Formulating information retrieval as a variant of generative modeling, specifically using autoregressive models to generate relevant identifiers for a given query, has recently attracted considerable attention. However, its application to personalized sticker retrieval remains largely unexplored and presents unique challenges: existing relevance-based generative retrieval methods typically lack personalization, leading to a mismatch between diverse user expectations and the retrieved results. To address this gap, we propose PEARL, a novel generative framework for personalized sticker retrieval, and make two key contributions: (i) To encode user-specific sticker preferences, we design a representation learning model to learn discriminative user representations. It is trained on three prediction tasks that leverage personal information and click history; and (ii) To generate stickers aligned with a user's query intent, we propose a novel intent-aware learning objective that prioritizes stickers associated with higher-ranked intents. Empirical results from both offline evaluations and online tests demonstrate that PEARL significantly outperforms state-of-the-art methods.
翻译:将信息检索构建为生成式建模的一种变体,特别是利用自回归模型为给定查询生成相关标识符,近来已引起广泛关注。然而,其在个性化贴纸检索中的应用仍鲜有探索,并面临独特挑战:现有的基于相关性的生成式检索方法通常缺乏个性化,导致多样化的用户期望与检索结果之间不匹配。为填补这一空白,我们提出了PEARL——一种用于个性化贴纸检索的新型生成式框架,并做出两项关键贡献:(i)为编码用户特定的贴纸偏好,我们设计了一个表示学习模型来学习具有区分性的用户表示。该模型通过利用个人信息和点击历史的三个预测任务进行训练;(ii)为生成与用户查询意图相符的贴纸,我们提出了一种新颖的意图感知学习目标,该目标优先考虑与更高排名意图相关联的贴纸。离线评估与在线测试的实证结果表明,PEARL显著优于现有最先进方法。