When Dynamic Data Selection Meets Data Augmentation
- URL: http://arxiv.org/abs/2505.03809v1
- Date: Fri, 02 May 2025 11:38:48 GMT
- Title: When Dynamic Data Selection Meets Data Augmentation
- Authors: Suorong Yang, Peng Ye, Furao Shen, Dongzhan Zhou,
- Abstract summary: We propose a novel online data training framework that unifies dynamic data selection and augmentation.<n>Our method estimates each sample's joint distribution of local density and multimodal semantic consistency, allowing for the targeted selection of augmentation-suitable samples.<n>Our approach enhances noise resistance and improves model robustness, reinforcing its practical utility in real-world scenarios.
- Score: 10.217776379089093
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Dynamic data selection aims to accelerate training with lossless performance. However, reducing training data inherently limits data diversity, potentially hindering generalization. While data augmentation is widely used to enhance diversity, it is typically not optimized in conjunction with selection. As a result, directly combining these techniques fails to fully exploit their synergies. To tackle the challenge, we propose a novel online data training framework that, for the first time, unifies dynamic data selection and augmentation, achieving both training efficiency and enhanced performance. Our method estimates each sample's joint distribution of local density and multimodal semantic consistency, allowing for the targeted selection of augmentation-suitable samples while suppressing the inclusion of noisy or ambiguous data. This enables a more significant reduction in dataset size without sacrificing model generalization. Experimental results demonstrate that our method outperforms existing state-of-the-art approaches on various benchmark datasets and architectures, e.g., reducing 50\% training costs on ImageNet-1k with lossless performance. Furthermore, our approach enhances noise resistance and improves model robustness, reinforcing its practical utility in real-world scenarios.
Related papers
- Multimodal-Guided Dynamic Dataset Pruning for Robust and Efficient Data-Centric Learning [49.10890099624699]
We introduce a dynamic dataset pruning framework that adaptively selects training samples based on task-driven difficulty and cross-modality semantic consistency.<n>Our work highlights the potential of integrating cross-modality alignment for robust sample selection, advancing data-centric learning toward more efficient and robust practices across application domains.
arXiv Detail & Related papers (2025-07-17T03:08:26Z) - RL-Selector: Reinforcement Learning-Guided Data Selection via Redundancy Assessment [10.284993431741377]
We introduce the concept of epsilon-sample cover, which quantifies sample redundancy based on inter-sample relationships.<n>We reformulate data selection as a reinforcement learning process and propose RL-Selector.<n>Our method consistently outperforms existing state-of-the-art baselines.
arXiv Detail & Related papers (2025-06-26T06:28:56Z) - LEAD: Iterative Data Selection for Efficient LLM Instruction Tuning [22.242445543184264]
We propose LEAD, an efficient iterative data selection framework that accurately estimates sample utility entirely within the standard training loop.<n>Experiments show that LEAD significantly outperforms state-of-the-art methods, improving average model performance by 6.1%-10.8% while using only 2.5% of the training data and reducing overall training time by 5-10x.
arXiv Detail & Related papers (2025-05-12T10:57:51Z) - Less is More: Adaptive Coverage for Synthetic Training Data [20.136698279893857]
This study introduces a novel sampling algorithm, based on the maximum coverage problem, to select a representative subset from a synthetically generated dataset.<n>Our results demonstrate that training a classifier on this contextually sampled subset achieves superior performance compared to training on the entire dataset.
arXiv Detail & Related papers (2025-04-20T06:45:16Z) - Dynamic Loss-Based Sample Reweighting for Improved Large Language Model Pretraining [55.262510814326035]
Existing reweighting strategies primarily focus on group-level data importance.<n>We introduce novel algorithms for dynamic, instance-level data reweighting.<n>Our framework allows us to devise reweighting strategies deprioritizing redundant or uninformative data.
arXiv Detail & Related papers (2025-02-10T17:57:15Z) - A CLIP-Powered Framework for Robust and Generalizable Data Selection [51.46695086779598]
Real-world datasets often contain redundant and noisy data, imposing a negative impact on training efficiency and model performance.
Data selection has shown promise in identifying the most representative samples from the entire dataset.
We propose a novel CLIP-powered data selection framework that leverages multimodal information for more robust and generalizable sample selection.
arXiv Detail & Related papers (2024-10-15T03:00:58Z) - Efficient Online Data Mixing For Language Model Pre-Training [101.45242332613944]
Existing data selection methods suffer from slow and computationally expensive processes.
Data mixing, on the other hand, reduces the complexity of data selection by grouping data points together.
We develop an efficient algorithm for Online Data Mixing (ODM) that combines elements from both data selection and data mixing.
arXiv Detail & Related papers (2023-12-05T00:42:35Z) - Towards Accelerated Model Training via Bayesian Data Selection [45.62338106716745]
We propose a more reasonable data selection principle by examining the data's impact on the model's generalization loss.
Recent work has proposed a more reasonable data selection principle by examining the data's impact on the model's generalization loss.
This work solves these problems by leveraging a lightweight Bayesian treatment and incorporating off-the-shelf zero-shot predictors built on large-scale pre-trained models.
arXiv Detail & Related papers (2023-08-21T07:58:15Z) - Improved Distribution Matching for Dataset Condensation [91.55972945798531]
We propose a novel dataset condensation method based on distribution matching.
Our simple yet effective method outperforms most previous optimization-oriented methods with much fewer computational resources.
arXiv Detail & Related papers (2023-07-19T04:07:33Z) - CAFE: Learning to Condense Dataset by Aligning Features [72.99394941348757]
We propose a novel scheme to Condense dataset by Aligning FEatures (CAFE)
At the heart of our approach is an effective strategy to align features from the real and synthetic data across various scales.
We validate the proposed CAFE across various datasets, and demonstrate that it generally outperforms the state of the art.
arXiv Detail & Related papers (2022-03-03T05:58:49Z)
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.