You are right that looking something up in a shared cache (like memcached) is slower than looking it up in a local cache (which is what i think you mean by "replication").
However, the advantage of a shared cache is that it is shared, which means each user of the cache has access to more cache than if the memory was used for a local cache.
Consider an application with a 50 GB database, with ten app servers, each dedicating 1 GB of memory to caching. If you used local caches, then each machine would have 1 GB of cache, equal to 2% of the total database size. If you used a shared cache, then you have 10 GB of cache, equal to 20% of the total database size. Cache hits would be somewhat faster with the local caches, but the cache hit rate would be much higher with the shared cache. Since cache misses are astronomically more expensive than either kind of cache hit, slightly slower hits are a price worth paying to reduce the number of misses.
Now, the exact tradeoff does depend on the exact ratio of the costs of a local hit, a shared hit, and a miss, and also on the distribution of accesses over the database. For example, if all the accesses were to a set of 'hot' records that were under 1 GB in size, then the local caches would give a 100% hit rate, and would be just as good as a shared cache. Less extreme distributions could still tilt the balance.
In practice, the optimum configuration will usually (IMHO!) be to have a small but very fast local cache for the hottest data, then a larger and slower cache for the long tail. You will probably recognise that as the shape of other cache hierarchies: consider the way that processors have small, fast L1 caches for each core, then slower L2/L3 caches shared between all the cores on a single die, then perhaps yet slower off-chip caches shared by all the dies in a system (do any current processors actually use off-chip caches?).