语言理解领域专家的混合:模块化、任务性能和内存权衡的分析

Benjamin Kleiner, Jack G. M. FitzGerald, Haidar Khan, Gohkan Tur
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引用次数: 0

摘要

大规模机器学习模型的局限性之一是,在部署之后,如果没有大量的重新培训成本,它们很难进行调整。在本文中,我们关注的是NLU和虚拟助理系统需要不断更新自己,以支持新的功能。具体来说,我们考虑了意图分类(IC)和插槽填充(SF)任务,这是处理用户与虚拟助手交互的基础。我们研究了具有不同模块化程度的六种不同架构,以便深入了解为灵活更新而设计模型对性能的影响。我们在SLURP数据集上的实验,经过修改以模拟随时间增加新意图的真实世界经验,表明单个密集模型与单个领域模型相比平均提高2.5 - 3.5分,但随着新意图的加入,中位数下降0.4 - 1.1分。我们提出了一个基于混合专家的混合系统,该系统在精确匹配精度方面的表现在密集模型的2.1点以内,同时随着时间的推移提高了未触及域的中位数性能,或者在最坏的情况下只降低了0.1点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixture of Domain Experts for Language Understanding: an Analysis of Modularity, Task Performance, and Memory Tradeoffs
One of the limitations of large-scale machine learning models is that they are difficult to adjust after deployment without significant re-training costs. In this paper, we focus on NLU and the needs of virtual assistant systems to continually update themselves through time to support new functionality. Specifically, we consider the tasks of intent classification (IC) and slot filling (SF), which are fundamental to processing user interaction with virtual assistants. We studied six different architectures with varying degrees of modularity in order to gain insights into the performance implications of designing models for flexible updates through time. Our experiments on the SLURP dataset, modified to simulate the real-world experience of adding new intents over time, show that a single dense model yields 2.5 — 3.5 points of average improvement versus individual domain models, but suffers a median degradation of 0.4 — 1.1 points as the new intents are incorporated. We present a mixture-of-experts based hybrid system that performs within 2.1 points of the dense model in exact match accuracy while either improving median performance for untouched domains through time or only degrading by 0.1 points at worst.
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