In the Amortized analysis.
Average case running time: average over all possible inputs for one algorithm (operation). If using probability, called expected running time
What is the different between expected time and Amortized time?
We make some assumptions and, based on these assumptions, we make statements about the running time.
Hash tables is one such example. We assume that the data is well-distributed, and claim that the running time of operations are O(1), whereas the worst-case running time for an operation is actually O(n).
Even though one operation may take longer than some given time, the time across multiple operations will balance out to give the mentioned running time.
(Well-implemented) self-resizing arrays is one such example. When you insert, it takes O(n) to resize the array, but, across many inserts, each will take O(1) on average.