rlACAgentOptions
Options for AC agent
Description
Use an rlACAgentOptions
object to specify options for creating
actor-critic (AC) agents. To create an actor-critic agent, use rlACAgent
For more information see Actor-Critic (AC) Agent.
For more information on the different types of reinforcement learning agents, see Reinforcement Learning Agents.
Creation
Description
creates a default
option set for an AC agent. You can modify the object properties using dot
notation.opt
= rlACAgentOptions
creates the options set opt
= rlACAgentOptions(Name=Value
)opt
and sets its properties using one
or more name-value arguments. For example,
rlDQNAgentOptions(DiscountFactor=0.95)
creates an options set with a
discount factor of 0.95
. You can specify multiple name-value
arguments.
Properties
SampleTime
— Sample time of agent
1
(default) | positive scalar | -1
Sample time of the agent, specified as a positive scalar or as -1
.
Within a MATLAB® environment, the agent is executed every time the environment advances,
so, SampleTime
does not affect the timing of the agent
execution.
Within a Simulink® environment, the RL Agent block
that uses the agent object executes every SampleTime
seconds of
simulation time. If SampleTime
is -1
the block
inherits the sample time from its input signals. Set SampleTime
to
-1
when the block is a child of an event-driven subsystem.
Note
Set SampleTime
to a positive scalar when the block is not
a child of an event-driven subsystem. Doing so ensures that the block executes
at appropriate intervals when input signal sample times change due to model
variations.
Regardless of the type of environment, the time interval between consecutive elements
in the output experience returned by sim
or
train
is
always SampleTime
.
If SampleTime
is -1
, for Simulink environments, the time interval between consecutive elements in the
returned output experience reflects the timing of the events that trigger the RL Agent block
execution, while for MATLAB environments, this time interval is considered equal to
1
.
This property is shared between the agent and the agent options object within the agent. Therefore, if you change it in the agent options object, it gets changed in the agent, and vice versa.
Example: SampleTime=-1
DiscountFactor
— Discount factor
0.99
(default) | positive scalar less than or equal to 1
Discount factor applied to future rewards during training, specified as a positive scalar less than or equal to 1.
Example: DiscountFactor=0.9
EntropyLossWeight
— Entropy loss weight
0
(default) | scalar value between 0
and 1
Entropy loss weight, specified as a scalar value between 0
and
1
. A higher entropy loss weight value promotes agent exploration by
applying a penalty for being too certain about which action to take. Doing so can help the
agent move out of local optima.
When gradients are computed during training, an additional gradient component is computed for minimizing this loss function.
Example: EntropyLossWeight=0.01
ActorOptimizerOptions
— Actor optimizer options
rlOptimizerOptions
object
Actor optimizer options, specified as an rlOptimizerOptions
object. It allows you to specify training parameters of
the actor approximator such as learning rate, gradient threshold, as well as the
optimizer algorithm and its parameters. For more information, see rlOptimizerOptions
and rlOptimizer
.
Example: ActorOptimizerOptions =
rlOptimizerOptions(LearnRate=2e-3)
CriticOptimizerOptions
— Critic optimizer options
rlOptimizerOptions
object
Critic optimizer options, specified as an rlOptimizerOptions
object. It allows you to specify training parameters of
the critic approximator such as learning rate, gradient threshold, as well as the
optimizer algorithm and its parameters. For more information, see rlOptimizerOptions
and rlOptimizer
.
Example: CriticOptimizerOptions =
rlOptimizerOptions(LearnRate=5e-3)
NumStepsToLookAhead
— Number of steps ahead
32
(default) | positive integer
Number of steps the agent interacts with the environment before learning from its
experience, specified as a positive integer. When the agent uses a recurrent neural
network, NumStepsToLookAhead
is treated as the training trajectory
length. When the agent is trained in parallel, NumStepsToLookAhead
is ignored, and the whole episode is used to compute the gradients.
Example: NumStepsToLookAhead=64
InfoToSave
— Options to save additional agent data
structure (default)
Options to save additional agent data, specified as a structure containing a
field named Optimizer
.
You can save an agent object in one of the following ways:
Using the
save
commandSpecifying
saveAgentCriteria
andsaveAgentValue
in anrlTrainingOptions
objectSpecifying an appropriate logging function within a
FileLogger
object
When you save an agent using any method, the fields in the
InfoToSave
structure determine whether the
corresponding data is saved with the agent. For example, if you set the
Optimizer
field to true
,
then the actor and critic optimizers are saved along with the agent.
You can modify the InfoToSave
property only after the
agent options object is created.
Example: options.InfoToSave.Optimizer=true
Optimizer
— Option to save actor and critic optimizers
false
(default) | true
Option to save the actor and critic optimizers,
specified as a logical value. If you set the
Optimizer
field to
false
, then the actor and
critic optimizers (which are hidden properties of
the agent and can contain internal states) are not
saved along with the agent, therefore saving disk
space and memory. However, when the optimizers
contain internal states, the state of the saved
agent is not identical to the state of the original
agent.
Example: true
Object Functions
rlACAgent | Actor-critic (AC) reinforcement learning agent |
Examples
Create AC Agent Options Object
Create an AC agent options object, specifying the discount factor.
opt = rlACAgentOptions(DiscountFactor=0.95)
opt = rlACAgentOptions with properties: SampleTime: 1 DiscountFactor: 0.9500 EntropyLossWeight: 0 ActorOptimizerOptions: [1x1 rl.option.rlOptimizerOptions] CriticOptimizerOptions: [1x1 rl.option.rlOptimizerOptions] NumStepsToLookAhead: 32 InfoToSave: [1x1 struct]
You can modify options using dot notation. For example, set the agent sample time to 0.5
.
opt.SampleTime = 0.5;
Configure Options for A3C Training
To train an agent using the asynchronous advantage actor-critic (A3C) method, you must set the agent and parallel training options appropriately.
When creating the AC agent, set the NumStepsToLookAhead
value to be greater than 1
. Common values are 64
and 128
.
agentOpts = rlACAgentOptions(NumStepsToLookAhead=64);
Use agentOpts
when creating your agent. Alternatively, create your agent first and then modify its options, including the actor and critic options later using dot notation.
Configure the training algorithm to use asynchronous parallel training.
trainOpts = rlTrainingOptions(UseParallel=true);
trainOpts.ParallelizationOptions.Mode = "async";
You can now use trainOpts
to train your AC agent using the A3C method.
For an example on asynchronous advantage actor-critic agent training, see Train AC Agent to Balance Discrete Cart-Pole System Using Parallel Computing.
Version History
Introduced in R2019aR2022a: Simulation and deployment: UseDeterministicExploitation
will be removed
The property UseDeterministicExploitation
of the
rlACAgentOptions
object will be removed in a future release. Use the
UseExplorationPolicy
property of rlACAgent
instead.
Previously, you set UseDeterministicExploitation
as follows.
Force the agent to always select the action with maximum likelihood, thereby using a greedy deterministic policy for simulation and deployment.
agent.AgentOptions.UseDeterministicExploitation = true;
Allow the agent to select its action by sampling its probability distribution for simulation and policy deployment, thereby using a stochastic policy that explores the observation space.
agent.AgentOptions.UseDeterministicExploitation = false;
Starting in R2022a, set UseExplorationPolicy
as follows.
Force the agent to always select the action with maximum likelihood, thereby using a greedy deterministic policy for simulation and deployment.
agent.UseExplorationPolicy = false;
Allow the agent to select its action by sampling its probability distribution for simulation and policy deployment, thereby using a stochastic policy that explores the observation space.
agent.UseExplorationPolicy = true;
Similarly to UseDeterministicExploitation
,
UseExplorationPolicy
affects only simulation and deployment; it does
not affect training.
R2020b: Default value for NumStepsToLookAhead
changed to 32
A value of 32 for this property should work better than 1 for most environments. If you
nave MATLAB R2020b or a later version and you want
to reproduce how rlACAgent
behaved on
versions prior to R2020b, set this value to 1.
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