, and calls for a nice mathematical explanation, but it may be too much at this point to elaborate further. Apr 16 '16 at 18:44 I will use your example to explain how it works. Using polynomial contrasts with four groups yields following. \begin{align} E\,write_1 &= \mu -0.67L + 0.5Q -0.22C\\ E\,write_2 &= \mu -0.22L -0.5Q + 0.67C\\ E\,write_3 &= \mu + 0.22L -0.5Q -0.67C\\ E\,write_4 &= \mu + 0.67L + 0.5Q + 0.22C \end{align} Where first equation works for the group of lowest reading scores and the fourth one for the group of best reading scores. we can compare these equations to the one given using normal linear regression (supposingread_i$is continous) $$E\,write_i=\mu+read_iL + read_i^2Q+read_i^3C$$ Usually instead of$L,Q,C$you would have$\beta_1, \beta_2, \beta_3$and written at first position. But this writing resembles the one with polynomial contrasts. So numbers in front of$L, Q, C$are actually instead of$read_i, read_i^2, read_i^3$. You can see that coefficients before$L$have linear trend, before$Q$quadratic and before$C$cubic. Then R estimates parameters$\mu, L,Q,C$and gives you $$\widehat{\mu}=52.79, \widehat{L}=14.26, \widehat{Q}=−0.97, \widehat{C}=−0.16$$ Where$\widehat{\mu}=\frac{1}{4}\sum_{i=1}^4E\,write_i$and estimated coefficients$\widehat{\mu}, \widehat{L}, \widehat{Q}, \widehat{C}$are something like estimates at normal linear regression. So from the output you can see if estimated coefficients are significantly different from zero, so you could anticipate some kind of linear, quadratic or cubic trend. In that example is significantly non-zero only$\widehat{L}\$. So your conclusion could be: We see that the better scoring in writing depends linearly on reading score, but there is no significant quadratic or cubic effect.