论文标题
使用概念激活向量发现推荐系统中软属性的个性化语义
Discovering Personalized Semantics for Soft Attributes in Recommender Systems using Concept Activation Vectors
论文作者
论文摘要
交互式推荐系统已成为一种有希望的范式,以克服传统推荐系统使用的原始用户反馈的局限性(例如,点击,项目消耗,评分)。它们允许用户以更丰富的方式表达意图,偏好,约束和上下文,通常使用自然语言(包括搜索和对话)。需要更多的研究来找到使用此反馈的最有效方法。一个挑战是从通常用于描述所需项目的开放式术语或属性中推断出用户的语义意图,并使用它来完善建议结果。利用概念激活向量(CAVS)[26]是一种最近开发的用于机器学习模型可解释性的方法,我们开发了一个框架来学习一种表示此类属性语义的表示,并将它们与建议系统中的用户偏好和行为联系起来。我们方法的一个新颖特征是它可以区分客观和主观属性(既是学位和意义的主观性)的能力,并将不同的主观属性感官与不同的用户联系起来。我们在合成和现实世界数据集上证明了我们的CAV表示不仅可以准确地解释用户的主观语义,而且还可以通过交互式项目批评来改善建议。
Interactive recommender systems have emerged as a promising paradigm to overcome the limitations of the primitive user feedback used by traditional recommender systems (e.g., clicks, item consumption, ratings). They allow users to express intent, preferences, constraints, and contexts in a richer fashion, often using natural language (including faceted search and dialogue). Yet more research is needed to find the most effective ways to use this feedback. One challenge is inferring a user's semantic intent from the open-ended terms or attributes often used to describe a desired item, and using it to refine recommendation results. Leveraging concept activation vectors (CAVs) [26], a recently developed approach for model interpretability in machine learning, we develop a framework to learn a representation that captures the semantics of such attributes and connects them to user preferences and behaviors in recommender systems. One novel feature of our approach is its ability to distinguish objective and subjective attributes (both subjectivity of degree and of sense), and associate different senses of subjective attributes with different users. We demonstrate on both synthetic and real-world data sets that our CAV representation not only accurately interprets users' subjective semantics, but can also be used to improve recommendations through interactive item critiquing.