It is now well-established that long-term memory (LTM)
knowledge, such as semantic knowledge, supports the
temporary maintenance of verbal information in working
memory (WM). This is for instance characterized by the recall
advantage observed for semantically related (e.g. leaf - tree -
branch) over unrelated (e.g. mouse - wall - sky) lists of items
in immediate serial recall tasks. However, the exact
mechanisms underlying this semantic contribution remain
unknown. In this study, we demonstrate through a convergent
approach involving computational and behavioral methods that
semantic knowledge can be efficiently used to save attentional
WM resources, thereby enhancing the maintenance of
subsequent to-be-remembered items. These results have
critical theoretical implications, and support models
considering that WM relies on temporary activation within the
LTM system.