Home Technology peripherals AI ECCV 2024|Did you really see it, or did you think you saw it? The over-reliance of large multi-modal models on text pre-training knowledge should be resolved

ECCV 2024|Did you really see it, or did you think you saw it? The over-reliance of large multi-modal models on text pre-training knowledge should be resolved

Jul 28, 2024 am 07:49 AM
project Preference alignment

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了
The AIxiv column is a column where this site publishes academic and technical content. In the past few years, the AIxiv column of this site has received more than 2,000 reports, covering top laboratories from major universities and companies around the world, effectively promoting academic exchanges and dissemination. If you have excellent work that you want to share, please feel free to contribute or contact us for reporting. Submission email: liyazhou@jiqizhixin.com; zhaoyunfeng@jiqizhixin.com

Pi Renjie, the first author of this article, is a third-year doctoral student at Hong Kong University of Science and Technology, studying under Professor Zhang Tong and Professor Zhou Xiaofang. Previously received a bachelor's degree in computer engineering from the University of Hong Kong. His research interests include multimodal large language models, data-centric artificial intelligence, and automated machine learning.

With the advancement of large language models (LLMs), multimodal large language models (MLLMs) are developing rapidly. They use pre-trained visual encoders to process images, and input images to LLMs as token embeddings along with text information, thus extending the model's conversational capabilities for processing image inputs. This improvement in capabilities brings possibilities for a variety of potential application areas such as autonomous driving and medical assistants.

Although MLLMs have excellent image and text understanding capabilities, they still suffer from errors or hallucinations, generating responses that do not match the input image, such as answering non-existent objects or misidentifying attributes. We believe that the imbalance of data volume and training time in different training stages of multi-modal large models is one of the main reasons for this type of bias. The language modules of large multi-modal models often use massive text data for pre-training, while the modal alignment stage uses smaller data size and shorter training time.

In order to solve the above problems, we propose a preference alignment method - Bootstrapped Preference Optimization (BPO), which can alleviate the hallucination phenomenon of multi-modal large models while improving the visual understanding ability of the model.

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

  • Paper title: Strengthening Multimodal Large Language Model with Bootstrapped Preference Optimization
  • Paper link: https://arxiv.org/pdf/2403.08730
  • Code link: https://github. com/pipilurj/bootstrapped-preference-optimization-BPO-

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

Specifically, we designed two methods to automatically construct negative samples for preference learning, exposing the over-reliance of multi-modal models on training. Afterwards, we use the original data annotations as positive samples to fine-tune the preferences of the multi-modal model. Overall, our main contributions are:
1. We propose a new perspective that transforms the multi-modal alignment problem into a preference learning task, where pre-training bias and visual understanding ability are treated as old and new preferences;

2. We introduce a method to automate the construction of large-scale preference datasets. Through this method, a large number of negative samples with pre-training bias information can be constructed;

3. A large number of experiments have proven that our method can effectively improve the cognitive ability of multi-modal large models for images, training The latter model has improved performance in multiple benchmarks.
Scalable preference dataset construction

For positive examples of preference datasets, there are already many ready-made datasets designed for supervised fine-tuning, such as high-quality annotated question answering generated by LlaVA and MiniGPT4 Data,ShareGPTV leverages the powerful GPT4-V as a tool to,generate high-quality captions for images. We use these annotated public data sets as positive responses in the preference data set to avoid expensive manual annotation while ensuring high-quality data pairs.

In order to collect negative response data that reflects pre-training bias, we propose two methods.

a. Weaken image prompts: We add noise to the image data in the preference data set to destroy the image features and make the multi-modal large model more inclined to the original pre-trained distribution when answering. The resulting Error responses will contain the inherent bias of the LLM module. As can be seen from the figure, by adding different levels of noise to the image, the probability of the correct answer appearing is smaller, and the probability of the answer with pre-training bias appearing is greater.

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

b. Error injection: We require the large language model corresponding to the multi-modal large model to directly rewrite the response, and require the model to generate an incorrect answer that is similar but not exactly the same as the answer.
Next, we use direct preference optimization (DPO) to optimize the multi-modal model:

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

Experimental evaluation

We use the LLaVA model (LLaVA-7B) fine-tuned by BPO -BPO and LLaVA-13B-BPO) tested on MM-Vet, LLaVA-Wild and Object HalBench. MM-Vet and LlaVA-Bench are lists specifically used to measure the comprehensive capabilities of models, while Object HalBench is used to evaluate the visual credibility of multi-modal large models.

Experimental results show that the model fine-tuned by BPO takes the lead in all tasks on the three benchmark lists. On most tasks, LLaVA-7B-BPO even outperforms the untuned LLaVa1.5-13B model.

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

We also compare BPO with supervised fine-tuning training (SFT). We fine-tune the model by directly using positive samples from the dataset as supervised data. Experiments show that multi-modal large models fine-tuned by BPO perform better than SFT fine-tuning on different categories of subtasks.

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

In terms of qualitative results, we compared the performance of multi-modal large models before and after BPO fine-tuning. We found that the BPO-finetuned model produced answers that were more faithful to the image input and contained less erroneous information.

ECCV 2024|是真看到了,还是以为自己看到了?多模态大模型对文本预训练知识的过度依赖该解决了

For more research details, please refer to the original paper.

The above is the detailed content of ECCV 2024|Did you really see it, or did you think you saw it? The over-reliance of large multi-modal models on text pre-training knowledge should be resolved. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

The author of ControlNet has another hit! The whole process of generating a painting from a picture, earning 1.4k stars in two days The author of ControlNet has another hit! The whole process of generating a painting from a picture, earning 1.4k stars in two days Jul 17, 2024 am 01:56 AM

It is also a Tusheng video, but PaintsUndo has taken a different route. ControlNet author LvminZhang started to live again! This time I aim at the field of painting. The new project PaintsUndo has received 1.4kstar (still rising crazily) not long after it was launched. Project address: https://github.com/lllyasviel/Paints-UNDO Through this project, the user inputs a static image, and PaintsUndo can automatically help you generate a video of the entire painting process, from line draft to finished product. follow. During the drawing process, the line changes are amazing. The final video result is very similar to the original image: Let’s take a look at a complete drawing.

Topping the list of open source AI software engineers, UIUC's agent-less solution easily solves SWE-bench real programming problems Topping the list of open source AI software engineers, UIUC's agent-less solution easily solves SWE-bench real programming problems Jul 17, 2024 pm 10:02 PM

The AIxiv column is a column where this site publishes academic and technical content. In the past few years, the AIxiv column of this site has received more than 2,000 reports, covering top laboratories from major universities and companies around the world, effectively promoting academic exchanges and dissemination. If you have excellent work that you want to share, please feel free to contribute or contact us for reporting. Submission email: liyazhou@jiqizhixin.com; zhaoyunfeng@jiqizhixin.com The authors of this paper are all from the team of teacher Zhang Lingming at the University of Illinois at Urbana-Champaign (UIUC), including: Steven Code repair; Deng Yinlin, fourth-year doctoral student, researcher

From RLHF to DPO to TDPO, large model alignment algorithms are already 'token-level' From RLHF to DPO to TDPO, large model alignment algorithms are already 'token-level' Jun 24, 2024 pm 03:04 PM

The AIxiv column is a column where this site publishes academic and technical content. In the past few years, the AIxiv column of this site has received more than 2,000 reports, covering top laboratories from major universities and companies around the world, effectively promoting academic exchanges and dissemination. If you have excellent work that you want to share, please feel free to contribute or contact us for reporting. Submission email: liyazhou@jiqizhixin.com; zhaoyunfeng@jiqizhixin.com In the development process of artificial intelligence, the control and guidance of large language models (LLM) has always been one of the core challenges, aiming to ensure that these models are both powerful and safe serve human society. Early efforts focused on reinforcement learning methods through human feedback (RL

Posthumous work of the OpenAI Super Alignment Team: Two large models play a game, and the output becomes more understandable Posthumous work of the OpenAI Super Alignment Team: Two large models play a game, and the output becomes more understandable Jul 19, 2024 am 01:29 AM

If the answer given by the AI ​​model is incomprehensible at all, would you dare to use it? As machine learning systems are used in more important areas, it becomes increasingly important to demonstrate why we can trust their output, and when not to trust them. One possible way to gain trust in the output of a complex system is to require the system to produce an interpretation of its output that is readable to a human or another trusted system, that is, fully understandable to the point that any possible errors can be found. For example, to build trust in the judicial system, we require courts to provide clear and readable written opinions that explain and support their decisions. For large language models, we can also adopt a similar approach. However, when taking this approach, ensure that the language model generates

A significant breakthrough in the Riemann Hypothesis! Tao Zhexuan strongly recommends new papers from MIT and Oxford, and the 37-year-old Fields Medal winner participated A significant breakthrough in the Riemann Hypothesis! Tao Zhexuan strongly recommends new papers from MIT and Oxford, and the 37-year-old Fields Medal winner participated Aug 05, 2024 pm 03:32 PM

Recently, the Riemann Hypothesis, known as one of the seven major problems of the millennium, has achieved a new breakthrough. The Riemann Hypothesis is a very important unsolved problem in mathematics, related to the precise properties of the distribution of prime numbers (primes are those numbers that are only divisible by 1 and themselves, and they play a fundamental role in number theory). In today's mathematical literature, there are more than a thousand mathematical propositions based on the establishment of the Riemann Hypothesis (or its generalized form). In other words, once the Riemann Hypothesis and its generalized form are proven, these more than a thousand propositions will be established as theorems, which will have a profound impact on the field of mathematics; and if the Riemann Hypothesis is proven wrong, then among these propositions part of it will also lose its effectiveness. New breakthrough comes from MIT mathematics professor Larry Guth and Oxford University

The first Mamba-based MLLM is here! Model weights, training code, etc. have all been open source The first Mamba-based MLLM is here! Model weights, training code, etc. have all been open source Jul 17, 2024 am 02:46 AM

The AIxiv column is a column where this site publishes academic and technical content. In the past few years, the AIxiv column of this site has received more than 2,000 reports, covering top laboratories from major universities and companies around the world, effectively promoting academic exchanges and dissemination. If you have excellent work that you want to share, please feel free to contribute or contact us for reporting. Submission email: liyazhou@jiqizhixin.com; zhaoyunfeng@jiqizhixin.com. Introduction In recent years, the application of multimodal large language models (MLLM) in various fields has achieved remarkable success. However, as the basic model for many downstream tasks, current MLLM consists of the well-known Transformer network, which

arXiv papers can be posted as 'barrage', Stanford alphaXiv discussion platform is online, LeCun likes it arXiv papers can be posted as 'barrage', Stanford alphaXiv discussion platform is online, LeCun likes it Aug 01, 2024 pm 05:18 PM

cheers! What is it like when a paper discussion is down to words? Recently, students at Stanford University created alphaXiv, an open discussion forum for arXiv papers that allows questions and comments to be posted directly on any arXiv paper. Website link: https://alphaxiv.org/ In fact, there is no need to visit this website specifically. Just change arXiv in any URL to alphaXiv to directly open the corresponding paper on the alphaXiv forum: you can accurately locate the paragraphs in the paper, Sentence: In the discussion area on the right, users can post questions to ask the author about the ideas and details of the paper. For example, they can also comment on the content of the paper, such as: "Given to

Axiomatic training allows LLM to learn causal reasoning: the 67 million parameter model is comparable to the trillion parameter level GPT-4 Axiomatic training allows LLM to learn causal reasoning: the 67 million parameter model is comparable to the trillion parameter level GPT-4 Jul 17, 2024 am 10:14 AM

Show the causal chain to LLM and it learns the axioms. AI is already helping mathematicians and scientists conduct research. For example, the famous mathematician Terence Tao has repeatedly shared his research and exploration experience with the help of AI tools such as GPT. For AI to compete in these fields, strong and reliable causal reasoning capabilities are essential. The research to be introduced in this article found that a Transformer model trained on the demonstration of the causal transitivity axiom on small graphs can generalize to the transitive axiom on large graphs. In other words, if the Transformer learns to perform simple causal reasoning, it may be used for more complex causal reasoning. The axiomatic training framework proposed by the team is a new paradigm for learning causal reasoning based on passive data, with only demonstrations

See all articles