According to the Google MapReduce paper
When a reduce worker has read all intermediate data, it sorts it by the intermediate keys
so that all occurrences of the same key are grouped together.
MongoDB document says
The map/reduce engine may invoke reduce functions iteratively; thus, these functions must be idempotent.
So, in case of the MapReduce as defined in the Google paper the reduce starts processing the key/value pairs once the data for a particular key has been transferred to the reducer. But, as Tomasz mentioned MongoDB seems to implement MapReduce in a slightly different way.
In the MapReduce proposed by Google either Map or Reduce tasks will be processing the KV pairs, but in the MongoDB implementation the Map and Reduce tasks will be simultaneously process the KV pairs. The MongoDB approach might not be efficient, since the nodes are not efficiently used and there is a chance that the Map and Reduce slots in the cluster are full and may not run new jobs.
The catch in Hadoop is although the reducers tasks don't process the KV pairs till the maps are done processing the data, the reducers tasks can be spawned before the mappers complete the processing. The parameter "mapreduce.job.reduce.slowstart.completedmaps" and is set to "0.05" and the description says "Fraction of the number of maps in the job which should be complete before reduces are scheduled for the job."
Here you would need to move all values (with the same key) to the same machine to be summed. Moving data to the function seems to be the opposite of what map reduce is supposed to do.
Also, the data locality is considered for the map tasks and not the reduce tasks. For the reduce tasks the data has to be moved from different mappers on different nodes to the reducers for aggregation.
Just my 2c.