Human Feedback
Human feedback is crucial for aligning artificial intelligence models, particularly large language models, with human preferences and values. Current research focuses on improving the efficiency and reliability of incorporating human feedback into reinforcement learning frameworks, exploring techniques like macro actions, active learning, and reward model optimization to address challenges such as the cost and subjectivity of human judgments. This work is significant because it directly impacts the safety, trustworthiness, and overall effectiveness of AI systems across diverse applications, from autonomous driving to educational assessment. The development of more robust and efficient methods for integrating human feedback is a key area of ongoing investigation.
Papers
Evaluating the Application of Large Language Models to Generate Feedback in Programming Education
Sven Jacobs, Steffen Jaschke
HRLAIF: Improvements in Helpfulness and Harmlessness in Open-domain Reinforcement Learning From AI Feedback
Ang Li, Qiugen Xiao, Peng Cao, Jian Tang, Yi Yuan, Zijie Zhao, Xiaoyuan Chen, Liang Zhang, Xiangyang Li, Kaitong Yang, Weidong Guo, Yukang Gan, Xu Yu, Daniell Wang, Ying Shan
Modeling the Feedback of AI Price Estimations on Actual Market Values
Viorel Silaghi, Zobaida Alssadi, Ben Mathew, Majed Alotaibi, Ali Alqarni, Marius Silaghi