Ahmed A Aly
2026
Aligning Paralinguistic Understanding and Generation in Speech LLMs via Multi-Task Reinforcement Learning
Minseok Kim | Jingxiang Chen | Seong-Gyun Leem | Yin Huang | Rashi Rungta | Zhicheng Ouyang | Haibin Wu | Surya Teja Appini | Ankur Bansal | Yang Bai | Yue Liu | Florian Metze | Ahmed A Aly | Anuj Kumar | Ariya Rastrow | Zhaojiang Lin
Proceedings of the 19th Conference of the European Chapter of the Association for Computational Linguistics (Volume 5: Industry Track)
Minseok Kim | Jingxiang Chen | Seong-Gyun Leem | Yin Huang | Rashi Rungta | Zhicheng Ouyang | Haibin Wu | Surya Teja Appini | Ankur Bansal | Yang Bai | Yue Liu | Florian Metze | Ahmed A Aly | Anuj Kumar | Ariya Rastrow | Zhaojiang Lin
Proceedings of the 19th Conference of the European Chapter of the Association for Computational Linguistics (Volume 5: Industry Track)
Speech large language models (LLMs) observe paralinguistic cues such as prosody, emotion, and non-verbal sounds—crucial for intent understanding. However, leveraging these cues faces challenges: limited training data, annotation difficulty, and models exploiting lexical shortcuts over paralinguistic signals. We propose multi-task reinforcement learning (RL) with chain-of-thought prompting that elicits explicit affective reasoning. To address data scarcity, we introduce a paralinguistics-aware speech LLM (PALLM) that jointly optimizes sentiment classification from audio and paralinguistics-aware response generation via a two-stage pipeline. Experiments demonstrate that our approach improves paralinguistics understanding over both supervised baselines and strong proprietary models (Gemini-2.5-Pro, GPT-4o-audio), by 8-12% on Expresso, IEMOCAP, and RAVDESS. The results show that modeling paralinguistic reasoning with multi-task RL is crucial for building emotionally intelligent speech LLMs.
2024
PRoDeliberation: Parallel Robust Deliberation for End-to-End Spoken Language Understanding
Trang Le | Daniel Lazar | Suyoun Kim | Shan Jiang | Duc Le | Adithya Sagar | Aleksandr Livshits | Ahmed A Aly | Akshat Shrivastava
Findings of the Association for Computational Linguistics: EMNLP 2024
Trang Le | Daniel Lazar | Suyoun Kim | Shan Jiang | Duc Le | Adithya Sagar | Aleksandr Livshits | Ahmed A Aly | Akshat Shrivastava
Findings of the Association for Computational Linguistics: EMNLP 2024
Spoken Language Understanding (SLU) is a critical component of voice assistants; it consists of converting speech to semantic parses for task execution. Previous works have explored end-to-end models to improve the quality and robustness of SLU models with Deliberation, however these models have remained autoregressive, resulting in higher latencies. In this work we introduce PRoDeliberation, a novel method leveraging a Connectionist Temporal Classification-based decoding strategy as well as a denoising objective to train robust non-autoregressive deliberation models. We show that PRoDeliberation achieves the latency reduction of parallel decoding (2-10x improvement over autoregressive models) while retaining the ability to correct Automatic Speech Recognition (ASR) mistranscriptions of autoregressive deliberation systems. We further show that the design of the denoising training allows PRoDeliberation to overcome the limitations of small ASR devices, and we provide analysis on the necessity of each component of the system.