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Main Authors: Huang, Fuxian, Zhang, Qi, Zhai, Shaopeng, Wang, Jie, Zhang, Tianyi, Zhang, Haoran, Zhou, Ming, Liu, Yu, Qiao, Yu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.15806
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author Huang, Fuxian
Zhang, Qi
Zhai, Shaopeng
Wang, Jie
Zhang, Tianyi
Zhang, Haoran
Zhou, Ming
Liu, Yu
Qiao, Yu
author_facet Huang, Fuxian
Zhang, Qi
Zhai, Shaopeng
Wang, Jie
Zhang, Tianyi
Zhang, Haoran
Zhou, Ming
Liu, Yu
Qiao, Yu
contents With the rapid development of artificial intelligence, multimodal learning has become an important research area. For intelligent agents, the state is a crucial modality to convey precise information alongside common modalities like images, videos, and language. This becomes especially clear with the broad adoption of reinforcement learning and multimodal large language models. Nevertheless, the representation of state modality still lags in development. To this end, we propose a High-Fidelity Contrastive Language-State Pre-training (CLSP) method, which can accurately encode state information into general representations for both reinforcement learning and multimodal large language models. Specifically, we first design a pre-training task based on the classification to train an encoder with coarse-grained information. Next, we construct data pairs of states and language descriptions, utilizing the pre-trained encoder to initialize the CLSP encoder. Then, we deploy contrastive learning to train the CLSP encoder to effectively represent precise state information. Additionally, we enhance the representation of numerical information using the Random Fourier Features (RFF) method for high-fidelity mapping. Extensive experiments demonstrate the superior precision and generalization capabilities of our representation, achieving outstanding results in text-state retrieval, reinforcement learning navigation tasks, and multimodal large language model understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2409_15806
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CLSP: High-Fidelity Contrastive Language-State Pre-training for Agent State Representation
Huang, Fuxian
Zhang, Qi
Zhai, Shaopeng
Wang, Jie
Zhang, Tianyi
Zhang, Haoran
Zhou, Ming
Liu, Yu
Qiao, Yu
Artificial Intelligence
With the rapid development of artificial intelligence, multimodal learning has become an important research area. For intelligent agents, the state is a crucial modality to convey precise information alongside common modalities like images, videos, and language. This becomes especially clear with the broad adoption of reinforcement learning and multimodal large language models. Nevertheless, the representation of state modality still lags in development. To this end, we propose a High-Fidelity Contrastive Language-State Pre-training (CLSP) method, which can accurately encode state information into general representations for both reinforcement learning and multimodal large language models. Specifically, we first design a pre-training task based on the classification to train an encoder with coarse-grained information. Next, we construct data pairs of states and language descriptions, utilizing the pre-trained encoder to initialize the CLSP encoder. Then, we deploy contrastive learning to train the CLSP encoder to effectively represent precise state information. Additionally, we enhance the representation of numerical information using the Random Fourier Features (RFF) method for high-fidelity mapping. Extensive experiments demonstrate the superior precision and generalization capabilities of our representation, achieving outstanding results in text-state retrieval, reinforcement learning navigation tasks, and multimodal large language model understanding.
title CLSP: High-Fidelity Contrastive Language-State Pre-training for Agent State Representation
topic Artificial Intelligence
url https://arxiv.org/abs/2409.15806