# In R, how can I compute the summary function in parallel?

I have a huge dataset. I computed the multinomial regression by multinom in nnet package.

``````mylogit<- multinom(to ~ RealAge, mydata)
``````

It takes 10 minutes. But when I use summary function to compute the coefficient it takes more than 1 day!!! This is the code I used:

``````output <- summary(mylogit)

Coef<-t(as.matrix(output\$coefficients))
``````

I was wondering if anybody know how can I compute this part of the code by parallel processing in R?

this is a small sample of data:

``````mydata:
to  RealAge
513 59.608
513 84.18
0   85.23
119 74.764
116 65.356
0   89.03
513 92.117
69  70.243
253 88.482
88  64.23
513 64
4   84.03
65  65.246
69  81.235
513 87.663
513 81.21
17  75.235
117 49.112
69  59.019
20  90.03
``````
• Can you provide some reproducible data where the time to get the summary is larger than the time to fit the model? – F. Privé Dec 25 '17 at 19:25
• Yes, I added a small sample data for your consideration – Somayeh Ghazalbash Dec 25 '17 at 20:02
• What is `out` and `FinalData`? Moreover, your example will be too quick to see anything. – F. Privé Dec 25 '17 at 21:27
• I edited my question to better understand the problem. Is it clear now for you? Thank you for your help. – Somayeh Ghazalbash Dec 25 '17 at 23:54
• Did you try using the `coef()` method instead of the `summary()`? – F. Privé Dec 26 '17 at 10:17

If you just want the coefficients, use only the `coef()` method which do less computations.

Example:

``````mydata <- readr::read_table("to  RealAge
513 59.608
513 84.18
0   85.23
119 74.764
116 65.356
0   89.03
513 92.117
69  70.243
253 88.482
88  64.23
513 64
4   84.03
65  65.246
69  81.235
513 87.663
513 81.21
17  75.235
117 49.112
69  59.019
20  90.03")[rep(1:20, 3000), ]

mylogit <- nnet::multinom(to ~ RealAge, mydata)
system.time(output <- summary(mylogit))          # 6 sec
all.equal(output\$coefficients, coef(mylogit))    # TRUE & super fast
``````

If you profile the `summary()` function, you'll see that the most of the time is taken by the `crossprod()` function. So, if you really want the output of the `summary()` function, you could use an optimized math library, such as the MKL provided by Microsoft R Open.

• it's too fast. Thank you so much – Somayeh Ghazalbash Dec 26 '17 at 16:28
• @SomayehGhazalbash If you are okay with this answer, you can accept it (on the left). – F. Privé Dec 26 '17 at 22:49
• Is there any easy and fast code for computing p_value, too? It's much appreciated if you let me know about it. – Somayeh Ghazalbash Dec 27 '17 at 23:11
• @SomayehGhazalbash See what I said about the `summary()` function in my answer. – F. Privé Dec 28 '17 at 8:23