Accurate Decoding
Accurate decoding aims to reliably extract meaningful information from complex data sources, such as brain activity, text, or audio signals. Current research focuses on improving decoding accuracy and efficiency through advanced model architectures like transformers and diffusion models, often incorporating techniques such as self-supervised learning, constrained decoding, and adaptive methods to handle noise and variability in the input data. These advancements have significant implications for various fields, including neuroscience, natural language processing, and signal processing, enabling more accurate interpretations of complex data and facilitating the development of novel applications in areas like brain-computer interfaces and improved speech recognition.
Papers
DECODE: Data-driven Energy Consumption Prediction leveraging Historical Data and Environmental Factors in Buildings
Aditya Mishra, Haroon R. Lone, Aayush Mishra
Dynamic Encoding and Decoding of Information for Split Learning in Mobile-Edge Computing: Leveraging Information Bottleneck Theory
Omar Alhussein, Moshi Wei, Arashmid Akhavain