toplogo
Войти
аналитика - Neural Networks - # Graph Neural Networks

LEGNN: Training a Graph Neural Network Resistant to Label Noise with Reduced Complexity


Основные понятия
LEGNN is a novel method for training robust Graph Neural Networks (GNNs) that are resistant to label noise, achieving this through a label ensemble approach and reducing computational complexity compared to traditional reliable labeling methods.
Аннотация
  • Bibliographic Information: Zhao, R., Shi, B., Liang, Z., Ruan, J., Dong, B., & Lin, L. (2024). LEGNN: A Label Ensemble Perspective for Training a Label-Noise-Resistant GNN with Reduced Complexity. arXiv preprint arXiv:2411.11020.
  • Research Objective: This paper addresses the challenge of training accurate GNNs for semi-supervised node classification tasks when the training data contains noisy labels. The authors aim to develop a method that is both robust to label noise and computationally efficient.
  • Methodology: The authors propose LEGNN, a novel framework that reframes the noisy-label node classification problem as a partial label learning task. LEGNN utilizes a two-step process:
    1. Bootstrapping Neighboring Context: Random neighbor masks are applied to generate multiple masked graphs, diversifying the neighborhood information and mitigating the impact of noisy labels.
    2. Robust Learning with Gathered Multiple Labels: A label ensemble strategy gathers high-probability and low-probability labels from the predictions on masked graphs. These labels are then used to train the GNN model using a weighted bidirectional loss function, leveraging both positive and negative supervision signals.
  • Key Findings: Extensive experiments on six benchmark datasets demonstrate that LEGNN consistently outperforms existing state-of-the-art methods in handling label noise, especially under high noise rates. Moreover, LEGNN exhibits good scalability on large datasets with over one hundred thousand nodes and one million edges.
  • Main Conclusions: LEGNN offers a novel and effective approach for training label-noise-resistant GNNs with reduced complexity. By reframing the problem as a partial label learning task and employing a label ensemble strategy, LEGNN effectively mitigates the negative impact of label noise while maintaining computational efficiency.
  • Significance: This research significantly contributes to the field of graph neural networks by providing a practical solution for robust training in the presence of label noise, a common issue in real-world applications.
  • Limitations and Future Research: While LEGNN demonstrates promising results, future research could explore more sophisticated PLL strategies and investigate the impact of different neighbor masking techniques on performance. Additionally, extending LEGNN to other graph learning tasks beyond node classification is a promising direction.
edit_icon

Настроить сводку

edit_icon

Переписать с помощью ИИ

edit_icon

Создать цитаты

translate_icon

Перевести источник

visual_icon

Создать интеллект-карту

visit_icon

Перейти к источнику

Статистика
For the Cora, Citeseer, and IGB datasets, 5% of nodes are randomly selected for training and 15% for validation. For the Pubmed dataset, 1% of nodes are randomly selected for training and 19% for validation. The experiments use a dual-layer GCN with a hidden dimension of 64 as the backbone network. All training was conducted for 200 epochs, with a fixed momentum of 0.9 and a dropout rate of 0.5.
Цитаты

Ключевые выводы из

by Rui Zhao, Bi... в arxiv.org 11-19-2024

https://arxiv.org/pdf/2411.11020.pdf
Training a Label-Noise-Resistant GNN with Reduced Complexity

Дополнительные вопросы

How could LEGNN be adapted to handle other types of noise present in graph data, such as edge noise or attribute noise?

LEGNN, primarily designed to address label noise in graph neural networks, can be adapted to handle other types of noise like edge noise and attribute noise by incorporating appropriate modifications: Handling Edge Noise: Modified Bootstrapping: Instead of solely masking neighbors based on edges, LEGNN can be extended to handle potentially noisy edges. This could involve: Edge Weighting: Assigning weights to edges based on their reliability. These weights can be derived from graph structural properties or external knowledge. During neighbor aggregation, these weights can be incorporated to emphasize reliable edges and downplay noisy ones. Edge Dropout: Similar to dropout in neural networks, randomly dropping a fraction of edges during training can help the model learn more robust representations less sensitive to noisy edges. Robust Aggregation Functions: Utilizing aggregation functions in the GNN architecture that are inherently robust to outliers can mitigate the impact of noisy edges. Examples include median aggregation or attention-based mechanisms that learn to focus on reliable neighbors. Handling Attribute Noise: Attribute Denoising Autoencoder: Incorporating a denoising autoencoder as a preprocessing step can help clean the attribute features. The autoencoder would be trained to reconstruct clean attributes from noisy inputs, effectively learning to filter out the noise. Robust Feature Aggregation: Similar to handling edge noise, using robust aggregation functions within the GNN layers can help. For instance, attention mechanisms can be employed to focus on more informative and less noisy attribute dimensions. Attribute Smoothing: Techniques like label propagation can be adapted to smooth attribute values. This involves propagating information from nodes with reliable attributes to those with potentially noisy ones, effectively regularizing the attribute space. Key Considerations: Noise Characteristics: The specific adaptation strategy should be tailored to the characteristics of the noise present in the data. For instance, if the edge noise is random, dropout might be effective, while structured noise might require more sophisticated methods like edge weighting. Computational Complexity: While incorporating these adaptations, it's crucial to consider their computational complexity and strive for a balance between robustness and efficiency.

While LEGNN reduces the reliance on computationally expensive similarity computations, could incorporating some degree of similarity information further enhance its robustness to noise?

Yes, incorporating a degree of similarity information could potentially enhance LEGNN's robustness to noise, even though it aims to reduce reliance on computationally expensive similarity computations. Here's how: Informed Neighbor Masking: Instead of purely random neighbor masking, similarity information can guide the masking process. For instance, during bootstrapping, neighbors with higher similarity to the target node could have a lower probability of being masked. This ensures that the model still receives information from more relevant neighbors while maintaining diversity in the bootstrapped samples. Weighted Label Ensemble: Similarity information can be used to weight the labels during the ensemble process. Labels from neighbors with higher similarity to the target node could be assigned higher weights, reflecting their greater influence on the target node's label. Similarity-Aware Loss Function: The weighted bidirectional loss function can be modified to incorporate similarity information. For example, the loss could be scaled based on the similarity between the target node and its neighbors, giving more emphasis to correctly classifying nodes with similar neighbors. Balancing Robustness and Efficiency: Approximation Techniques: To maintain computational efficiency, approximate similarity measures or nearest neighbor search algorithms can be employed instead of calculating pairwise similarities for all nodes. Hybrid Approach: A hybrid approach could involve using LEGNN's label ensemble strategy as the primary mechanism for handling noise while incorporating similarity information selectively, such as during the neighbor masking or loss weighting steps. Key Considerations: Similarity Metric: The choice of similarity metric is crucial and should be relevant to the specific task and data characteristics. Noise Level: The degree to which similarity information is beneficial might depend on the level of noise in the data. In high-noise scenarios, relying too heavily on similarity might be detrimental if the similarity information itself is noisy.

How can the principles of label ensemble and partial label learning be applied to other domains beyond graph neural networks, such as natural language processing or computer vision, to improve robustness and handle noisy data?

The principles of label ensemble and partial label learning, central to LEGNN's effectiveness in handling noisy data in graph neural networks, can be extended to other domains like natural language processing (NLP) and computer vision to enhance robustness: Natural Language Processing (NLP): Text Classification with Noisy Labels: In sentiment analysis or topic modeling, where labels might be noisy due to subjective annotations, label ensemble can be applied. Multiple models can be trained on different subsets of the noisy data or with different data augmentation techniques. Their predictions can then be aggregated, similar to LEGNN's approach, to obtain more robust classifications. Sequence Labeling with Partial Annotations: For tasks like named entity recognition, obtaining complete and accurate annotations can be expensive. Partial label learning can be employed where only a subset of words in a sentence is labeled. Techniques like CRF-based models can be adapted to handle such partial annotations, and label ensemble can further improve robustness by combining predictions from models trained on different partially labeled views of the data. Computer Vision: Image Classification with Label Noise: Similar to text classification, label ensemble can be used to handle noisy labels in image datasets. Multiple convolutional neural networks (CNNs) can be trained with different data augmentation strategies or by focusing on different regions of the images. Their predictions can then be combined to obtain more reliable classifications. Object Detection with Weak Supervision: In object detection, obtaining bounding box annotations for all objects in an image can be time-consuming. Weak supervision techniques provide image-level labels instead of precise bounding boxes. Partial label learning methods can be used to train object detectors using these weak labels, and label ensemble can further improve performance by aggregating predictions from detectors trained on different subsets of the weakly labeled data. Key Principles and Adaptations: Diversity in Ensemble: The key to effective label ensemble is to ensure diversity among the models or labeling processes. This can be achieved through different model architectures, training data manipulations, or variations in the partial labeling strategy. Domain-Specific Considerations: The specific implementation of label ensemble and partial label learning should be tailored to the characteristics of the domain and the nature of the noise present in the data. By leveraging these principles and adapting them to the specific challenges of each domain, label ensemble and partial label learning can contribute to building more robust machine learning models capable of handling noisy and uncertain data.
0
star