Hanting Liu
2026
MARQUIS: A Three-Stage Pipeline for Video Retrieval-Augmented Generation
Debashish Chakraborty | Dengjia Zhang | Jialiang Jin | Katherine M. Guerrerio | Hanting Liu | Hanxiang Qin | Tyler Skow | Alexander Martin | Reno Kriz | Benjamin Van Durme
Proceedings of the 2nd Workshop on Multimodal Augmented Generation via Multimodal Retrieval (MAGMaR 2026)
Debashish Chakraborty | Dengjia Zhang | Jialiang Jin | Katherine M. Guerrerio | Hanting Liu | Hanxiang Qin | Tyler Skow | Alexander Martin | Reno Kriz | Benjamin Van Durme
Proceedings of the 2nd Workshop on Multimodal Augmented Generation via Multimodal Retrieval (MAGMaR 2026)
Retrieval-augmented generation from videos requires systems to retrieve relevant audiovisual evidence from large corpora and synthesize it into coherent, attributed text. Current approaches struggle at both ends: retrieval methods fail on complex, multi-faceted queries that cannot be captured by a single embedding, while generation methods lack the high-level reasoning needed to synthesize across multiple videos and face memory constraints over long, multi-video contexts. We present MARQUIS: a three-stage pipeline that addresses these limitations through (1) query expansion, fusion, and reranking, (2) calibrated structured evidence extraction, and (3) article generation from extracted evidence, optionally controlled by an RLM. On the MAGMaR2026 shared task, we improve retrieval performance from 0.195 to 0.759 (nDCG@10). For article generation, ITER-QA-BASE improves average human score from 3.09 to 3.83 over the CAG baseline, while MARQUIS-RLM achieves a human score of 3.30 and the strongest citation recall among non-QA systems.
2024
Knowledge Fusion By Evolving Weights of Language Models
Guodong Du | Jing Li | Hanting Liu | Runhua Jiang | Shuyang Yu | Yifei Guo | Sim Kuan Goh | Ho-Kin Tang
Findings of the Association for Computational Linguistics: ACL 2024
Guodong Du | Jing Li | Hanting Liu | Runhua Jiang | Shuyang Yu | Yifei Guo | Sim Kuan Goh | Ho-Kin Tang
Findings of the Association for Computational Linguistics: ACL 2024
Fine-tuning pre-trained language models, particularly large language models, demands extensive computing resources and can result in varying performance outcomes across different domains and datasets. This paper examines the approach of integrating multiple models from diverse training scenarios into a unified model. This unified model excels across various data domains and exhibits the ability to generalize well on out-of-domain data. We propose a knowledge fusion method named Evolver, inspired by evolutionary algorithms, which does not need further training or additional training data. Specifically, our method involves aggregating the weights of different language models into a population and subsequently generating offspring models through mutation and crossover operations. These offspring models are then evaluated against their parents, allowing for the preservation of those models that show enhanced performance on development datasets. Importantly, our model evolving strategy can be seamlessly integrated with existing model merging frameworks, offering a versatile tool for model enhancement. Experimental results on mainstream language models (i.e., encoder-only, decoder-only, encoder-decoder) reveal that Evolver outperforms previous state-of-the-art models by large margins.