基于语言无关的虚拟助手平台意图分类基准

Gengyu Wang, Cheng Qian, Lin Pan, Haode Qi, L. Kunc, Saloni Potdar
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引用次数: 2

摘要

当前的虚拟助理(VA)平台受限于它们支持的语言数量有限。每个组件,如标记器和意图分类器,都是为这些复杂平台中的特定语言设计的。因此,在这样的平台上支持一种新语言是一项资源密集型的操作,需要昂贵的重新培训和重新设计。在本文中,我们提出了一个评估与语言无关的意图分类的基准,这是VA平台最关键的组成部分。为了确保基准测试具有挑战性和全面性,我们包括29个公共和内部数据集,涵盖10种低资源语言,并在考虑准确性和训练时间的情况下评估各种训练和测试设置。基准测试结果表明,Watson Assistant在7个商业VA平台和预训练的多语言语言模型(LMs)中表现出接近最佳的准确率和最佳的准确率-训练时间权衡。
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Benchmarking Language-agnostic Intent Classification for Virtual Assistant Platforms
Current virtual assistant (VA) platforms are beholden to the limited number of languages they support. Every component, such as the tokenizer and intent classifier, is engineered for specific languages in these intricate platforms. Thus, supporting a new language in such platforms is a resource-intensive operation requiring expensive re-training and re-designing. In this paper, we propose a benchmark for evaluating language-agnostic intent classification, the most critical component of VA platforms. To ensure the benchmarking is challenging and comprehensive, we include 29 public and internal datasets across 10 low-resource languages and evaluate various training and testing settings with consideration of both accuracy and training time. The benchmarking result shows that Watson Assistant, among 7 commercial VA platforms and pre-trained multilingual language models (LMs), demonstrates close-to-best accuracy with the best accuracy-training time trade-off.
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Zero-shot cross-lingual open domain question answering Benchmarking Language-agnostic Intent Classification for Virtual Assistant Platforms An Annotated Dataset and Automatic Approaches for Discourse Mode Identification in Low-resource Bengali Language Complex Word Identification in Vietnamese: Towards Vietnamese Text Simplification
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