HiD-VAE: Interpretable Generative Recommendation via Hierarchical and Disentangled Semantic IDs
Dengzhao Fang, Jingtong Gao, Chengcheng Zhu, Yu Li, Xiangyu Zhao, Yi Chang

TL;DR
HiD-VAE introduces a hierarchical, disentangled ID learning framework for generative recommendation, improving interpretability, diversity, and accuracy by aligning codes with item tags and reducing ID collisions.
Contribution
The paper presents a novel hierarchical and disentangled ID learning method that enhances interpretability and reduces ID collisions in generative recommender systems.
Findings
Outperforms state-of-the-art methods on three benchmarks.
Provides interpretable hierarchical semantic IDs.
Increases recommendation diversity and accuracy.
Abstract
Recommender systems are indispensable for helping users navigate the immense item catalogs of modern online platforms. Recently, generative recommendation has emerged as a promising paradigm, unifying the conventional retrieve-and-rank pipeline into an end-to-end model capable of dynamic generation. However, existing generative methods are fundamentally constrained by their unsupervised tokenization, which generates semantic IDs suffering from two critical flaws: (1) they are semantically flat and uninterpretable, lacking a coherent hierarchy, and (2) they are prone to representation entanglement (i.e., ``ID collisions''), which harms recommendation accuracy and diversity. To overcome these limitations, we propose HiD-VAE, a novel framework that learns hierarchically disentangled item representations through two core innovations. First, HiD-VAE pioneers a hierarchically-supervised…
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