Interface IContinualLearningStrategy<T>
- Namespace
- AiDotNet.Interfaces
- Assembly
- AiDotNet.dll
Defines a strategy for continual learning that helps neural networks learn multiple tasks sequentially without forgetting previously learned knowledge.
public interface IContinualLearningStrategy<T>
Type Parameters
TThe numeric type for calculations (e.g., double, float).
Remarks
For Beginners: Continual learning addresses a fundamental challenge in neural networks called "catastrophic forgetting." When a neural network learns a new task, it often forgets how to perform previous tasks. This happens because the network's weights are modified to optimize for the new task, overwriting the knowledge from earlier tasks.
Continual learning strategies help networks learn multiple tasks sequentially while preserving knowledge from previous tasks. Common approaches include:
- Elastic Weight Consolidation (EWC): Identifies important weights from previous tasks using Fisher Information and penalizes changes to those weights.
- Gradient Episodic Memory (GEM): Stores examples from previous tasks and ensures gradients don't interfere with performance on those examples.
- Learning without Forgetting (LwF): Uses knowledge distillation to preserve the network's predictions on new inputs for previous tasks.
Typical Usage Flow:
// Before learning task 1
strategy.BeforeTask(network, taskId: 0);
// ... train on task 1 ...
strategy.AfterTask(network, taskData, taskId: 0);
// Before learning task 2
strategy.BeforeTask(network, taskId: 1);
// ... train on task 2 with regularization ...
var loss = baseLoss + strategy.ComputeLoss(network);
strategy.AfterTask(network, taskData, taskId: 1);
Properties
Lambda
Gets the regularization strength parameter (lambda) for loss-based continual learning.
double Lambda { get; set; }
Property Value
Remarks
For Beginners: Lambda controls how strongly the strategy prevents forgetting. A higher lambda means the network is more conservative about changing weights important for previous tasks, but this might make it harder to learn new tasks effectively.
Typical values range from 100 to 10000, depending on the complexity of tasks and how important it is to preserve old knowledge versus learning new knowledge.
Methods
AfterTask(INeuralNetwork<T>, (Tensor<T> inputs, Tensor<T> targets), int)
Processes information after completing training on a task.
void AfterTask(INeuralNetwork<T> network, (Tensor<T> inputs, Tensor<T> targets) taskData, int taskId)
Parameters
networkINeuralNetwork<T>The neural network that was trained.
taskData(Tensor<T> grad1, Tensor<T> grad2)Data from the completed task for computing importance measures.
taskIdintThe identifier for the completed task.
Remarks
For Beginners: This method is called after you finish training on a task. It allows the strategy to compute and store information about what the network learned, which will be used to protect this knowledge when learning future tasks.
For example, in Elastic Weight Consolidation (EWC), this computes the Fisher Information Matrix to identify which weights are most important for the completed task.
BeforeTask(INeuralNetwork<T>, int)
Prepares the strategy before starting to learn a new task.
void BeforeTask(INeuralNetwork<T> network, int taskId)
Parameters
networkINeuralNetwork<T>The neural network that will be trained.
taskIdintThe identifier for the upcoming task (0-indexed).
Remarks
For Beginners: This method is called before you start training on a new task. It allows the strategy to capture the network's current state or prepare any necessary data structures for protecting knowledge from previous tasks.
For example, in Learning without Forgetting (LwF), this might store the network's predictions on the new task's inputs before training begins, so we can later encourage the network to maintain similar predictions.
ComputeLoss(INeuralNetwork<T>)
Computes the regularization loss to prevent forgetting previous tasks.
T ComputeLoss(INeuralNetwork<T> network)
Parameters
networkINeuralNetwork<T>The neural network being trained.
Returns
- T
The regularization loss value that should be added to the task loss.
Remarks
For Beginners: This method calculates an additional loss term that penalizes the network for deviating from its learned knowledge of previous tasks. You add this to your regular task loss during training:
var totalLoss = taskLoss + strategy.ComputeLoss(network);
For example, in EWC, this returns a penalty proportional to how much important weights have changed from their optimal values for previous tasks. Larger changes to important weights result in higher loss, discouraging the network from forgetting.
ModifyGradients(INeuralNetwork<T>, Vector<T>)
Modifies the gradient to prevent catastrophic forgetting.
Vector<T> ModifyGradients(INeuralNetwork<T> network, Vector<T> gradients)
Parameters
networkINeuralNetwork<T>The neural network being trained.
gradientsVector<T>The gradients from the current task loss.
Returns
- Vector<T>
Modified gradients that protect previous task knowledge.
Remarks
For Beginners: Some continual learning strategies work by modifying the gradients (the update directions for weights) rather than adding a loss term. This method takes the gradients computed from the current task and modifies them to avoid interfering with previously learned tasks.
For example, in Gradient Episodic Memory (GEM), if a gradient would hurt performance on stored examples from previous tasks, it's projected to the closest gradient that doesn't interfere with those examples.
If a strategy doesn't use gradient modification, this should return the gradients unchanged.
Reset()
Resets the strategy, clearing all stored task information.
void Reset()
Remarks
For Beginners: This method clears all the information the strategy has accumulated about previous tasks. After calling this, the network will be free to learn new tasks without any constraints from previously learned tasks.
Use this when you want to start fresh or when you're done with a sequence of tasks and want to begin a new independent sequence.