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DLinear is a simple and fast yet accurate time series forecasting model for long-horizon forecasting. The architecture has the following distinctive features: - Uses Autoformmer’s trend and seasonality decomposition. - Simple linear layers for trend and seasonality component. References Figure 1. DLinear Architecture. Figure 1. DLinear Architecture.

1. DLinear

DLinear

Bases: BaseModel DLinear Parameters:

DLinear.fit

Fit. The fit method, optimizes the neural network’s weights using the initialization parameters (learning_rate, windows_batch_size, …) and the loss function as defined during the initialization. Within fit we use a PyTorch Lightning Trainer that inherits the initialization’s self.trainer_kwargs, to customize its inputs, see PL’s trainer arguments. The method is designed to be compatible with SKLearn-like classes and in particular to be compatible with the StatsForecast library. By default the model is not saving training checkpoints to protect disk memory, to get them change enable_checkpointing=True in __init__. Parameters: Returns:

DLinear.predict

Predict. Neural network prediction with PL’s Trainer execution of predict_step. Parameters: Returns:

Usage Example

2. Auxilary Functions

SeriesDecomp

Bases: Module Series decomposition block

MovingAvg

Bases: Module Moving average block to highlight the trend of time series