2024
pdf
abs
RecMind: Large Language Model Powered Agent For Recommendation
Yancheng Wang
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Ziyan Jiang
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Zheng Chen
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Fan Yang
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Yingxue Zhou
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Eunah Cho
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Xing Fan
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Yanbin Lu
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Xiaojiang Huang
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Yingzhen Yang
Findings of the Association for Computational Linguistics: NAACL 2024
While the recommendation system (RS) has advanced significantly through deep learning, current RS approaches usually train and fine-tune models on task-specific datasets, limiting their generalizability to new recommendation tasks and their ability to leverage external knowledge due to model scale and data size constraints. Thus, we designed an LLM-powered autonomous recommender agent, RecMind, which is capable of leveraging external knowledge, utilizing tools with careful planning to provide zero-shot personalized recommendations. We propose a Self-Inspiring algorithm to improve the planning ability. At each intermediate step, the LLM “self-inspires” to consider all previously explored states to plan for the next step. This mechanism greatly improves the model’s ability to comprehend and utilize historical information in planning for recommendation. We evaluate RecMind’s performance in various recommendation scenarios. Our experiment shows that RecMind outperforms existing zero/few-shot LLM-based recommendation baseline methods in various tasks and achieves comparable performance to a fully trained recommendation model P5.
2023
pdf
abs
Graph Meets LLM: A Novel Approach to Collaborative Filtering for Robust Conversational Understanding
Zheng Chen
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Ziyan Jiang
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Fan Yang
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Eunah Cho
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Xing Fan
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Xiaojiang Huang
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Yanbin Lu
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Aram Galstyan
Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing: Industry Track
A Personalized Query Rewriting system strives to minimize defective queries to ensure robust conversational functionality by considering individual user behavior and preferences. It’s designed as a search-based system, maintaining a user index of past successful interactions with the conversational AI. However, this method faces challenges with unseen interactions, which refers to novel user interactions not covered by the user’s historical index. This paper introduces our Collaborative Query Rewriting approach, which utilizes underlying topological information to assist in rewriting defective queries arising from unseen user interactions. This approach begins by constructing a “User Feedback Interaction Graph” (FIG) using historical user-entity interactions. Subsequently, we traverse through the graph edges to establish an enhanced user index, referred to as the “collaborative user index”. This paper then further explores the use of Large Language Models (LLMs) in conjunction with graph traversal, leading to a significant increase in index coverage for unseen interactions. The effectiveness of our proposed approach has been proven through experiments on a large-scale real-world dataset and online A/B experiments.
2015
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Joint Entity Recognition and Disambiguation
Gang Luo
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Xiaojiang Huang
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Chin-Yew Lin
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Zaiqing Nie
Proceedings of the 2015 Conference on Empirical Methods in Natural Language Processing
2014
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Collective Tweet Wikification based on Semi-supervised Graph Regularization
Hongzhao Huang
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Yunbo Cao
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Xiaojiang Huang
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Heng Ji
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Chin-Yew Lin
Proceedings of the 52nd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
2011
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Named Entity Recognition in Chinese News Comments on the Web
Xiaojun Wan
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Liang Zong
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Xiaojiang Huang
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Tengfei Ma
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Houping Jia
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Yuqian Wu
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Jianguo Xiao
Proceedings of 5th International Joint Conference on Natural Language Processing
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Comparative News Summarization Using Linear Programming
Xiaojiang Huang
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Xiaojun Wan
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Jianguo Xiao
Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies