Generative Question
Generative question answering (GQA) focuses on developing AI systems that can answer questions by generating answers, rather than simply extracting them from existing text. Current research emphasizes mitigating issues like hallucinations (generating factually incorrect answers) and improving the faithfulness of answers to source material, often employing techniques like retrieval-augmented generation (RAG) and novel model architectures such as transformers and diffusion models. This field is significant because it pushes the boundaries of AI's ability to understand and reason with information, with potential applications ranging from improved search engines and educational tools to more sophisticated medical diagnosis and decision support systems.
Papers
Validity Arguments For Constructed Response Scoring Using Generative Artificial Intelligence Applications
Jodi M. Casabianca, Daniel F. McCaffrey, Matthew S. Johnson, Naim Alper, Vladimir Zubenko
Generating Multimodal Images with GAN: Integrating Text, Image, and Style
Chaoyi Tan, Wenqing Zhang, Zhen Qi, Kowei Shih, Xinshi Li, Ao Xiang
Establishing baselines for generative discovery of inorganic crystals
Nathan J. Szymanski, Christopher J. Bartel
LayeringDiff: Layered Image Synthesis via Generation, then Disassembly with Generative Knowledge
Kyoungkook Kang, Gyujin Sim, Geonung Kim, Donguk Kim, Seungho Nam, Sunghyun Cho
MalCL: Leveraging GAN-Based Generative Replay to Combat Catastrophic Forgetting in Malware Classification
Jimin Park, AHyun Ji, Minji Park, Mohammad Saidur Rahman, Se Eun Oh
Graph Generative Pre-trained Transformer
Xiaohui Chen, Yinkai Wang, Jiaxing He, Yuanqi Du, Soha Hassoun, Xiaolin Xu, Li-Ping Liu
Towards Using Machine Learning to Generatively Simulate EV Charging in Urban Areas
Marek Miltner, Jakub Zíka, Daniel Vašata, Artem Bryksa, Magda Friedjungová, Ondřej Štogl, Ram Rajagopal, Oldřich Starý
Modeling Story Expectations to Understand Engagement: A Generative Framework Using LLMs
Hortense Fong, George Gui
[MASK] is All You Need
Vincent Tao Hu, Björn Ommer
Exploring the Impact of Synthetic Data on Human Gesture Recognition Tasks Using GANs
George Kontogiannis, Pantelis Tzamalis, Sotiris Nikoletseas
Generative Densification: Learning to Densify Gaussians for High-Fidelity Generalizable 3D Reconstruction
Seungtae Nam, Xiangyu Sun, Gyeongjin Kang, Younggeun Lee, Seungjun Oh, Eunbyung Park