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Introduction
/
Glossary
Glossary
Healthcare in 3D Terms and Phrases
Action (Machine Reinforcement Learning)
— The decision that could be made by the Clinician (
Agent
) at the
Inflection Point
.
Agent (Machine Reinforcement Learning)
— In HCn3D represent the clinician (and patient) taking
Action
at the
Inflection Point
.
Discount factor (Machine Reinforcement Learning)
— Provides a method for weighting or biasing the value of immediate vs. deferred
Rewards
. In HCn3D it is used to influence
Outcomes
for acute vs chronic care. For instance an acute condition would necessarily require a bias towards more immediate
Actions
.
Environment (Machine Reinforcement Learning)
— The world through which the
Agent
moves. In HCn3D it is the Healthcare Network and all data associated with the
Patient Record
, both intrinsic and extrinsic. Computationally it is where the Agent’s
Actions
are computed to formulate the feedback, the
Reward
and next iteration.
Policy (Machine Reinforcement Learning)
— Is the strategy employed by the
Agent
as it moves through the
Environment
to determine its next
Action
.
Q-value (Action value) (Machine Reinforcement Learning)
— Is the prediction of the
Q Function
which formulates the highest probable
Reward
from the sequences of
State
/
Action
pairs, essentially a consideration of all
Action Spectrums
from the current
cube
through the last cube achieving the desired
Trajectory
. It is HCn3D best “guess” for the desired
future outcomes
at the current
Inflection Point
. Together with
Policy
the application of
Counterfactual
analysis.
Reinforcement Learning
—
In HCn3D is an iterative form of “
Semi-Supervised Learning
” whereby feedback is
counterfactually
analyzed for the next iteration. The process evaluates its
actions
based on outcomes compared with known
patient journeys
. Its aim is to learn sequences of actions that will achieve the goal of predicting the patient’s possible futures (
Future Value Outcomes
)
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