Beyond Efficiency: Molecular Data Pruning for Enhanced Generalization
- URL: http://arxiv.org/abs/2409.01081v1
- Date: Mon, 2 Sep 2024 09:06:04 GMT
- Title: Beyond Efficiency: Molecular Data Pruning for Enhanced Generalization
- Authors: Dingshuo Chen, Zhixun Li, Yuyan Ni, Guibin Zhang, Ding Wang, Qiang Liu, Shu Wu, Jeffrey Xu Yu, Liang Wang,
- Abstract summary: MolPeg is a Molecular data Pruning framework for enhanced Generalization.
It focuses on the source-free data pruning scenario, where data pruning is applied with pretrained models.
It consistently outperforms existing DP methods across four downstream tasks.
- Score: 30.738229850748137
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the emergence of various molecular tasks and massive datasets, how to perform efficient training has become an urgent yet under-explored issue in the area. Data pruning (DP), as an oft-stated approach to saving training burdens, filters out less influential samples to form a coreset for training. However, the increasing reliance on pretrained models for molecular tasks renders traditional in-domain DP methods incompatible. Therefore, we propose a Molecular data Pruning framework for enhanced Generalization (MolPeg), which focuses on the source-free data pruning scenario, where data pruning is applied with pretrained models. By maintaining two models with different updating paces during training, we introduce a novel scoring function to measure the informativeness of samples based on the loss discrepancy. As a plug-and-play framework, MolPeg realizes the perception of both source and target domain and consistently outperforms existing DP methods across four downstream tasks. Remarkably, it can surpass the performance obtained from full-dataset training, even when pruning up to 60-70% of the data on HIV and PCBA dataset. Our work suggests that the discovery of effective data-pruning metrics could provide a viable path to both enhanced efficiency and superior generalization in transfer learning.
Related papers
- BoostAdapter: Improving Vision-Language Test-Time Adaptation via Regional Bootstrapping [64.8477128397529]
We propose a training-required and training-free test-time adaptation framework.
We maintain a light-weight key-value memory for feature retrieval from instance-agnostic historical samples and instance-aware boosting samples.
We theoretically justify the rationality behind our method and empirically verify its effectiveness on both the out-of-distribution and the cross-domain datasets.
arXiv Detail & Related papers (2024-10-20T15:58:43Z) - Pruning then Reweighting: Towards Data-Efficient Training of Diffusion Models [33.09663675904689]
We investigate efficient diffusion training from the perspective of dataset pruning.
Inspired by the principles of data-efficient training for generative models such as generative adversarial networks (GANs), we first extend the data selection scheme used in GANs to DM training.
To further improve the generation performance, we employ a class-wise reweighting approach.
arXiv Detail & Related papers (2024-09-27T20:21:19Z) - SoftDedup: an Efficient Data Reweighting Method for Speeding Up Language Model Pre-training [12.745160748376794]
We propose a soft deduplication method that maintains dataset integrity while selectively reducing the sampling weight of data with high commonness.
Central to our approach is the concept of "data commonness", a metric we introduce to quantify the degree of duplication.
Empirical analysis shows that this method significantly improves training efficiency, achieving comparable perplexity scores with at least a 26% reduction in required training steps.
arXiv Detail & Related papers (2024-07-09T08:26:39Z) - Extracting Training Data from Unconditional Diffusion Models [76.85077961718875]
diffusion probabilistic models (DPMs) are being employed as mainstream models for generative artificial intelligence (AI)
We aim to establish a theoretical understanding of memorization in DPMs with 1) a memorization metric for theoretical analysis, 2) an analysis of conditional memorization with informative and random labels, and 3) two better evaluation metrics for measuring memorization.
Based on the theoretical analysis, we propose a novel data extraction method called textbfSurrogate condItional Data Extraction (SIDE) that leverages a trained on generated data as a surrogate condition to extract training data directly from unconditional diffusion models.
arXiv Detail & Related papers (2024-06-18T16:20:12Z) - Not All Data Matters: An End-to-End Adaptive Dataset Pruning Framework
for Enhancing Model Performance and Efficiency [9.460023981858319]
We propose an end-to-end Adaptive DAtaset PRUNing framework called AdaPruner.
AdaPruner iteratively prunes redundant samples to an expected pruning ratio.
It can still significantly enhance model performance even after pruning up to 10-30% of the training data.
arXiv Detail & Related papers (2023-12-09T16:01:21Z) - Noisy Self-Training with Synthetic Queries for Dense Retrieval [49.49928764695172]
We introduce a novel noisy self-training framework combined with synthetic queries.
Experimental results show that our method improves consistently over existing methods.
Our method is data efficient and outperforms competitive baselines.
arXiv Detail & Related papers (2023-11-27T06:19:50Z) - Selectivity Drives Productivity: Efficient Dataset Pruning for Enhanced
Transfer Learning [66.20311762506702]
dataset pruning (DP) has emerged as an effective way to improve data efficiency.
We propose two new DP methods, label mapping and feature mapping, for supervised and self-supervised pretraining settings.
We show that source data classes can be pruned by up to 40% 80% without sacrificing downstream performance.
arXiv Detail & Related papers (2023-10-13T00:07:49Z) - D4: Improving LLM Pretraining via Document De-Duplication and
Diversification [38.84592304799403]
We show that careful data selection via pre-trained model embeddings can speed up training.
We also show that repeating data intelligently consistently outperforms baseline training.
arXiv Detail & Related papers (2023-08-23T17:58:14Z) - Cluster-level pseudo-labelling for source-free cross-domain facial
expression recognition [94.56304526014875]
We propose the first Source-Free Unsupervised Domain Adaptation (SFUDA) method for Facial Expression Recognition (FER)
Our method exploits self-supervised pretraining to learn good feature representations from the target data.
We validate the effectiveness of our method in four adaptation setups, proving that it consistently outperforms existing SFUDA methods when applied to FER.
arXiv Detail & Related papers (2022-10-11T08:24:50Z) - Omni-supervised Facial Expression Recognition via Distilled Data [120.11782405714234]
We propose omni-supervised learning to exploit reliable samples in a large amount of unlabeled data for network training.
We experimentally verify that the new dataset can significantly improve the ability of the learned FER model.
To tackle this, we propose to apply a dataset distillation strategy to compress the created dataset into several informative class-wise images.
arXiv Detail & Related papers (2020-05-18T09:36:51Z)
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.