Persistence of motor
memories reflects statistics of the learning event
Huang and Shadmehr (2009) Journal
of Neurophysiology.
Abstract Learning to control a new tool (i.e., a
novel environment) produces an internal model, i.e., a motor memory that allows
the brain to implicitly predict the behavior of the tool. Data from a wide array of experiments
suggest that formation of motor memory is not a single process, but one that is
due to multiple adaptive processes with different time constants. Here, we
asked whether these time constants are invariant, or are they influenced by the
statistics of the learning event.
To measure the time-constants, we controlled the statistics of the
learning event in a reaching task and then assayed the decay rates of motor
output in a set of trials in which errors were effectively removed. We found that prior experience with a
rapid change in the environment increased the decay rate of memories acquired
later in response to a gradual change in the same environment. Prior experience in an environment that
changed gradually reduced the decay rates of memories acquired later in
response to a rapid change in that same environment. Indeed, we found that by manipulating
the prior statistics of the learning experience, we could readily alter the
decay rates of a given motor memory.
This suggests that timescales of processes that support motor memory are
not constant. Rather, decay of
motor memory is the brain’s implicit estimate of how likely it is that
the environment will change with time.
During motor learning, prior statistics that suggest changes are likely
to be permanent result in slowly decaying memories, whereas prior statistics
that suggest changes are transient result in rapidly decaying memories.