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Abstract:
Learning structure is a key-element for achieving flexible
and adaptive control in real-world environments. However,
what looks easy and natural in human motor control, remains
one of the main challenges in today's robotics. Here we in-
vestigate in a quantitative manner how humans select between
several learned structures when faced with novel adaptation
problems.
One very successful framework for modeling learning of
statistical structures are hierarchical Bayesian models, because of their capability to capture statistical relationships on different levels of abstraction. Another important advantage is the automatic trade-off between prediction error and model complexity that is embodied by Bayesian inference. This so called Bayesian Occam's Razor
results from the marginalization over the model parameters when computing a model's evidence and has the effect of penalizing unnecessarily complex models — see Figure 1.
Bayesian Occam's razor. Evidence P (DjM) for a simple model
M1(blue, solid line) and a complex model M2(red, dashed line). Because both models have to spread unit probability mass over all compatible observations, the simpler model
M1 has a higher evidence in the overlapping region D and is thus the more probable model.
A standard paradigm to illustrate the trade-off between
prediction error and model complexity is regression, where
a curve has to be fitted to noisy observations with the aim of recovering an underlying functional relationship that defines a structure.
Here, we tested human behavior in a sensorimotor regres-
sion task, where participants had to draw a curve through noisy observations of an underlying trajectory generated by one of two possible Gaussian process (GP) models with different length-scales, a simple model with long length scale generating mostly smooth trajectories and a complex model with short length scale generating mostly wiggly trajectories. Participants were trained on both models, in order to be able to learn the two different structures. They then observed ambiguous stimuli that could be explained by both models and had to draw regression trajectories, which implied reporting their belief
about the generating model.
In ambiguous trials where both models explained the ob-
servations equally well, we found that participants strongly
preferred the simpler model. In all trials, Bayesian model
selection provided a good explanation of subjects' choice and drawing behavior.
The approach presented in this work might also lend itself
for application in robotic tasks, where sensory data has to be disambiguated or a goodness-of-fit versus complexity trade-off has to be performed.