# Co-Teaching

## Contents

# Introduction

## Title of Paper

Co-teaching: Robust Training Deep Neural Networks with Extremely Noisy Labels

## Contributions

The paper proposes a novel approach to training deep neural networks on data with noisy labels. The proposed architecture, named ‘co-teaching’, maintains two networks simultaneously. The experiments are conducted on noisy versions of MNIST, CIFAR-10 and CIFAR-100 datasets. Empirical results demonstrate that, under extremely noisy circumstances (i.e., 45% of noisy labels), the robustness of deep learning models trained by the Co-teaching approach is much superior to state-of-the-art baselines.

## Terminology

Ground-Truth Labels: The proper objective labels (i.e. the real, or ‘true’, labels) of the data.

Noisy Labels: Labels that are corrupted (either manually or through the data collection process) from ground-truth labels.

# Intuition

Similar to Decoupling, the Co-teaching architecture also maintains two networks with different learning abilities simultaneously. The reason why Co-teaching is more robust can be explained as follows. Usually while learning on a batch of data only the error from the network itself is transferred back to facilitate learning. But in the case of Co-Teaching the two networks that are used are able to filter the different type of errors which flows to themselves as well as the other network. Therefore the models learn mutually from themselves as well as from the partner network.

# Motivation

The paper draws motivation from two key facts:

• That many data collection processes yield noisy labels. • That deep neural networks have a high capacity to overfit to noisy labels.

Because of these facts, it is challenging to train deep networks to be robust with noisy labels.

# Related Works

Some approaches use statistical learning methods for the problem of learning from extremely noisy labels. These approaches can be divided into 3 strands: surrogate loss, noise estimation, and probabilistic modeling.

In the surrogate loss category, one work proposes an unbiased estimator to provide the noise corrected loss approach. Another work presented a robust non-convex loss, which is the special case in a family of robust losses. In the noise rate estimation category, some authors propose a class-probability estimator using order statistics on the range of scores. Another work presented the same estimator using the slope of ROC curve. In the probabilistic modeling category, there is a two coin model proposed to handle noise labels from multiple annotators.

In the Deep learning based approaches we have works suggesting a unified framework to distill the knowledge from clean labels and knowledge graph. Another work trained a label cleaning network by a small set of clean labels and used it to reduce the noise in large-scale noisy labels. There is also a proposed joint optimization framework to learn parameters and estimate true labels simultaneously. Another work leverages an additional validation set to adaptively assign weights to training examples in every iteration. One particular paper ads a crowd layer after the output layer for noisy labels from multiple annotators.

Learning to teach methods is another approach to this problem. The methods are made up by the teacher and student networks. The teacher network selects more informative instances for better training of student networks.

# Summary of Experiment

## Proposed Method

The proposed co-teaching method maintains two networks simultaneously, and samples instances with small loss at each mini batch. The sample of small-loss instances is then taught to the peer network.

The co-teaching method relies on research that suggests deep networks learn clean and easy patterns in initial epochs, but are susceptible to overfitting noisy labels as the number of epochs grows. To counteract this, the co-teaching method reduces the mini-batch size by gradually increasing a drop rate (i.e., noisy instances with higher loss will be dropped at an increasing rate). The mini-batches are swapped between peer networks due to the underlying intuition that different classifiers will generate different decision boundaries. Swapping the mini-batches constitutes a sort of ‘peer-reviewing’ that promotes noise reduction since the error from a network is not directly transferred back to itself.

## Dataset Corruption

To simulate learning with noisy labels, the datasets (which are clean by default) are manually corrupted by applying a noise transformation matrix. Two methods are used for generating such noise transformation matrices: pair flipping and symmetry.

Three noise conditions are simulated for comparing co-teaching with baseline methods.

Method | Noise Rate | Rationale |

Pair Flipping | 45% | Almost half of the instances have noisy labels. Simulates erroneous labels which are similar to true labels. |

Symmetry | 50% | Half of the instances have noisy labels. Further rationale can be found at [1]. |

Symmetry | 20% | Verify the robustness of co-teaching in a low-level noise scenario. |

## Baseline Comparisons

The co-teaching method is compared with several baseline approaches, which have varying:

• proficiency in dealing with a large number of classes, • ability to resist heavy noise, • need to combine with specific network architectures, and • need to be pretrained.

### Bootstrap

A method that deems a weighted combination of predicted and original labels as correct, and then solves kernels by backpropagation [2].

### S-Model

Using an additional softmax layer to model the noise transition matrix [3].

### F-Correction

Correcting the prediction by using a noise transition matrix which is estimated by a standard network [4].

### Decoupling

Two separate classifiers are used in this technique. Parameters are updated using only the samples that are classified differently between the two models [5].

### MentorNet

A teacher network is trained to identify and discard noisy instances in order to train the student network on cleaner instances [6].

## Implementation Details

Two CNN models using the same architecture (shown below) are used as the peer networks for the co-teaching method. They are initialized with different parameters in order to be significantly different from one another (different initial parameters can lead to different local minima). An Adam optimizer (momentum=0.9), a learning rate of 0.001, a batch size of 128, and 200 epochs are used for each dataset.

# Results and Discussion

The co-teaching algorithm is compared to the baseline approaches under the noise conditions previously described. The results are as follows.

## MNIST

## CIFAR10

## CIFAR100

# Conclusions

The main goal of the paper is to introduce “Co-teaching” learning paradigm that uses two deep neural networks learning at the same time to avoid noisy labels. Experiments are performed on several datasets such as MNIST, CIFAR-10, and CIFAR-100. The performance varied depends on the noise level in different scenarios. In the simulated ‘extreme noise’ scenarios, (pair-45% and symmetry-50%), the co-teaching methods outperforms baseline methods in terms of accuracy. This suggests that the co-teaching method is superior to the baseline methods in scenarios of extreme noise. The co-teaching method also performs competitively in the low-noise scenario (symmetry-20%).

# Critique

## Lack of Task Diversity

The datasets used in this experiment are all image classification tasks – these results may not generalize to other deep learning applications, such as classifications from data with lower or higher dimensionality.

## Needs to be expanded to other weak supervisions (Mentioned in conclusion)

Adaptation of the co-teaching method to train under other weak supervision (e.g. positive and unlabeled data) could expand the applicability of the paradigm.

## Lack of Theoretical Development (Mentioned in conclusion)

This paper lacks any theoretical guarantees for co-teaching. Proving that the results shown in this study are generalizable would bolster the findings significantly.

# References

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