Natural Language Understanding (NLU) is important in today's technology as it enables machines to comprehend and process human language, leading to improved human-computer interactions and advancements in fields such as virtual assistants, chatbots, and language-based AI systems. This paper highlights the significance of advancing the field of NLU for low-resource languages. With intent detection and slot filling being crucial tasks in NLU, the widely used datasets ATIS and SNIPS have been utilized in the past. However, these datasets only cater to the English language and do not support other languages. In this work, we aim to address this gap by creating a Persian benchmark for joint intent detection and slot filling based on the ATIS dataset. To evaluate the effectiveness of our benchmark, we employ state-of-the-art methods for intent detection and slot filling.
翻译:自然语言理解(NLU)在当今的技术中十分重要,因为它使机器能够理解和处理人类语言,从而在虚拟助理、聊天机器人和基于语言的AI系统等领域改进了人与计算机的相互作用和进步。本文件强调了在低资源语言方面推进NLU领域的重要性。为了探测和填补空档是NLU的关键任务,过去曾使用过广泛使用的ATIS和SNIPS数据集。然而,这些数据集只适合英语,不支持其他语言。在这项工作中,我们的目标是通过在ATIS数据集的基础上为联合探测意图和填补空档建立一个波斯基准来弥补这一差距。为了评估我们基准的有效性,我们采用了最先进的探测意图和填补空档的方法。</s>