Yuriy Nevmyvaka
2026
AHA: Aligning Large Audio-Language Models for Reasoning Hallucinations via Counterfactual Hard Negatives
Yanxi Chen | Wenhui Zhu | Xiwen Chen | Zhipeng Wang | Xin Li | Peijie Qiu | Hao Wang | Xuanzhao Dong | Yujian Xiong | Anderson Schneider | Yuriy Nevmyvaka | Yalin Wang
Findings of the Association for Computational Linguistics: ACL 2026
Yanxi Chen | Wenhui Zhu | Xiwen Chen | Zhipeng Wang | Xin Li | Peijie Qiu | Hao Wang | Xuanzhao Dong | Yujian Xiong | Anderson Schneider | Yuriy Nevmyvaka | Yalin Wang
Findings of the Association for Computational Linguistics: ACL 2026
Although Large Audio-Language Models (LALMs) deliver state-of-the-art (SOTA) performance, they frequently suffer from hallucinations, e.g., generating text not grounded in the audio input. We analyze these grounding failures and identify a distinct taxonomy: Event Omission, False Event Identity, Temporal Relation Error, and Quantitative Temporal Error. To address this, we introduce the AHA (Audio Hallucination Alignment) framework. By leveraging counterfactual hard negative mining, our pipeline constructs a high-quality preference dataset that forces models to distinguish strict acoustic evidence from linguistically plausible fabrications. Additionally, we establish AHA-Eval, a diagnostic benchmark designed to rigorously test these fine-grained reasoning capabilities. We apply this data to align Qwen2.5-Omni. The resulting model, Qwen-Audio-AHA, achieves a 13.7% improvement on AHA-Eval. Crucially, this benefit generalizes beyond our diagnostic set. Our model shows substantial gains on public benchmarks, including 1.3% on MMAU-Test and 1.6% on MMAR, outperforming latest SOTA methods.
2025
Scaling Laws and Efficient Inference for Ternary Language Models
Tejas Vaidhya | Ayush Kaushal | Vineet Jain | Francis Couture-Harpin | Prashant Shishodia | Majid Behbahani | Yuriy Nevmyvaka | Irina Rish
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Tejas Vaidhya | Ayush Kaushal | Vineet Jain | Francis Couture-Harpin | Prashant Shishodia | Majid Behbahani | Yuriy Nevmyvaka | Irina Rish
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models (LLMs) are increasingly used across research and industry applications, yet their inference efficiency remains a significant challenge. As the computational power of modern GPU architectures continuously improves, their memory bandwidth and capacity have not scaled proportionally, creating a critical bottleneck during inference. To address this, we investigate ternary language models (TriLMs) that employ quantization-aware training to significantly reduce memory requirements. We first analyze the scalability of TriLMs by conducting a scaling law analysis, revealing that TriLMs benefit more from increasing training data than from scaling model parameters. Based on this observation, we introduce TriTera, an open suite of TriLMs trained on up to 1.2 trillion tokens, demonstrating sustained performance gains at scale. Furthermore, to improve inference efficiency, we propose novel 2-bit and 1.6-bit packing schemes for ternary weights, which demonstrate accelerated inference across various CPU architectures. Building on the 2-bit packing, we develop a GPU kernel called TriRun that accelerates end-to-end model inference by up to 5 × compared to floating-point baselines. To encourage further exploration and development of TriLMs, we will release the TriTera suite and TriRun inference kernels. Overall, our work lays the foundation for building and deploying efficient LLMs, providing a valuable resource for the research community.