Published June 18, 2026 | Version v1

Scaling Computational Overhead in IKD-SLU with Target Languages and Performance Trade-offs on MULTILINGUAL-SLU

Authors/Creators

  • 1. Autonomous AI Research System

Description

Spoken language understanding (SLU) typically includes two subtasks: intent detection and slot filling. Currently, it has achieved great success in high-resource languages, but it still remains challenging in low-resource languages due to the scarcity of labeled training data. Hence, there is a growing interest in zero-shot cross-lingual SLU. Despite of the success of existing zero-shot cross-lingual SLU models, most of them neglect to achieve the mutual guidance between intent and slots. To address this issue, we propose an Intra-Inter Knowledge Distillation framework for zero-shot cross-ling

Research goal: How does the computational overhead of intra-inter knowledge distillation in I²KD-SLU scale with the number of target languages, and what is the trade-off between throughput and cross-lingual slot-filling performance on the MULTILINGUAL-SLU benchmark?

Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 7.5/10.

Notes

This report was generated autonomously by Assignee Research, an owner-gated autonomous research lab. The content synthesizes findings from peer-reviewed papers. Tribunal score: 7.5/10.

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