Shift-Reduce Task-Oriented Semantic Parsing with Stack-Transformers

IF 4.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation Pub Date : 2024-08-22 DOI:10.1007/s12559-024-10339-4
Daniel Fernández-González
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Abstract

Intelligent voice assistants, such as Apple Siri and Amazon Alexa, are widely used nowadays. These task-oriented dialogue systems require a semantic parsing module in order to process user utterances and understand the action to be performed. This semantic parsing component was initially implemented by rule-based or statistical slot-filling approaches for processing simple queries; however, the appearance of more complex utterances demanded the application of shift-reduce parsers or sequence-to-sequence models. Although shift-reduce approaches were initially considered the most promising option, the emergence of sequence-to-sequence neural systems has propelled them to the forefront as the highest-performing method for this particular task. In this article, we advance the research on shift-reduce semantic parsing for task-oriented dialogue. We implement novel shift-reduce parsers that rely on Stack-Transformers. This framework allows to adequately model transition systems on the transformer neural architecture, notably boosting shift-reduce parsing performance. Furthermore, our approach goes beyond the conventional top-down algorithm: we incorporate alternative bottom-up and in-order transition systems derived from constituency parsing into the realm of task-oriented parsing. We extensively test our approach on multiple domains from the Facebook TOP benchmark, improving over existing shift-reduce parsers and state-of-the-art sequence-to-sequence models in both high-resource and low-resource settings. We also empirically prove that the in-order algorithm substantially outperforms the commonly used top-down strategy. Through the creation of innovative transition systems and harnessing the capabilities of a robust neural architecture, our study showcases the superiority of shift-reduce parsers over leading sequence-to-sequence methods on the main benchmark.

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利用堆栈转换器进行移位-缩减任务导向语义解析
苹果 Siri 和亚马逊 Alexa 等智能语音助手如今已被广泛使用。这些以任务为导向的对话系统需要一个语义解析模块,以便处理用户语音并理解要执行的操作。这种语义解析组件最初是通过基于规则或统计槽填充的方法来实现的,用于处理简单的查询;然而,更复杂语句的出现要求应用移位还原解析器或序列到序列模型。虽然移位还原法最初被认为是最有前途的选择,但序列到序列神经系统的出现将其推向了前沿,成为这一特定任务中性能最好的方法。在本文中,我们推进了针对任务导向对话的移位还原语义解析研究。我们依靠堆栈转换器(Stack-Transformers)实现了新颖的移位还原解析器。这一框架可以在转换器神经架构上对转换系统进行充分建模,从而显著提高移位还原解析的性能。此外,我们的方法还超越了传统的自上而下算法:我们将从选区解析中衍生出来的自下而上和无序转换系统纳入了任务导向解析领域。我们在 Facebook TOP 基准的多个领域对我们的方法进行了广泛测试,在高资源和低资源环境下,我们的方法都优于现有的移位还原解析器和最先进的序列到序列模型。我们还通过经验证明,无序算法大大优于常用的自上而下策略。通过创建创新的转换系统和利用稳健神经架构的能力,我们的研究展示了移位还原解析器在主要基准上优于领先的序列到序列方法。
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来源期刊
Cognitive Computation
Cognitive Computation COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-NEUROSCIENCES
CiteScore
9.30
自引率
3.70%
发文量
116
审稿时长
>12 weeks
期刊介绍: Cognitive Computation is an international, peer-reviewed, interdisciplinary journal that publishes cutting-edge articles describing original basic and applied work involving biologically-inspired computational accounts of all aspects of natural and artificial cognitive systems. It provides a new platform for the dissemination of research, current practices and future trends in the emerging discipline of cognitive computation that bridges the gap between life sciences, social sciences, engineering, physical and mathematical sciences, and humanities.
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