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Main Authors: Patock, Jake R., Lewis, Nicole Catherine, McCoy, Kevin, Gomez, Christina, Chen, Canling, Luzi, Lorenzo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.18009
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author Patock, Jake R.
Lewis, Nicole Catherine
McCoy, Kevin
Gomez, Christina
Chen, Canling
Luzi, Lorenzo
author_facet Patock, Jake R.
Lewis, Nicole Catherine
McCoy, Kevin
Gomez, Christina
Chen, Canling
Luzi, Lorenzo
contents State-of-the-art (SOTA) image and text generation models are multimodal models that have many similarities to large language models (LLMs). Despite achieving strong performances, leading foundational multimodal model architectures frequently lag behind the architectural sophistication of contemporary LLMs. We propose GRR-CoCa, an improved SOTA Contrastive Captioner (CoCa) model that incorporates Gaussian error gated linear units, root mean squared normalization, and rotary positional embedding into the textual decoders and the vision transformer (ViT) encoder. Each architectural modification has been shown to improve model performance in LLMs, but has yet to be adopted in CoCa. We benchmarked GRR-CoCa against Baseline CoCa, a model with the same modified textual decoders but with CoCa's original ViT encoder. We used standard pretraining and fine-tuning workflows to benchmark the models on contrastive and generative tasks. Our GRR-CoCa significantly outperformed Baseline CoCa on the pretraining dataset and three diverse fine-tuning datasets. Pretraining improvements were 27.25% in contrastive loss, 3.71% in perplexity, and 7.15% in CoCa loss. The average fine-tuning improvements were 13.66% in contrastive loss, 5.18% in perplexity, and 5.55% in CoCa loss. We show that GRR-CoCa's modified architecture improves performance and generalization across vision-language domains.
format Preprint
id arxiv_https___arxiv_org_abs_2507_18009
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GRR-CoCa: Leveraging LLM Mechanisms in Multimodal Model Architectures
Patock, Jake R.
Lewis, Nicole Catherine
McCoy, Kevin
Gomez, Christina
Chen, Canling
Luzi, Lorenzo
Computer Vision and Pattern Recognition
Artificial Intelligence
Computation and Language
State-of-the-art (SOTA) image and text generation models are multimodal models that have many similarities to large language models (LLMs). Despite achieving strong performances, leading foundational multimodal model architectures frequently lag behind the architectural sophistication of contemporary LLMs. We propose GRR-CoCa, an improved SOTA Contrastive Captioner (CoCa) model that incorporates Gaussian error gated linear units, root mean squared normalization, and rotary positional embedding into the textual decoders and the vision transformer (ViT) encoder. Each architectural modification has been shown to improve model performance in LLMs, but has yet to be adopted in CoCa. We benchmarked GRR-CoCa against Baseline CoCa, a model with the same modified textual decoders but with CoCa's original ViT encoder. We used standard pretraining and fine-tuning workflows to benchmark the models on contrastive and generative tasks. Our GRR-CoCa significantly outperformed Baseline CoCa on the pretraining dataset and three diverse fine-tuning datasets. Pretraining improvements were 27.25% in contrastive loss, 3.71% in perplexity, and 7.15% in CoCa loss. The average fine-tuning improvements were 13.66% in contrastive loss, 5.18% in perplexity, and 5.55% in CoCa loss. We show that GRR-CoCa's modified architecture improves performance and generalization across vision-language domains.
title GRR-CoCa: Leveraging LLM Mechanisms in Multimodal Model Architectures
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2507.18009