Home OpenAI CausalMM: A Causal Inference Framework that Applies Structural Causal Modeling to Multimodal Large Language Models (MLLMs)
OpenAI

CausalMM: A Causal Inference Framework that Applies Structural Causal Modeling to Multimodal Large Language Models (MLLMs)

Share
CausalMM: A Causal Inference Framework that Applies Structural Causal Modeling to Multimodal Large Language Models (MLLMs)
Share


Multimodal Large Language Models (MLLMs) have made significant progress in various applications using the power of Transformer models and their attention mechanisms. However, these models face a critical challenge of inherent biases in their initial parameters, known as modality priors, which can negatively impact output quality. The attention mechanism, which determines how input information is weighted to generate outputs, is especially prone to these biases. Both visual encoder attention and Large Language Model (LLM) backbone attention are affected by their respective priors, which can lead to problems like multimodal hallucinations and degraded model performance. Researchers are focusing on addressing these biases without altering the model’s weights.

Recent advancements in MLLMs have led to the development of complex models like VITA and Cambrian-1, that can process multiple modalities and achieve state-of-the-art performance. Research has also focused on training-free reasoning stage improvements, such as VCD and OPERA, which use human experience to enhance model performance without additional training. Efforts to address modality priors have included methods to overcome language priors by integrating visual modules and developing benchmarks like VLind-Bench to measure language priors in MLLMs. Visual priors have been tackled by augmenting off-the-shelf LLMs to support multimodal inputs and outputs through cost-effective training strategies.

Researchers from The Hong Kong University of Science and Technology (Guangzhou), The Hong Kong University of Science and Technology, Nanyang Technological University, and Tsinghua University have proposed CAUSALMM, a causal reasoning framework designed to address the challenges posed by modality priors in MLLMs. This approach builds a structural causal model for MLLMs and uses intervention and counterfactual reasoning methods under the backdoor adjustment paradigm. This helps the proposed method to better capture the causal impact of effective attention on MLLM output, even in the presence of confounding factors such as modality priors. It also ensures that model outputs align more closely with multimodal inputs and mitigate the negative effects of modal priors on performance.

CAUSALMM’s effectiveness is evaluated using benchmarks VLind-Bench, POPE, and MME. The framework is tested against baseline MLLMs like LLaVa-1.5 and Qwen2-VL, as well as training-free techniques such as Visual Contrastive Decoding (VCD) and Over-trust Penalty and Retrospection-Allocation (OPERA). VCD mitigates object hallucinations, whereas OPERA introduces a penalty term during beam search and incorporates a rollback strategy for token selection. Moreover, the evaluation includes ablation studies for different categories of counterfactual attention and the number of intervention layers, providing a detailed analysis of CAUSALMM’s performance across various scenarios and configurations.

Experimental results across multiple benchmarks show CAUSALMM’s effectiveness in balancing modality priors and mitigating hallucinations. On VLind-Bench, it achieves significant performance improvements for both LLaVA1.5 and Qwen2-VL models, effectively balancing visual and language priors. In POPE benchmark tests, CAUSALMM outperformed existing baselines in mitigating object-level hallucinations across random, popular, and adversarial settings, with an average metric improvement of 5.37%. The MME benchmark results showed that the proposed method significantly enhanced the performance of LLaVA-1.5 and Qwen2-VL models, particularly in handling complex queries like counting.

In conclusion, researchers introduced CAUSALMM to address the challenges faced by modality priors in MLLMs. By treating modality priors as confounding factors and applying structural causal modeling, CAUSALMM effectively mitigates biases from visual and language priors. The framework’s use of backdoor adjustment and counterfactual reasoning at visual and language attention levels demonstrated reductions in language prior bias across various benchmarks. This innovative approach not only improves the alignment of multimodal inputs but also sets the foundation for more reliable multimodal intelligence, marking a promising path for future research and development in the MLLMs field.


Check out the Paper and GitHub. All credit for this research goes to the researchers of this project. Also, don’t forget to follow us on Twitter and join our Telegram Channel and LinkedIn Group. If you like our work, you will love our newsletter.. Don’t Forget to join our 50k+ ML SubReddit

[Upcoming Event- Oct 17 202] RetrieveX – The GenAI Data Retrieval Conference (Promoted)


Sajjad Ansari is a final year undergraduate from IIT Kharagpur. As a Tech enthusiast, he delves into the practical applications of AI with a focus on understanding the impact of AI technologies and their real-world implications. He aims to articulate complex AI concepts in a clear and accessible manner.





Source link

Share

Leave a comment

Leave a Reply

Your email address will not be published. Required fields are marked *

By submitting this form, you are consenting to receive marketing emails and alerts from: techaireports.com. You can revoke your consent to receive emails at any time by using the Unsubscribe link, found at the bottom of every email.

Latest Posts

Related Articles
AI2BMD: A Quantum-Accurate Machine Learning Approach for Large-Scale Biomolecular Dynamics
OpenAI

AI2BMD: A Quantum-Accurate Machine Learning Approach for Large-Scale Biomolecular Dynamics

Biomolecular dynamics simulations are crucial for life sciences, offering insights into molecular...

Exploring Adaptive Data Structures: Machine Learning’s Role in Designing Efficient, Scalable Solutions for Complex Data Retrieval Tasks
OpenAI

Exploring Adaptive Data Structures: Machine Learning’s Role in Designing Efficient, Scalable Solutions for Complex Data Retrieval Tasks

Machine learning research has advanced toward models that can autonomously design and...

This AI Paper by Inria Introduces the Tree of Problems: A Simple Yet Effective Framework for Complex Reasoning in Language Models
OpenAI

This AI Paper by Inria Introduces the Tree of Problems: A Simple Yet Effective Framework for Complex Reasoning in Language Models

Large language models (LLMs) have revolutionized natural language processing by making strides...