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Task-Driven Discrete Representation Learning

Task-Driven Discrete Representation Learning

来源:Arxiv_logoArxiv
英文摘要

In recent years, deep discrete representation learning (DRL) has achieved significant success across various domains. Most DRL frameworks (e.g., the widely used VQ-VAE and its variants) have primarily focused on generative settings, where the quality of a representation is implicitly gauged by the fidelity of its generation. In fact, the goodness of a discrete representation remain ambiguously defined across the literature. In this work, we adopt a practical approach that examines DRL from a task-driven perspective. We propose a unified framework that explores the usefulness of discrete features in relation to downstream tasks, with generation naturally viewed as one possible application. In this context, the properties of discrete representations as well as the way they benefit certain tasks are also relatively understudied. We therefore provide an additional theoretical analysis of the trade-off between representational capacity and sample complexity, shedding light on how discrete representation utilization impacts task performance. Finally, we demonstrate the flexibility and effectiveness of our framework across diverse applications.

Tung-Long Vuong

计算技术、计算机技术

Tung-Long Vuong.Task-Driven Discrete Representation Learning[EB/OL].(2025-06-13)[2025-07-21].https://arxiv.org/abs/2506.11511.点此复制

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