SOTAVerified

parameter-efficient fine-tuning

Parameter-Efficient Fine-Tuning (PEFT) is a technique used to adapt pre-trained models to new tasks with minimal changes to the model's parameters. This approach is particularly useful in scenarios where computational resources are limited or when it is desirable to maintain the original model's performance on the initial task.

Papers

Showing 326350 of 935 papers

TitleStatusHype
On-Device LLM for Context-Aware Wi-Fi RoamingCode0
Obliviate: Neutralizing Task-agnostic Backdoors within the Parameter-efficient Fine-tuning ParadigmCode0
Detecting Referring Expressions in Visually Grounded Dialogue with Autoregressive Language ModelsCode0
Music for All: Representational Bias and Cross-Cultural Adaptability of Music Generation ModelsCode0
Navigating the Landscape of Large Language Models: A Comprehensive Review and Analysis of Paradigms and Fine-Tuning StrategiesCode0
Multi-View and Multi-Scale Alignment for Contrastive Language-Image Pre-training in MammographyCode0
Parameter-Efficient Cross-lingual Transfer of Vision and Language Models via Translation-based AlignmentCode0
Deepfakes on Demand: the rise of accessible non-consensual deepfake image generatorsCode0
Deep Content Understanding Toward Entity and Aspect Target Sentiment Analysis on Foundation ModelsCode0
MotionAura: Generating High-Quality and Motion Consistent Videos using Discrete DiffusionCode0
GuiLoMo: Allocating Expert Number and Rank for LoRA-MoE via Bilevel Optimization with GuidedSelection VectorsCode0
MSPLoRA: A Multi-Scale Pyramid Low-Rank Adaptation for Efficient Model Fine-TuningCode0
MoLEx: Mixture of Layer Experts for Finetuning with Sparse UpcyclingCode0
Gradient Weight-normalized Low-rank Projection for Efficient LLM TrainingCode0
MoRE: A Mixture of Low-Rank Experts for Adaptive Multi-Task LearningCode0
Gradient Inversion Attacks on Parameter-Efficient Fine-TuningCode0
15,500 Seconds: Lean UAV Classification Leveraging PEFT and Pre-Trained NetworksCode0
Minimal Ranks, Maximum Confidence: Parameter-efficient Uncertainty Quantification for LoRACode0
GNNavi: Navigating the Information Flow in Large Language Models by Graph Neural NetworkCode0
DARE the Extreme: Revisiting Delta-Parameter Pruning For Fine-Tuned ModelsCode0
GIFT-SW: Gaussian noise Injected Fine-Tuning of Salient Weights for LLMsCode0
ADePT: Adaptive Decomposed Prompt Tuning for Parameter-Efficient Fine-tuningCode0
ASteISR: Adapting Single Image Super-resolution Pre-trained Model for Efficient Stereo Image Super-resolutionCode0
Harnessing the Power of Large Language Model for Uncertainty Aware Graph ProcessingCode0
CustomTTT: Motion and Appearance Customized Video Generation via Test-Time TrainingCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1LLaMA2-7bAccuracy (% )82.63Unverified
2LLaMA2-7bAccuracy (% )82.63Unverified
3LLaMA2-7bAccuracy (% )81.93Unverified
4LLaMA2-7bAccuracy (% )80.28Unverified
#ModelMetricClaimedVerifiedStatus
1LLaMA2-7bAccuracy (% )76.68Unverified
2LLaMA2-7bAccuracy (% )76.67Unverified
3LLaMA2-7bAccuracy (% )76.27Unverified
#ModelMetricClaimedVerifiedStatus
1LLaMA2-7bAccuracy (% )70.8Unverified
2LLaMA2-7bAccuracy (% )70.09Unverified
3LLaMA2-7bAccuracy (% )69.85Unverified