小编给大家分享一下pytorch如何处理类别不平衡的问题,相信大部分人都还不怎么了解,因此分享这篇文章给大家参考一下,希望大家阅读完这篇文章后大有收获,下面让我们一起去了解一下吧!
下面的代码展示了如何使用WeightedRandomSampler来完成抽样。
numDataPoints = 1000
data_dim = 5
bs = 100
# Create dummy data with class imbalance 9 to 1
data = torch.FloatTensor(numDataPoints, data_dim)
target = np.hstack((np.zeros(int(numDataPoints * 0.9), dtype=np.int32),
np.ones(int(numDataPoints * 0.1), dtype=np.int32)))
print 'target train 0/1: {}/{}'.format(
len(np.where(target == 0)[0]), len(np.where(target == 1)[0]))
class_sample_count = np.array(
[len(np.where(target == t)[0]) for t in np.unique(target)])
weight = 1. / class_sample_count
samples_weight = np.array([weight[t] for t in target])
samples_weight = torch.from_numpy(samples_weight)
samples_weight = samples_weight.double()
sampler = WeightedRandomSampler(samples_weight, len(samples_weight))
target = torch.from_numpy(target).long()
train_dataset = torch.utils.data.TensorDataset(data, target)
train_loader = DataLoader(
train_dataset, batch_size=bs, num_workers=1, sampler=sampler)
for i, (data, target) in enumerate(train_loader):
print "batch index {}, 0/1: {}/{}".format(
i,
len(np.where(target.numpy() == 0)[0]),
len(np.where(target.numpy() == 1)[0]))
核心部分为实际使用时替换下变量把sampler传递给DataLoader即可,注意使用了sampler就不能使用shuffle,另外需要指定采样点个数:
class_sample_count = np.array(
[len(np.where(target == t)[0]) for t in np.unique(target)])
weight = 1. / class_sample_count
samples_weight = np.array([weight[t] for t in target])
samples_weight = torch.from_numpy(samples_weight)
samples_weight = samples_weight.double()
sampler = WeightedRandomSampler(samples_weight, len(samples_weight))
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