# R regression with months as independent variables (labels)

I'm wondering if there is a cleaner way than just dummy-coding months (e.g., isJan, isFeb...) to have more meaningful independent variable names (under intercept). My data set is rather large, so I've simulated a simple one here.

``````#create simulated data set with sales, and date
sales <- rnorm(1000, mean = 1000, sd = 40)
dates <- seq(from = 14610, to = 15609)
data <- cbind(sales, dates)

#regression with months
model <- lm(sales ~ months(dates))
summary(model)
``````

I would like the intercept labels to show the actual month they refer to...currently my output looks like this:

``````                 Estimate Std. Error t value Pr(>|t|)
(Intercept)      999.1934     1.2673 788.432   <2e-16 ***
months(dates).L   -4.9537     4.5689  -1.084   0.2785
months(dates).Q   -6.4931     4.4211  -1.469   0.1422
months(dates).C   -5.5078     4.4180  -1.247   0.2128
months(dates)^4    2.3713     4.4864   0.529   0.5972
months(dates)^5   -1.7749     4.4605  -0.398   0.6908
months(dates)^6    1.5774     4.4555   0.354   0.7234
months(dates)^7  -10.9954     4.4511  -2.470   0.0137 *
months(dates)^8   -0.9627     4.4032  -0.219   0.8270
months(dates)^9    1.8847     4.2996   0.438   0.6612
months(dates)^10  -8.5990     4.1776  -2.058   0.0398 *
months(dates)^11   7.8436     4.1292   1.900   0.0578 .
``````

-

The problem you have is that R has created an ordered factor and the contrasts produced for an ordered factor a polynomial contrasts (`.L` is linear, `.Q` is quadratic, `.C` cubic and `.^n` is the n-th order polynomial. It may be better to define the month as a factor, set the first level to January and then fit the model.

If in an English locale, then we can use the `month.name` or `month.abb` constants as follows

``````set.seed(42)
dat <- data.frame(sales = rnorm(1000, mean = 1000, sd = 40),
dates = as.Date(seq(from = 14610, to = 15609),
origin = "1970-01-01"))
dat <- transform(dat, month = factor(format(dates, format = "%B"),
levels = month.name))
``````

This gives

``````> head(dat)
sales      dates   month
1 1054.8383 2010-01-01 January
2  977.4121 2010-01-02 January
3 1014.5251 2010-01-03 January
4 1025.3145 2010-01-04 January
5 1016.1707 2010-01-05 January
6  995.7550 2010-01-06 January
> with(dat, levels(month))
[1] "January"   "February"  "March"     "April"     "May"
[6] "June"      "July"      "August"    "September" "October"
[11] "November"  "December"
``````

Note the order of the levels is in a logical rather than alphabetical order. If you are in a none English locale then the output of `"%B"` will be the month names in your local language or convention. You will then need to provide the correct levels as a character vector to the `levels` argument in the code above.

This data set can then be used to fit the model and we get more meaningful coefficient names

``````> mod <- lm(sales ~ month, data = dat)
> summary(mod)

Call:
lm(formula = sales ~ month, data = dat)

Residuals:
Min       1Q   Median       3Q      Max
-140.333  -24.551    0.108   28.102  134.349

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)    1001.7034     4.1567 240.983   <2e-16 ***
monthFebruary    -8.3618     6.0153  -1.390    0.165
monthMarch       -0.5347     5.8785  -0.091    0.928
monthApril       -7.5618     5.9273  -1.276    0.202
monthMay         -2.2961     5.8785  -0.391    0.696
monthJune         3.5091     5.9273   0.592    0.554
monthJuly        -4.9975     5.8785  -0.850    0.395
monthAugust      -0.3558     5.8785  -0.061    0.952
monthSeptember    3.7597     5.9970   0.627    0.531
monthOctober     -2.5948     6.5724  -0.395    0.693
monthNovember   -10.5670     6.6378  -1.592    0.112
monthDecember    -6.9064     6.5724  -1.051    0.294
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 40.09 on 988 degrees of freedom
Multiple R-squared: 0.01173,    Adjusted R-squared: 0.0007317
F-statistic: 1.066 on 11 and 988 DF,  p-value: 0.3854
``````

In the above, note that January is the first level so its mean is the `(Intercept)` estimate and the other estimates are deviations from the January mean. An alternative parameterisation of the model is to suppress the intercept:

``````> mod2 <- lm(sales ~ month - 1, data = dat)
> summary(mod2)

Call:
lm(formula = sales ~ month - 1, data = dat)

Residuals:
Min       1Q   Median       3Q      Max
-140.333  -24.551    0.108   28.102  134.349

Coefficients:
Estimate Std. Error t value Pr(>|t|)
monthJanuary   1001.703      4.157   241.0   <2e-16 ***
monthFebruary   993.342      4.348   228.5   <2e-16 ***
monthMarch     1001.169      4.157   240.9   <2e-16 ***
monthApril      994.142      4.225   235.3   <2e-16 ***
monthMay        999.407      4.157   240.4   <2e-16 ***
monthJune      1005.213      4.225   237.9   <2e-16 ***
monthJuly       996.706      4.157   239.8   <2e-16 ***
monthAugust    1001.348      4.157   240.9   <2e-16 ***
monthSeptember 1005.463      4.323   232.6   <2e-16 ***
monthOctober    999.109      5.091   196.3   <2e-16 ***
monthNovember   991.136      5.175   191.5   <2e-16 ***
monthDecember   994.797      5.091   195.4   <2e-16 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 40.09 on 988 degrees of freedom
Multiple R-squared: 0.9984, Adjusted R-squared: 0.9984
F-statistic: 5.175e+04 on 12 and 988 DF,  p-value: < 2.2e-16
``````

Now the Estimates are of the monthly means and the t-tests are of the hypothesis that the individual monthly means are zero (0).

-
Thanks again...I was wondering what the .L .C and .Q were. –  JimmyT Jun 8 '12 at 20:26

Create a month variable that is a factor, and R will automatically create pretty names.

``````sales <- rnorm(1000, mean = 1000, sd = 40)
dates <- as.Date(seq(from = 14610, to = 15609),origin='1970-01-01')
data <- data.frame(sales, dates)
data\$months=as.factor(months(dates))

model <- lm(sales ~ months,data=data)
summary(model)
``````

It automatically picks April as the contrast month, but you can change this with `contrasts`.

``````Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)     1001.3989     4.2880 233.535   <2e-16 ***
monthsAugust       6.8982     6.0150   1.147   0.2517
monthsDecember    -6.0561     6.7140  -0.902   0.3673
monthsFebruary    -1.3977     6.1527  -0.227   0.8203
monthsJanuary     -3.2086     6.0150  -0.533   0.5939
monthsJuly       -10.0742     6.0150  -1.675   0.0943 .
monthsJune        -3.3393     6.0641  -0.551   0.5820
monthsMarch        0.3159     6.0150   0.053   0.9581
monthsMay         -0.1448     6.0150  -0.024   0.9808
monthsNovember     3.4901     6.7799   0.515   0.6068
monthsOctober      3.2082     6.7140   0.478   0.6329
monthsSeptember   -7.3039     6.1343  -1.191   0.2341
``````
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Thank you, Perfect! –  JimmyT Jun 8 '12 at 20:26