The performance of SQL/noSQL is not measured at conceptual levels. In fact, when the relational model (more correctly said than SQL) came by, it was demised as non-efficient, and then it took over the world. In computer science, what is assessed is the time complexity of specific algorithms (using specific structures).
In databases, of any type, multiple data structures with multiple operations (insert, delete, search) are used. Even the same operation for the same data structure might use different algorithms, thus provide different performance. Different RDBMSes might use different data structures/algorithms or variations.
The same is even more valid for noSQL databases, of which there are different types (http://en.wikipedia.org/wiki/NoSQL).
Therefore, I don't think it makes sense to compare performance at such high level. You need to look at concrete algorithms and choose depending on the needs of your problem.
Consider also that some people are successfully implementing noSQL in RDBMs, in the sense of schema-less models, with large amounts of data: http://backchannel.org/blog/friendfeed-schemaless-mysql
Finally, a perhaps more subjective opinion, in concrete terms I am only aware that performance makes a difference when you have to change the schema. When tables are big, most RDBMs struggle with a change. This is not to say there is something conceptually wrong with them or inferior to noSQL. It just was not a problem since designs used to be seen as stable.
RDBMSes are starting to adapt, see eg. dynamic columns in MariaDB: https://kb.askmonty.org/en/dynamic-columns/