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A next-level PVLV / boa step is to start adapting / learning key params such as:
Expected effort -- this can depend on the context and controls when to give up -- NE neuromodulator widely thought to be involved in regulating this (implicated in ADHD, etc). These are currently set to fixed values in PVLV.Effort.Max* params.
Expected reward magnitude -- scaling of DA responses as a function of overall expected rewards is well documented (e.g., 2 drops of juice in context of 1-2 range is max DA, but in context of 2-4 range is reduced). This is a separable factor from VSPatch prediction of timing and magnitude for an individual reward -- depends on overall context (Niv et al have studied). These are currently set in PVLV.USs.Gain* and VTA params.
Mechanically, just need to put params somewhere appropriate -- Globals if NData specific, or some layer's specific params, as in the case of VTALayer, and then critically save and load these adapting values with weights file.
The text was updated successfully, but these errors were encountered:
A next-level PVLV / boa step is to start adapting / learning key params such as:
Expected effort -- this can depend on the context and controls when to give up -- NE neuromodulator widely thought to be involved in regulating this (implicated in ADHD, etc). These are currently set to fixed values in
PVLV.Effort.Max*
params.Expected reward magnitude -- scaling of DA responses as a function of overall expected rewards is well documented (e.g., 2 drops of juice in context of 1-2 range is max DA, but in context of 2-4 range is reduced). This is a separable factor from VSPatch prediction of timing and magnitude for an individual reward -- depends on overall context (Niv et al have studied). These are currently set in
PVLV.USs.Gain*
andVTA
params.Mechanically, just need to put params somewhere appropriate -- Globals if NData specific, or some layer's specific params, as in the case of VTALayer, and then critically save and load these adapting values with weights file.
The text was updated successfully, but these errors were encountered: