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Autori principali: Wu, Songhao, Tu, Quan, Liu, Hong, Xu, Jia, Liu, Zhongyi, Zhang, Guannan, Wang, Ran, Chen, Xiuying, Yan, Rui
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.14156
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author Wu, Songhao
Tu, Quan
Liu, Hong
Xu, Jia
Liu, Zhongyi
Zhang, Guannan
Wang, Ran
Chen, Xiuying
Yan, Rui
author_facet Wu, Songhao
Tu, Quan
Liu, Hong
Xu, Jia
Liu, Zhongyi
Zhang, Guannan
Wang, Ran
Chen, Xiuying
Yan, Rui
contents Session search involves a series of interactive queries and actions to fulfill user's complex information need. Current strategies typically prioritize sequential modeling for deep semantic understanding, overlooking the graph structure in interactions. While some approaches focus on capturing structural information, they use a generalized representation for documents, neglecting the word-level semantic modeling. In this paper, we propose Symbolic Graph Ranker (SGR), which aims to take advantage of both text-based and graph-based approaches by leveraging the power of recent Large Language Models (LLMs). Concretely, we first introduce a set of symbolic grammar rules to convert session graph into text. This allows integrating session history, interaction process, and task instruction seamlessly as inputs for the LLM. Moreover, given the natural discrepancy between LLMs pre-trained on textual corpora, and the symbolic language we produce using our graph-to-text grammar, our objective is to enhance LLMs' ability to capture graph structures within a textual format. To achieve this, we introduce a set of self-supervised symbolic learning tasks including link prediction, node content generation, and generative contrastive learning, to enable LLMs to capture the topological information from coarse-grained to fine-grained. Experiment results and comprehensive analysis on two benchmark datasets, AOL and Tiangong-ST, confirm the superiority of our approach. Our paradigm also offers a novel and effective methodology that bridges the gap between traditional search strategies and modern LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2505_14156
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unify Graph Learning with Text: Unleashing LLM Potentials for Session Search
Wu, Songhao
Tu, Quan
Liu, Hong
Xu, Jia
Liu, Zhongyi
Zhang, Guannan
Wang, Ran
Chen, Xiuying
Yan, Rui
Computer Vision and Pattern Recognition
Artificial Intelligence
Information Retrieval
Machine Learning
I.2; H.3.3
Session search involves a series of interactive queries and actions to fulfill user's complex information need. Current strategies typically prioritize sequential modeling for deep semantic understanding, overlooking the graph structure in interactions. While some approaches focus on capturing structural information, they use a generalized representation for documents, neglecting the word-level semantic modeling. In this paper, we propose Symbolic Graph Ranker (SGR), which aims to take advantage of both text-based and graph-based approaches by leveraging the power of recent Large Language Models (LLMs). Concretely, we first introduce a set of symbolic grammar rules to convert session graph into text. This allows integrating session history, interaction process, and task instruction seamlessly as inputs for the LLM. Moreover, given the natural discrepancy between LLMs pre-trained on textual corpora, and the symbolic language we produce using our graph-to-text grammar, our objective is to enhance LLMs' ability to capture graph structures within a textual format. To achieve this, we introduce a set of self-supervised symbolic learning tasks including link prediction, node content generation, and generative contrastive learning, to enable LLMs to capture the topological information from coarse-grained to fine-grained. Experiment results and comprehensive analysis on two benchmark datasets, AOL and Tiangong-ST, confirm the superiority of our approach. Our paradigm also offers a novel and effective methodology that bridges the gap between traditional search strategies and modern LLMs.
title Unify Graph Learning with Text: Unleashing LLM Potentials for Session Search
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Information Retrieval
Machine Learning
I.2; H.3.3
url https://arxiv.org/abs/2505.14156