CLMay 5, 2024

A Two-Stage Prediction-Aware Contrastive Learning Framework for Multi-Intent NLU

arXiv:2405.02925v181 citationsh-index: 31LREC
Originality Incremental advance
AI Analysis

This work addresses multi-intent NLU, a domain-specific problem in natural language processing, with incremental improvements over existing methods.

The paper tackles the challenge of multi-intent natural language understanding by proposing a two-stage prediction-aware contrastive learning framework that leverages shared intent information, achieving superior performance over three baselines on three datasets in both low-data and full-data scenarios.

Multi-intent natural language understanding (NLU) presents a formidable challenge due to the model confusion arising from multiple intents within a single utterance. While previous works train the model contrastively to increase the margin between different multi-intent labels, they are less suited to the nuances of multi-intent NLU. They ignore the rich information between the shared intents, which is beneficial to constructing a better embedding space, especially in low-data scenarios. We introduce a two-stage Prediction-Aware Contrastive Learning (PACL) framework for multi-intent NLU to harness this valuable knowledge. Our approach capitalizes on shared intent information by integrating word-level pre-training and prediction-aware contrastive fine-tuning. We construct a pre-training dataset using a word-level data augmentation strategy. Subsequently, our framework dynamically assigns roles to instances during contrastive fine-tuning while introducing a prediction-aware contrastive loss to maximize the impact of contrastive learning. We present experimental results and empirical analysis conducted on three widely used datasets, demonstrating that our method surpasses the performance of three prominent baselines on both low-data and full-data scenarios.

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