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 251275 of 935 papers

TitleStatusHype
BiLoRA: Almost-Orthogonal Parameter Spaces for Continual Learning0
Sensitivity-Aware Efficient Fine-Tuning via Compact Dynamic-Rank Adaptation0
LoKi: Low-dimensional KAN for Efficient Fine-tuning Image Models0
Meta-Learning Hyperparameters for Parameter Efficient Fine-Tuning0
pFedMxF: Personalized Federated Class-Incremental Learning with Mixture of Frequency Aggregation0
SoMA: Singular Value Decomposed Minor Components Adaptation for Domain Generalizable Representation Learning0
TADFormer: Task-Adaptive Dynamic TransFormer for Efficient Multi-Task Learning0
Rethinking Addressing in Language Models via Contexualized Equivariant Positional EncodingCode1
VELoRA: A Low-Rank Adaptation Approach for Efficient RGB-Event based RecognitionCode0
Adaptive Parameter-Efficient Federated Fine-Tuning on Heterogeneous Devices0
KALAHash: Knowledge-Anchored Low-Resource Adaptation for Deep HashingCode0
Gradient Weight-normalized Low-rank Projection for Efficient LLM TrainingCode0
Interweaving Memories of a Siamese Large Language ModelCode0
LLMsAgainstHate @ NLU of Devanagari Script Languages 2025: Hate Speech Detection and Target Identification in Devanagari Languages via Parameter Efficient Fine-Tuning of LLMsCode0
Semantic Hierarchical Prompt Tuning for Parameter-Efficient Fine-TuningCode0
Label Privacy in Split Learning for Large Models with Parameter-Efficient TrainingCode0
CustomTTT: Motion and Appearance Customized Video Generation via Test-Time TrainingCode0
FedPIA -- Permuting and Integrating Adapters leveraging Wasserstein Barycenters for Finetuning Foundation Models in Multi-Modal Federated Learning0
GraphLoRA: Empowering LLMs Fine-Tuning via Graph Collaboration of MoE0
Refining Salience-Aware Sparse Fine-Tuning Strategies for Language ModelsCode0
Parameter-efficient Fine-tuning for improved Convolutional Baseline for Brain Tumor Segmentation in Sub-Saharan Africa Adult Glioma DatasetCode0
FarExStance: Explainable Stance Detection for FarsiCode0
Extending LLMs to New Languages: A Case Study of Llama and Persian AdaptationCode0
Train More Parameters But Mind Their Placement: Insights into Language Adaptation with PEFTCode0
LLaVA Steering: Visual Instruction Tuning with 500x Fewer Parameters through Modality Linear Representation-SteeringCode0
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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