This is a method for visualizing interactions in your dataset. More specifically, it lets you see how some set of variables are conditional on some other set of variables.
In the example given, you're asking to visualize how
long vary with
depth. Because you didn't specify
number, and the formula indicates you're interested in only one conditional variable, the function assumes you want
number=6 depth cuts (passed to
co.intervals, which tries to make the number of data points approximately equal within each interval) and is simply maximizing the data-to-ink ratio by stacking individual plot frames; the value of depth increases to the right, starting with the lowest row and moving up (hence the top-right frame represents the largest depth interval). You can set
columns to change this behavior, e.g.:
coplot(lat ~ long | depth, data = quakes, columns=6)
but I think the power of this tool becomes more apparent when you inspect two or more conditioning variables. For example:
coplot(lat ~ long | depth * mag, data = quakes, number=c(3,4))
gives a rich view of how earthquakes vary in space, and demonstrates that there is some interaction with depth (the pattern changes from left to right), and little-to-no interaction with magnitude (the pattern does not change from top to bottom).
Finally, I would highly recommend reading Cleveland's Visualizing Data -- a classic text.