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Main Authors: He, Tao, Liao, Lizi, Cao, Yixin, Liu, Yuanxing, Sun, Yiheng, Chen, Zerui, Liu, Ming, Qin, Bing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.14584
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author He, Tao
Liao, Lizi
Cao, Yixin
Liu, Yuanxing
Sun, Yiheng
Chen, Zerui
Liu, Ming
Qin, Bing
author_facet He, Tao
Liao, Lizi
Cao, Yixin
Liu, Yuanxing
Sun, Yiheng
Chen, Zerui
Liu, Ming
Qin, Bing
contents Recent advancements in proactive dialogues have garnered significant attention, particularly for more complex objectives (e.g. emotion support and persuasion). Unlike traditional task-oriented dialogues, proactive dialogues demand advanced policy planning and adaptability, requiring rich scenarios and comprehensive policy repositories to develop such systems. However, existing approaches tend to rely on Large Language Models (LLMs) for user simulation and online learning, leading to biases that diverge from realistic scenarios and result in suboptimal efficiency. Moreover, these methods depend on manually defined, context-independent, coarse-grained policies, which not only incur high expert costs but also raise concerns regarding their completeness. In our work, we highlight the potential for automatically discovering policies directly from raw, real-world dialogue records. To this end, we introduce a novel dialogue policy planning framework, LDPP. It fully automates the process from mining policies in dialogue records to learning policy planning. Specifically, we employ a variant of the Variational Autoencoder to discover fine-grained policies represented as latent vectors. After automatically annotating the data with these latent policy labels, we propose an Offline Hierarchical Reinforcement Learning (RL) algorithm in the latent space to develop effective policy planning capabilities. Our experiments demonstrate that LDPP outperforms existing methods on two proactive scenarios, even surpassing ChatGPT with only a 1.8-billion-parameter LLM.
format Preprint
id arxiv_https___arxiv_org_abs_2412_14584
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Simulation-Free Hierarchical Latent Policy Planning for Proactive Dialogues
He, Tao
Liao, Lizi
Cao, Yixin
Liu, Yuanxing
Sun, Yiheng
Chen, Zerui
Liu, Ming
Qin, Bing
Computation and Language
Recent advancements in proactive dialogues have garnered significant attention, particularly for more complex objectives (e.g. emotion support and persuasion). Unlike traditional task-oriented dialogues, proactive dialogues demand advanced policy planning and adaptability, requiring rich scenarios and comprehensive policy repositories to develop such systems. However, existing approaches tend to rely on Large Language Models (LLMs) for user simulation and online learning, leading to biases that diverge from realistic scenarios and result in suboptimal efficiency. Moreover, these methods depend on manually defined, context-independent, coarse-grained policies, which not only incur high expert costs but also raise concerns regarding their completeness. In our work, we highlight the potential for automatically discovering policies directly from raw, real-world dialogue records. To this end, we introduce a novel dialogue policy planning framework, LDPP. It fully automates the process from mining policies in dialogue records to learning policy planning. Specifically, we employ a variant of the Variational Autoencoder to discover fine-grained policies represented as latent vectors. After automatically annotating the data with these latent policy labels, we propose an Offline Hierarchical Reinforcement Learning (RL) algorithm in the latent space to develop effective policy planning capabilities. Our experiments demonstrate that LDPP outperforms existing methods on two proactive scenarios, even surpassing ChatGPT with only a 1.8-billion-parameter LLM.
title Simulation-Free Hierarchical Latent Policy Planning for Proactive Dialogues
topic Computation and Language
url https://arxiv.org/abs/2412.14584