# Using if command with egen in Stata

I'm using Stata, and I'm trying to compute the average price of firms' rivals in a market. I have data that looks like:

``````Market    Firm   Price
----------------------
1         1      100
1         2      150
1         3      125
2         1      50
2         2      100
2         3      75
3         1      100
3         2      200
3         3      200
``````

And I'm trying to compute the average price of the firms rivals, so I want to generate a new field that is the average values of the other firms in a market. It would look like:

``````Market    Firm   Price    AvRivalPrice
------------------------------------
1         1      100      137.2
1         2      150      112.5
1         3      125      125
2         1      50       87.5
2         2      100      62.5
2         3      75       75
3         1      100      200
3         2      200      150
3         3      200      150
``````

To do the average by group, I could use the egen command:

``````egen AvPrice = mean(price), by(Market)
``````

But that wouldn't exclude the firm's own price in the average, and to the best of my knowledge, using the if command would only change the observations it operated on, not the groups it averaged over. Is there a simple way to do this, or do I need to create loops and generate each average manually?

-
Can u give a small example of ur calculation... It wud make much clear –  SOaddict Mar 6 '12 at 4:19
I did (the data table is the example of what I). –  prototoast Mar 6 '12 at 4:31

This is a way that avoids explicit loops, though it takes several lines of code:

``````by Market: egen Total = total(Price)
replace Total = Total - Price
by Market: gen AvRivalPrice = Total / (_N-1)
drop Total
``````
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This will produce an error message if the data are not sorted by `Market`. It has to be `bysort`, at least in the first case. –  StasK Mar 7 '12 at 2:48

Here's a shorter solution with fewer lines that kind of combines your original thought and @onestop's solution:

``````      egen AvPrice = mean(price), by(Market)
bysort Market: replace AvPrice = (AvPrice*_N - price)/(_N-1)
``````

This is all good for a census of firms. If you have a sample of the firms, and you need to apply the weights, I am not sure what a good solution would be. We can brainstorm it if needed.

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Thanks, I was able to handle the modifications to convert it for a sample (took a few extra lines), but this got me thinking in the right direction. –  prototoast Mar 7 '12 at 16:51

This is an old thread still of interest, so materials and techniques overlooked first time round still apply.

The more general technique is to work with totals. At its simplest, total of others = total of all - this value. In a `egen` framework that is going to look like

``````egen total = total(price), by(market)
egen n = total(!missing(price)), by(market)
gen avprice = (total - cond(missing(price), 0, price)) / cond(missing(price), n, n - 1)
``````

The `total()` function of `egen` ignores missing values in its argument. If there are missing values, we don't want to include them in the count, but we can use `!missing()` which yields 1 if not missing and 0 if missing. `egen`'s `count()` is another way to do this.

Code given earlier gives the wrong answer if missings are present as they are included in the count `_N`.

Even if a value is missing, the average of the other values still makes sense.

If no value is missing, the last line above simplifies to

``````gen avprice = (total - price) / (n - 1)
``````

So far, this possibly looks like no more than a small variant on previous code, but it does extend easily to using weights. Presumably we want a weighted average of others' prices given some `weight`. We can exploit the fact that `total()` works on expressions, which can be more complicated than just variable names. Indeed the code above did that already, but it is often overlooked.

``````egen wttotal = total(weight * price), by(market)
egen sumwt = total(weight), by(market)
gen avprice = (wttotal - price * weight) / (sumwt - weight)
``````

As before, if `price` or `weight` is ever missing, you need more complicated code, or just to ensure that you exclude such observations from the calculations.

(If the numbers get big, work with `double`s.)