I would not worry about the connection overhead of mysql queries too much, especially if you are not closing the connection between every query. Consider that if your query creates a temporary table, you've already spent more time in the query than the overhead of the query took.
I love doing a complex SQL query, personally, but I have found that the size of the tables, mysql query cache and query performance of queries that need to do range checking (even against an index) all make a difference.
I suggest this:
1) Establish the simple, correct baseline. I suspect this is the zillion-query approach. This is not wrong, and very likely helfully correct. Run it a few times and watch your query cache and application performance. The ability to keep your app maintainable is very important, especially if you work with other code maintainers. Also, if you're querying really large tables, small queries will maintain scalability.
2) Code the complex query. Compare the results for accuracy, and then the time. Then use EXPECT on the query to see what the rows scanned are. I have often found that if I have a JOIN, or a WHERE x != y, or a condition that creates a temporary table, the query performance could get pretty bad, especially if I'm in a table that's always getting updated. However, I've also found that a complex query might not be correct, and also that a complex query can more easily break as an application grows. Complex queries typically scan larger sets of rows, often creating temporary tables and invoke
using where scans. The larger the table, the more expensive these get. Also, you might have team considerations where complex queries don't suit your team's strengths.
3) Share the results with your team.
Complex queries are less likely to hit the mysql query cache, and if they are large enough, don't cache them. (You want to save the mysql query cache for frequently hit queries.) Also, query where predicates that have to scan the index will not do as well. (x != y, x > y, x < y). Queries like
SELECT foo, bar FROM users WHERE foo != 'g' and mumble < '360' end up doing scans. (The cost of query overhead could be negligible in that case.)
Small queries can often complete without creating temporary tables just by getting all values from the index, so long as the fields you're selecting and predicating on are indexed. So the query performance of
SELECT foo, bar FROM users WHERE id = x is really great (esp if columns
bar are indexed like, aka
alter table users add index ix_a ( foo, bar );.)
Other good ways to increase performance in your application would be to cache those small query results in the application (if appropriate), or doing batch jobs of a materialized view query. Also, consider memcached or some features found in XCache.