CLOct 15, 2025

DROID: Dual Representation for Out-of-Scope Intent Detection

arXiv:2510.14110v1h-index: 12
Originality Incremental advance
AI Analysis

This addresses a key challenge in task-oriented dialogue systems for improving intent recognition reliability, though it is incremental as it builds on existing encoder methods.

The paper tackled the problem of detecting out-of-scope user intents in dialogue systems by proposing DROID, a dual-encoder framework that achieved macro-F1 improvements of 6-15% for known intents and 8-20% for out-of-scope intents across benchmarks.

Detecting out-of-scope (OOS) user utterances remains a key challenge in task-oriented dialogue systems and, more broadly, in open-set intent recognition. Existing approaches often depend on strong distributional assumptions or auxiliary calibration modules. We present DROID (Dual Representation for Out-of-Scope Intent Detection), a compact end-to-end framework that combines two complementary encoders -- the Universal Sentence Encoder (USE) for broad semantic generalization and a domain-adapted Transformer-based Denoising Autoencoder (TSDAE) for domain-specific contextual distinctions. Their fused representations are processed by a lightweight branched classifier with a single calibrated threshold that separates in-domain and OOS intents without post-hoc scoring. To enhance boundary learning under limited supervision, DROID incorporates both synthetic and open-domain outlier augmentation. Despite using only 1.5M trainable parameters, DROID consistently outperforms recent state-of-the-art baselines across multiple intent benchmarks, achieving macro-F1 improvements of 6--15% for known and 8--20% for OOS intents, with the most significant gains in low-resource settings. These results demonstrate that dual-encoder representations with simple calibration can yield robust, scalable, and reliable OOS detection for neural dialogue systems.

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