PARAN: Persona-Augmented Review ANswering system on Food Delivery Review Dataset
By: Moonsoo Park, Jeongseok Yun, Bohyung Kim
Potential Business Impact:
Makes online reviews sound like they're written by real people.
Personalized review response generation presents a significant challenge in domains where user information is limited, such as food delivery platforms. While large language models (LLMs) offer powerful text generation capabilities, they often produce generic responses when lacking contextual user data, reducing engagement and effectiveness. In this work, we propose a two-stage prompting framework that infers both explicit (e.g., user-stated preferences) and implicit (e.g., demographic or stylistic cues) personas directly from short review texts. These inferred persona attributes are then incorporated into the response generation prompt to produce user-tailored replies. To encourage diverse yet faithful generations, we adjust decoding temperature during inference. We evaluate our method using a real-world dataset collected from a Korean food delivery app, and assess its impact on precision, diversity, and semantic consistency. Our findings highlight the effectiveness of persona-augmented prompting in enhancing the relevance and personalization of automated responses without requiring model fine-tuning.
Similar Papers
Persona-Aware Alignment Framework for Personalized Dialogue Generation
Computation and Language
Makes chatbots talk like specific people.
Using AI for User Representation: An Analysis of 83 Persona Prompts
Human-Computer Interaction
Creates computer characters for user studies.
PersonaFeedback: A Large-scale Human-annotated Benchmark For Personalization
Computation and Language
Tests if AI can give personalized answers.