Uncertainty-aware Parameter-Efficient Self-training for Semi-supervised
Language Understanding
- URL: http://arxiv.org/abs/2310.13022v1
- Date: Thu, 19 Oct 2023 02:18:29 GMT
- Title: Uncertainty-aware Parameter-Efficient Self-training for Semi-supervised
Language Understanding
- Authors: Jianing Wang, Qiushi Sun, Nuo Chen, Chengyu Wang, Jun Huang, Ming Gao,
Xiang Li
- Abstract summary: We study self-training as one of the predominant semi-supervised learning approaches.
We present UPET, a novel Uncertainty-aware self-Training framework.
We show that UPET achieves a substantial improvement in terms of performance and efficiency.
- Score: 38.11411155621616
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The recent success of large pre-trained language models (PLMs) heavily hinges
on massive labeled data, which typically produces inferior performance in
low-resource scenarios. To remedy this dilemma, we study self-training as one
of the predominant semi-supervised learning (SSL) approaches, which utilizes
large-scale unlabeled data to generate synthetic examples. However, too many
noisy labels will hurt the model performance, and the self-training procedure
requires multiple training iterations making it more expensive if all the model
parameters of the PLM are updated. This paper presents UPET, a novel
Uncertainty-aware Parameter-Efficient self-Training framework to effectively
and efficiently address the labeled data scarcity issue. Specifically, we
incorporate Monte Carlo (MC) dropout in Bayesian neural network (BNN) to
perform uncertainty estimation for the teacher model and then judiciously
select reliable pseudo-labeled examples based on confidence and certainty.
During the student training, we introduce multiple parameter-efficient learning
(PEL) paradigms that allow the optimization of only a small percentage of
parameters. We also propose a novel Easy-Hard Contrastive Tuning to enhance the
robustness and generalization. Extensive experiments over multiple downstream
tasks demonstrate that UPET achieves a substantial improvement in terms of
performance and efficiency. Our codes and data are released at https:
//github.com/wjn1996/UPET.
Related papers
- A Bayesian Approach to Data Point Selection [24.98069363998565]
Data point selection (DPS) is becoming a critical topic in deep learning.
Existing approaches to DPS are predominantly based on a bi-level optimisation (BLO) formulation.
We propose a novel Bayesian approach to DPS.
arXiv Detail & Related papers (2024-11-06T09:04:13Z) - Uncertainty Aware Learning for Language Model Alignment [97.36361196793929]
We propose uncertainty-aware learning (UAL) to improve the model alignment of different task scenarios.
We implement UAL in a simple fashion -- adaptively setting the label smoothing value of training according to the uncertainty of individual samples.
Experiments on widely used benchmarks demonstrate that our UAL significantly and consistently outperforms standard supervised fine-tuning.
arXiv Detail & Related papers (2024-06-07T11:37:45Z) - Advancing the Robustness of Large Language Models through Self-Denoised Smoothing [50.54276872204319]
Large language models (LLMs) have achieved significant success, but their vulnerability to adversarial perturbations has raised considerable concerns.
We propose to leverage the multitasking nature of LLMs to first denoise the noisy inputs and then to make predictions based on these denoised versions.
Unlike previous denoised smoothing techniques in computer vision, which require training a separate model to enhance the robustness of LLMs, our method offers significantly better efficiency and flexibility.
arXiv Detail & Related papers (2024-04-18T15:47:00Z) - Progressive Feature Adjustment for Semi-supervised Learning from
Pretrained Models [39.42802115580677]
Semi-supervised learning (SSL) can leverage both labeled and unlabeled data to build a predictive model.
Recent literature suggests that naively applying state-of-the-art SSL with a pretrained model fails to unleash the full potential of training data.
We propose to use pseudo-labels from the unlabelled data to update the feature extractor that is less sensitive to incorrect labels.
arXiv Detail & Related papers (2023-09-09T01:57:14Z) - Parameter-Efficient Sparsity for Large Language Models Fine-Tuning [63.321205487234074]
We propose a.
sparse-efficient Sparse Training (PST) method to reduce the number of trainable parameters during sparse-aware training.
Experiments with diverse networks (i.e., BERT, RoBERTa and GPT-2) demonstrate PST performs on par or better than previous sparsity methods.
arXiv Detail & Related papers (2022-05-23T02:43:45Z) - Few-Shot Parameter-Efficient Fine-Tuning is Better and Cheaper than
In-Context Learning [81.3514358542452]
Few-shot in-context learning (ICL) incurs substantial computational, memory, and storage costs because it involves processing all of the training examples every time a prediction is made.
parameter-efficient fine-tuning offers an alternative paradigm where a small set of parameters are trained to enable a model to perform the new task.
In this paper, we rigorously compare few-shot ICL and parameter-efficient fine-tuning and demonstrate that the latter offers better accuracy as well as dramatically lower computational costs.
arXiv Detail & Related papers (2022-05-11T17:10:41Z) - Hyperparameter-free Continuous Learning for Domain Classification in
Natural Language Understanding [60.226644697970116]
Domain classification is the fundamental task in natural language understanding (NLU)
Most existing continual learning approaches suffer from low accuracy and performance fluctuation.
We propose a hyper parameter-free continual learning model for text data that can stably produce high performance under various environments.
arXiv Detail & Related papers (2022-01-05T02:46:16Z) - Meta-Learned Confidence for Few-shot Learning [60.6086305523402]
A popular transductive inference technique for few-shot metric-based approaches, is to update the prototype of each class with the mean of the most confident query examples.
We propose to meta-learn the confidence for each query sample, to assign optimal weights to unlabeled queries.
We validate our few-shot learning model with meta-learned confidence on four benchmark datasets.
arXiv Detail & Related papers (2020-02-27T10:22:17Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.