[docs]classLogisticRegression(Model):"""`Logistic regression model <logistic-regression_>`_ for multi-class classification. Parameters ---------- loss_type The loss to be used for training and evaluation. .. warning:: The loss should be set to always return batch averages (as opposed to the batch sum), as our logging system expects it so. loss_arguments Arguments to the loss. optimizer_type The type of optimizer to use for training. optimizer_arguments Arguments to the optimizer after ``params``. num_classes Number of outputs (classes) for this model. input_size The number of inputs this classifer shall process. """def__init__(self,loss_type:type[torch.nn.Module]=torch.nn.BCEWithLogitsLoss,loss_arguments:dict[str,typing.Any]={},optimizer_type:type[torch.optim.Optimizer]=torch.optim.Adam,optimizer_arguments:dict[str,typing.Any]={"lr":1e-2},num_classes:int=1,input_size:int=14,):super().__init__(name="logistic-regression",loss_type=loss_type,loss_arguments=loss_arguments,optimizer_type=optimizer_type,optimizer_arguments=optimizer_arguments,scheduler_type=None,scheduler_arguments={},model_transforms=[],augmentation_transforms=[],num_classes=num_classes,)self.linear=torch.nn.Linear(input_size,self.num_classes)