Challenge: Especially in the household domain, robots may become indispensable helpers by overtaking tedious tasks, e.g. keeping the place tidy.
Approach: They propose a conversational approach for explicitly collecting personal user information using natural dialogue.
Outcome: The proposed approach is compared to a baseline dialogue strategy for interactive personalization and has shown that it is friendlier.

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Challenge: Existing dialogue models struggle to interpret context accurately due to irrelevant or misclassified knowledge, limiting their effectiveness in real-world scenarios.
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Target-oriented Proactive Dialogue Systems with Personalization: Problem Formulation and Dataset Curation (2023.emnlp-main)

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Challenge: a recent study defines a conversation target from the system side to proactively steer conversations toward predefined targets or accomplish specific system-side goals.
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RECAP: Retrieval-Enhanced Context-Aware Prefix Encoder for Personalized Dialogue Response Generation (2023.acl-long)

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Challenge: Existing approaches to personalized dialogue generation rely on dialogue data paired with user traits, profiles or persona description sentences.
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Persuasion for Good: Towards a Personalized Persuasive Dialogue System for Social Good (P19-1)

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Challenge: Persuasion agents are a form of communication that can be used to change people's opinions and actions for social good.
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Challenge: a novel AI-empowered chat bot for learning as conversation can be applied to various domains without in-domain dialogue data.
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A Textual Dataset for Situated Proactive Response Selection (2023.acl-long)

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Challenge: Recent data-driven conversational models can return fluent, consistent, and informative responses to many kinds of requests and utterances in task-oriented scenarios.
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ProsocialDialog: A Prosocial Backbone for Conversational Agents (2022.emnlp-main)

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Challenge: Existing dialogue systems fail to respond properly to potentially unsafe user utterances . existing systems either ignore or passively agree with unsafe content .
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Leveraging Implicit Feedback from Deployment Data in Dialogue (2024.eacl-short)

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Challenge: Xu et al., 2023) and Bai ed., 2019) use crowdworkers to collect signals from natural dialogue episodes.
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Personalized Topic Selection Model for Topic-Grounded Dialogue (2024.findings-acl)

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Recent Trends in Personalized Dialogue Generation: A Review of Datasets, Methodologies, and Evaluations (2024.lrec-main)

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Challenge: Personalization is a multifaceted process that requires multiple definitions and varies between individuals.
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