| Literature DB >> 28879851 |
Onur Ozan Koyluoglu1, Yoni Pertzov2, Sanjay Manohar3, Masud Husain3, Ila R Fiete4.
Abstract
It is widely believed that persistent neural activity underlies short-term memory. Yet, as we show, the degradation of information stored directly in such networks behaves differently from human short-term memory performance. We build a more general framework where memory is viewed as a problem of passing information through noisy channels whose degradation characteristics resemble those of persistent activity networks. If the brain first encoded the information appropriately before passing the information into such networks, the information can be stored substantially more faithfully. Within this framework, we derive a fundamental lower-bound on recall precision, which declines with storage duration and number of stored items. We show that human performance, though inconsistent with models involving direct (uncoded) storage in persistent activity networks, can be well-fit by the theoretical bound. This finding is consistent with the view that if the brain stores information in patterns of persistent activity, it might use codes that minimize the effects of noise, motivating the search for such codes in the brain.Entities:
Keywords: computational biology; forgetting; human; information theory; neuroscience; short term memory; systems biology
Mesh:
Year: 2017 PMID: 28879851 PMCID: PMC5779315 DOI: 10.7554/eLife.22225
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140