【问题标题】:k-fold cross validation using DataLoaders in PyTorch在 PyTorch 中使用 DataLoaders 进行 k 折交叉验证
【发布时间】:2020-07-08 01:20:57
【问题描述】:

我已将我的训练数据集拆分为 80% 的训练数据和 20% 的验证数据,并创建了如下所示的 DataLoaders。但是我不想限制我的模型的训练。所以我想把我的数据分成 K(也许 5)个折叠并执行交叉验证。但是,我不知道如何在拆分数据集后将它们组合到我的数据加载器中。

train_size = int(0.8 * len(full_dataset))
validation_size = len(full_dataset) - train_size
train_dataset, validation_dataset = random_split(full_dataset, [train_size, validation_size])

full_loader = DataLoader(full_dataset, batch_size=4,sampler = sampler_(full_dataset), pin_memory=True) 
train_loader = DataLoader(train_dataset, batch_size=4, sampler = sampler_(train_dataset))
val_loader = DataLoader(validation_dataset, batch_size=1, sampler = sampler_(validation_dataset))

提前谢谢你!

【问题讨论】:

标签: machine-learning deep-learning computer-vision pytorch


【解决方案1】:

您可以通过使用 sklearn 和 dataloader 中的 KFOLD 来实现这一点。

import torch
from torch._six import int_classes as _int_classes
from torch import Tensor

from typing import Iterator, Optional, Sequence, List, TypeVar, Generic, Sized

T_co = TypeVar('T_co', covariant=True)

class Sampler(Generic[T_co]):
    r"""Base class for all Samplers.

    Every Sampler subclass has to provide an :meth:`__iter__` method, providing a
    way to iterate over indices of dataset elements, and a :meth:`__len__` method
    that returns the length of the returned iterators.

    .. note:: The :meth:`__len__` method isn't strictly required by
              :class:`~torch.utils.data.DataLoader`, but is expected in any
              calculation involving the length of a :class:`~torch.utils.data.DataLoader`.
    """

    def __init__(self, data_source: Optional[Sized]) -> None:
        pass

    def __iter__(self) -> Iterator[T_co]:
        raise NotImplementedError
        
class SubsetRandomSampler(Sampler[int]):
    r"""Samples elements randomly from a given list of indices, without replacement.

    Args:
        indices (sequence): a sequence of indices
        generator (Generator): Generator used in sampling.
    """
    indices: Sequence[int]

    def __init__(self, indices: Sequence[int], generator=None) -> None:
        self.indices = indices
        self.generator = generator

    def __iter__(self):
        return (self.indices[i] for i in torch.randperm(len(self.indices), generator=self.generator))

    def __len__(self):
        return len(self.indices) 


train_dataset = CustomDataset(data_dir=train_path, mode='train') )
val_dataset = CustomDataset(data_dir=train_path, mode='val') )

    fold = KFold(5, shuffle=True, random_state=random_seed)
    for fold,(tr_idx, val_idx) in enumerate(fold.split(dataset)):
        # initialize the model
        model = smp.FPN(encoder_name='efficientnet-b4', classes=12 , encoder_weights=None, activation='softmax2d')
    
 
     
        loss = BCEDiceLoss()
        optimizer = torch.optim.AdamW([
            {'params': model.decoder.parameters(), 'lr': 1e-07/2}, 
            {'params': model.encoder.parameters(), 'lr': 5e-07},  
        ])
        scheduler = ReduceLROnPlateau(optimizer, factor=0.15, patience=2)
    
  
    
        print('#'*35); print('############ FOLD ',fold+1,' #############'); print('#'*35);
        train_loader = torch.utils.data.DataLoader(dataset=train_dataset, 
                                               batch_size=batch_size,
                                               num_workers=1,
                                               sampler = SubsetRandomSampler(tr_idx)
                                            )
        val_loader = torch.utils.data.DataLoader(dataset=val_dataset, 
                                               batch_size=batch_size,
                                               num_workers=1,
                                               sampler = SubsetRandomSampler(val_idx)
                                            )

所以当你编写DataLoader部分时,使用subsetRandomSampler,这样,dataloader中的采样器总是会随机采样kfold函数生成的train/valid索引。

【讨论】:

    【解决方案2】:

    我刚刚编写了一个使用数据加载器和数据集的交叉验证函数。 这是我的代码,希望对您有所帮助。

    # define a cross validation function
    def crossvalid(model=None,criterion=None,optimizer=None,dataset=None,k_fold=5):
        
        train_score = pd.Series()
        val_score = pd.Series()
        
        total_size = len(dataset)
        fraction = 1/k_fold
        seg = int(total_size * fraction)
        # tr:train,val:valid; r:right,l:left;  eg: trrr: right index of right side train subset 
        # index: [trll,trlr],[vall,valr],[trrl,trrr]
        for i in range(k_fold):
            trll = 0
            trlr = i * seg
            vall = trlr
            valr = i * seg + seg
            trrl = valr
            trrr = total_size
            # msg
    #         print("train indices: [%d,%d),[%d,%d), test indices: [%d,%d)" 
    #               % (trll,trlr,trrl,trrr,vall,valr))
            
            train_left_indices = list(range(trll,trlr))
            train_right_indices = list(range(trrl,trrr))
            
            train_indices = train_left_indices + train_right_indices
            val_indices = list(range(vall,valr))
            
            train_set = torch.utils.data.dataset.Subset(dataset,train_indices)
            val_set = torch.utils.data.dataset.Subset(dataset,val_indices)
            
    #         print(len(train_set),len(val_set))
    #         print()
            
            train_loader = torch.utils.data.DataLoader(train_set, batch_size=50,
                                              shuffle=True, num_workers=4)
            val_loader = torch.utils.data.DataLoader(val_set, batch_size=50,
                                              shuffle=True, num_workers=4)
            train_acc = train(res_model,criterion,optimizer,train_loader,epoch=1)
            train_score.at[i] = train_acc
            val_acc = valid(res_model,criterion,optimizer,val_loader)
            val_score.at[i] = val_acc
        
        return train_score,val_score
            
    
    train_score,val_score = crossvalid(res_model,criterion,optimizer,dataset=tiny_dataset)
    
    

    为了直观地了解我们所做的事情的正确性,请参见下面的输出:

    train indices: [0,0),[3600,18000), test indices: [0,3600)
    14400 3600
    
    train indices: [0,3600),[7200,18000), test indices: [3600,7200)
    14400 3600
    
    train indices: [0,7200),[10800,18000), test indices: [7200,10800)
    14400 3600
    
    train indices: [0,10800),[14400,18000), test indices: [10800,14400)
    14400 3600
    
    train indices: [0,14400),[18000,18000), test indices: [14400,18000)
    14400 3600
    

    【讨论】:

    • 很好的例子,谢谢你。我认为将数据集拆分和训练分开会很棒。例如:metrics = k_fold(full_dataset, train_fn, **other_options),其中k_fold 函数将负责数据集拆分并将train_loaderval_loader 传递给train_fn 并将其输出收集到指标中。 train_fn 将负责每个 K 的实际训练和返回指标。
    【解决方案3】:

    看看Cross validation for MNIST dataset with pytorch and sklearn。提问者实施了 kFold 交叉验证。特别看一下他自己的答案(19 年 11 月 23 日 10:34 回答)。他不依赖 random_split() 而是依赖 sklearn.model_selection.KFold 并从那里构造一个 DataSet 并从那里构造一个 Dataloader。

    【讨论】:

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