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
Blox-Net: Generative Design-for-Robot-Assembly Using VLM Supervision, Physics Simulation, and a Robot with Reset
Andrew Goldberg, Kavish Kondap, Tianshuang Qiu, Zehan Ma, Letian Fu, Justin Kerr, Huang Huang, Kaiyuan Chen, Kuan Fang, Ken Goldberg
Generative Pre-trained Ranking Model with Over-parameterization at Web-Scale (Extended Abstract)
Yuchen Li, Haoyi Xiong, Linghe Kong, Jiang Bian, Shuaiqiang Wang, Guihai Chen, Dawei Yin
Generative AI-driven forecasting of oil production
Yash Gandhi, Kexin Zheng, Birendra Jha, Ken-ichi Nomura, Aiichiro Nakano, Priya Vashishta, Rajiv K. Kalia
Beyond Text-to-Text: An Overview of Multimodal and Generative Artificial Intelligence for Education Using Topic Modeling
Ville Heilala, Roberto Araya, Raija Hämäläinen