CLJul 31, 2024

Zero-Shot Cross-Domain Dialogue State Tracking via Dual Low-Rank Adaptation

arXiv:2407.21633v126 citationsh-index: 23Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of enabling dialogue systems to adapt to new domains without manual annotation, offering an incremental improvement over existing prompt-based methods.

The paper tackles zero-shot dialogue state tracking across domains by proposing DualLoRA, a plug-and-play architecture that integrates two low-rank adaptation components for context and prompt optimization, achieving notable improvements on MultiWOZ and SGD datasets without increasing inference latency.

Zero-shot dialogue state tracking (DST) seeks to enable dialogue systems to transition to unfamiliar domains without manual annotation or extensive retraining. Prior research has approached this objective by embedding prompts into language models (LMs). Common methodologies include integrating prompts at the input layer or introducing learnable variables at each transformer layer. Nonetheless, each strategy exhibits inherent limitations. Prompts integrated at the input layer risk underutilization, with their impact potentially diminishing across successive transformer layers. Conversely, the addition of learnable variables to each layer can complicate the training process and increase inference latency. To tackle the issues mentioned above, this paper proposes Dual Low-Rank Adaptation (DualLoRA), a plug-and-play architecture designed for zero-shot DST. DualLoRA incorporates two distinct Low-Rank Adaptation (LoRA) components, targeting both dialogue context processing and prompt optimization, to ensure the comprehensive influence of prompts throughout the transformer model layers. This is achieved without incurring additional inference latency, showcasing an efficient integration into existing architectures. Through rigorous evaluation on the MultiWOZ and SGD datasets, DualLoRA demonstrates notable improvements across multiple domains, outperforming traditional baseline methods in zero-shot settings. Our code is accessible at: \url{https://github.com/suntea233/DualLoRA}.

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