MarkTechPost@AI 01月01日
Meta AI Introduces a Paradigm Called ‘Preference Discerning’ Supported by a Generative Retrieval Model Named ‘Mender’
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Meta AI 提出了偏好辨别范式,并推出了名为 Mender 的生成检索模型,旨在解决传统序列推荐系统中的挑战。Mender 通过利用大型语言模型 (LLM) 从用户评论和商品数据中提取偏好,并将其转化为可操作的见解,从而实现基于自然语言的用户偏好推荐。该模型采用多模态方法,结合语义 ID 和自然语言描述来理解用户偏好,并能动态适应用户偏好,同时引入基准来评估偏好辨别效果。Mender 在多个数据集上表现出显著的性能提升,为个性化推荐领域带来了新的发展方向。

💡Mender 引入偏好辨别范式,通过自然语言明确表达用户偏好,克服传统推荐系统依赖历史交互的局限。

📚Mender 利用大型语言模型(LLMs)从用户评论和商品数据中提取偏好,并转化为可操作的见解,实现更精准的个性化推荐。

🖼️Mender 采用多模态方法,结合语义ID和自然语言描述,在语义层面和文本层面捕捉商品信息,更全面地理解用户偏好。

⚙️Mender 的两个变体 MenderTok 和 MenderEmb,分别支持微调和高效训练,适应不同场景需求。

📈在 Amazon Beauty 和 Steam 等数据集上,Mender 展现出显著的性能提升,尤其在偏好推荐、情感追踪和细粒度控制方面表现突出。

Sequential recommendation systems play a key role in creating personalized user experiences across various platforms, but they also face persistent challenges. Traditionally, these systems rely on users’ interaction histories to predict preferences, often leading to generic recommendations. While integrating auxiliary data such as item descriptions or intent predictions can provide some improvement, these systems struggle to adapt to user preferences in real-time. Additionally, the absence of comprehensive benchmarks for evaluating preference discernment limits the ability to assess their effectiveness in diverse scenarios.

To tackle these issues, Meta AI introduces a paradigm called preference discerning, supported by a generative retrieval model named Mender (Multimodal Preference Discerner). This approach explicitly conditions recommendation systems on user preferences expressed in natural language. Leveraging large language models (LLMs), the framework extracts preferences from reviews and item-specific data, transforming them into actionable insights.

Mender captures items at two levels of abstraction: semantic IDs and natural language descriptions. This multimodal approach ensures a more nuanced understanding of user preferences. By combining preference approximation—deriving preferences from user data—with preference conditioning, Mender allows systems to dynamically adapt to specific user preferences. Additionally, Meta AI has introduced a benchmark that evaluates preference discerning across five dimensions: preference-based recommendation, sentiment following, fine- and coarse-grained steering, and history consolidation, setting a new standard for evaluating personalization.

Technical Features and Advantages of Mender

Mender’s design focuses on integrating user preferences with interaction data seamlessly. It uses pre-trained language models to encode preferences and interaction histories in natural language. Its cross-attention mechanisms enable the decoder to predict semantic IDs for recommended items. Mender comes in two variants:

Key benefits of Mender include:

Results and Insights

Meta AI’s evaluation of Mender highlights its significant performance improvements on datasets such as Amazon reviews and Steam. For instance:

Conclusion

Meta AI’s preference discerning paradigm offers a fresh perspective on sequential recommendation systems, focusing on explicit user preferences articulated in natural language. By integrating LLMs, multimodal representations, and a robust benchmark, this approach improves personalization while providing a framework for future development. With plans to open-source the underlying code and benchmarks, this work has the potential to benefit a broad range of applications, advancing the field of personalized recommendations.


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偏好辨别 Mender 序列推荐 大型语言模型 个性化推荐
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