Text Modality
Text modality research explores how textual information can be effectively integrated with other data modalities (e.g., images, audio, video) to improve the performance and capabilities of AI models. Current research focuses on developing multimodal models using transformer architectures and diffusion models, often incorporating techniques like prompt tuning and meta-learning to enhance controllability and generalization. This work is significant because it enables more sophisticated AI systems capable of understanding and generating complex information across various data types, with applications ranging from improved medical diagnosis to more realistic virtual environments.
Papers
Survey of Cultural Awareness in Language Models: Text and Beyond
Siddhesh Pawar, Junyeong Park, Jiho Jin, Arnav Arora, Junho Myung, Srishti Yadav, Faiz Ghifari Haznitrama, Inhwa Song, Alice Oh, Isabelle Augenstein
Semantic Enrichment of the Quantum Cascade Laser Properties in Text- A Knowledge Graph Generation Approach
Deperias Kerre, Anne Laurent, Kenneth Maussang, Dickson Owuor
Not All LLM-Generated Data Are Equal: Rethinking Data Weighting in Text Classification
Hsun-Yu Kuo, Yin-Hsiang Liao, Yu-Chieh Chao, Wei-Yun Ma, Pu-Jen Cheng
Estimating Causal Effects of Text Interventions Leveraging LLMs
Siyi Guo, Myrl G. Marmarelis, Fred Morstatter, Kristina Lerman
DeTeCtive: Detecting AI-generated Text via Multi-Level Contrastive Learning
Xun Guo, Shan Zhang, Yongxin He, Ting Zhang, Wanquan Feng, Haibin Huang, Chongyang Ma
Decoding Reading Goals from Eye Movements
Omer Shubi, Cfir Avraham Hadar, Yevgeni Berzak