We investigate a mean-field model of interacting synapses on a directed
neural network. Our interest lies in the slow adaptive dynamics of synapses,
which are driven by the fast dynamics of the neurons they connect. Cooperation
is modelled from the usual Hebbian perspective, while competition is modelled
by an original polarity-driven rule. The emergence of a critical manifold
culminating in a tricritical point is crucially dependent on the presence of
synaptic competition. This leads to a universal 1/t power-law relaxation of
the mean synaptic strength along the critical manifold and an equally universal
1/t relaxation at the tricritical point, to be contrasted with the
exponential relaxation that is otherwise generic. In turn, this leads to the
natural emergence of long- and short-term memory from different parts of
parameter space in a synaptic network, which is the most novel and important
result of our present investigations.Comment: 12 pages, 8 figures. Phys. Rev. E (2014) to appea