toplogo
Entrar

IISAN: Efficiently Adapting Multimodal Representation for Sequential Recommendation with Decoupled Parameter-Efficient Fine-Tuning


Conceitos essenciais
The core message of this paper is that the authors propose a novel Intra- and Inter-modal Side Adapted Network (IISAN) that follows a decoupled parameter-efficient fine-tuning (DPEFT) paradigm to efficiently adapt pre-trained large-scale multimodal foundation models for downstream sequential recommendation tasks. IISAN significantly reduces GPU memory usage and training time compared to full fine-tuning and existing embedded PEFT methods, while maintaining comparable recommendation performance.
Resumo
The paper introduces IISAN, a simple plug-and-play architecture that uses a Decoupled PEFT structure to exploit both intra- and inter-modal adaptation for efficient multimodal representation learning. Key highlights: IISAN matches the performance of full fine-tuning (FFT) and state-of-the-art PEFT methods, while significantly reducing GPU memory usage (from 47GB to just 3GB) and accelerating training time per epoch (from 443s to 22s) compared to FFT. IISAN outperforms existing PEFT methods like Adapter and LoRA in both performance and practical efficiency, requiring only 22% of the relative costs in terms of the new TPME (Training-time, Parameter, and GPU Memory Efficiency) metric. The authors provide a detailed analysis demonstrating the superior training time, parameter, and GPU memory efficiency of IISAN compared to FFT and embedded PEFT approaches. The decoupled PEFT structure of IISAN enables a caching strategy that further enhances its efficiency, reducing the TPME to just 0.2% of FFT. Extensive experiments on three multimodal recommendation datasets validate the effectiveness and robustness of IISAN across different multimodal backbones.
Estatísticas
The training time per epoch for FFT is around 443 seconds, while IISAN (uncached) takes 179 seconds and IISAN (cached) only takes 22 seconds. The number of trainable parameters for FFT is 195M, while IISAN has only 4M trainable parameters, a 97.89% reduction. The maximum GPU memory usage for FFT is 46.76GB, while IISAN (uncached) uses 8.32GB and IISAN (cached) only uses 3.11GB, an 82.19% and 93.35% reduction, respectively.
Citações
"IISAN matches the performance of full fine-tuning (FFT) and state-of-the-art PEFT, while significantly reducing GPU memory usage — from 47GB to just 3GB for multimodal sequential recommendation tasks." "IISAN accelerates training time per epoch from 443s to 22s compared to FFT. This is also a notable improvement over the Adapter and LoRA, which require 37-39 GB GPU memory and 350-380 seconds per epoch for training."

Principais Insights Extraídos De

by Junchen Fu,X... às arxiv.org 04-03-2024

https://arxiv.org/pdf/2404.02059.pdf
IISAN

Perguntas Mais Profundas

How can the proposed IISAN architecture be extended to other multimodal tasks beyond sequential recommendation, such as cross-modal retrieval or multimodal generation?

The proposed IISAN architecture can be extended to other multimodal tasks by adapting its decoupled PEFT structure and caching strategy to suit the specific requirements of tasks like cross-modal retrieval or multimodal generation. For cross-modal retrieval, the intra- and inter-modal side adapted networks in IISAN can be fine-tuned to optimize the interaction between different modalities, enhancing the retrieval performance. Additionally, the caching strategy can be tailored to store and reuse relevant information from the multimodal backbone models, improving efficiency in retrieving cross-modal information. In the case of multimodal generation tasks, IISAN can be modified to generate diverse and coherent multimodal outputs by adjusting the fusion mechanisms and gate mechanisms within the architecture. By fine-tuning the SANs to capture the interactions between modalities effectively, IISAN can generate high-quality multimodal outputs. Furthermore, the LayerDrop technique in IISAN can be utilized to control the redundancy in generated outputs, ensuring diversity while maintaining coherence.

What are the potential limitations or drawbacks of the decoupled PEFT approach, and how can they be addressed in future research?

One potential limitation of the decoupled PEFT approach, as seen in existing PEFT methods, is the challenge of maintaining a balance between reducing trainable parameters and optimizing computational efficiency. While decoupling the PEFT from the backbone models can lead to efficiency gains, it may also introduce complexities in managing the interactions between the two components. This can result in increased training time or memory usage if not carefully optimized. To address these limitations, future research can focus on refining the decoupled PEFT structure by exploring more advanced caching strategies to minimize redundant computations and memory usage. Additionally, incorporating dynamic mechanisms to adaptively adjust the interactions between the PEFT modules and backbone models based on task requirements can enhance the overall efficiency of the approach. Furthermore, investigating novel techniques for optimizing the communication and synchronization between the decoupled components can help mitigate any potential drawbacks of the decoupled PEFT approach.

Given the significant efficiency gains of IISAN, how can the freed-up computational resources be leveraged to further improve the model's performance or enable the exploration of larger-scale multimodal foundation models?

The freed-up computational resources from the efficiency gains of IISAN can be leveraged to enhance the model's performance and enable the exploration of larger-scale multimodal foundation models in several ways. Increased Model Complexity: With the additional computational resources, more complex architectures can be implemented within IISAN, such as deeper SANs or additional attention mechanisms. This can lead to improved representation learning and higher performance in multimodal tasks. Hyperparameter Tuning: The extra computational resources can be utilized for extensive hyperparameter tuning, optimizing the model's configuration for specific tasks. This can result in better generalization and performance across different datasets. Data Augmentation: The additional resources can facilitate the implementation of advanced data augmentation techniques, enhancing the model's ability to learn from diverse and augmented data, leading to improved robustness and performance. Ensemble Learning: The freed-up resources can enable the implementation of ensemble learning techniques, combining multiple variations of IISAN models to boost performance through model averaging or stacking. By strategically allocating the freed-up computational resources towards these avenues, the performance of IISAN can be further improved, and the exploration of larger-scale multimodal foundation models can be facilitated, leading to advancements in multimodal representation learning tasks.
0
visual_icon
generate_icon
translate_icon
scholar_search_icon
star