# R replacing negative numbers with zero in a matrix

So today I was coding up something in R where I wanted to replace all negative values in a matrix with 0. Call this matrix B. Well this was no problem, I just wrote

``````B[which(B<0)]=0
``````

But then just because I was curious I was wondering, what if we got rid of the which and wrote

``````B[B<0]=0
``````

and to my surprise this also gave the same answer. If I would have looked up this question on stackoverflow the second answer is pretty standard (and there are even more complicated faster methods), but my question is: are the two methods above actually the same? B<0 returns a Boolean matrix. So I am not sure why R interprets B[Boolean matrix] = the elements of B with the same index as the "True" entries in the Boolean matrix. I always thought the inputs in the "[]" had to be indexes. Can someone explain in detail how R is interpreting these statements and explain if the method avoiding the "which" is faster?

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Which method works best depends on the situation. For example, if you have a large data frame from which you select only a few rows, then using `which` is often faster. I assume this is because directly pulling those rows out of the parent object is more efficient than checking every row to see whether it meets the condition. –  Hong Ooi May 22 '13 at 7:19
This was the type of answer I was looking for! I was suspecting that it wasn't as simple as Tyler suggested based on my speed test. –  MHH May 22 '13 at 21:32