Study Feature
Research on "Study Feature" broadly investigates the performance and limitations of various machine learning models across diverse tasks, focusing on areas like data compression, emotion recognition, remaining useful life prediction, and medical image generation. Current studies heavily utilize large language models (LLMs) and deep convolutional neural networks (CNNs), often exploring techniques like transfer learning, prompt engineering, and ensemble methods to improve model accuracy and robustness. This research is significant for advancing both fundamental understanding of model capabilities and for developing practical applications in fields ranging from healthcare and industrial maintenance to natural language processing and security.
Papers
A Study of Reinforcement Learning Algorithms for Aggregates of Minimalistic Robots
Joshua Bloom, Apratim Mukherjee, Carlo Pinciroli
STUDIES: Corpus of Japanese Empathetic Dialogue Speech Towards Friendly Voice Agent
Yuki Saito, Yuto Nishimura, Shinnosuke Takamichi, Kentaro Tachibana, Hiroshi Saruwatari
The Moral Debater: A Study on the Computational Generation of Morally Framed Arguments
Milad Alshomary, Roxanne El Baff, Timon Gurcke, Henning Wachsmuth
Reshaping Robot Trajectories Using Natural Language Commands: A Study of Multi-Modal Data Alignment Using Transformers
Arthur Bucker, Luis Figueredo, Sami Haddadin, Ashish Kapoor, Shuang Ma, Rogerio Bonatti
Platform Behavior under Market Shocks: A Simulation Framework and Reinforcement-Learning Based Study
Xintong Wang, Gary Qiurui Ma, Alon Eden, Clara Li, Alexander Trott, Stephan Zheng, David C. Parkes
Signature and Log-signature for the Study of Empirical Distributions Generated with GANs
Joaquim de Curtò, Irene de Zarzà, Hong Yan, Carlos T. Calafate
A study on joint modeling and data augmentation of multi-modalities for audio-visual scene classification
Qing Wang, Jun Du, Siyuan Zheng, Yunqing Li, Yajian Wang, Yuzhong Wu, Hu Hu, Chao-Han Huck Yang, Sabato Marco Siniscalchi, Yannan Wang, Chin-Hui Lee