Practical Algorithm
Practical algorithm research focuses on developing and improving algorithms for diverse applications, prioritizing efficiency, accuracy, and interpretability. Current research emphasizes areas like efficient model training and inference (e.g., low-bit quantization for LLMs, distributed algorithms for large datasets), robust optimization techniques (e.g., evolutionary algorithms, Q-learning variants), and methods for handling noisy data or dynamic environments. These advancements have significant implications across various fields, including machine learning, robotics, and data analysis, by enabling more efficient and reliable solutions to complex problems.
Papers
On Calibrating Semantic Segmentation Models: Analyses and An Algorithm
Dongdong Wang, Boqing Gong, Liqiang Wang
Stochastic analysis of the Elo rating algorithm in round-robin tournaments
Daniel Gomes de Pinho Zanco, Leszek Szczecinski, Eduardo Vinicius Kuhn, Rui Seara
Natural Way of Solving a Convex Hull Problem
Sina Saadati, Mohammadreza Razzazi
Morpheus: An A-sized AUV with morphing fins and algorithms for agile maneuvering
Supun Randeni, Michael Sacarny, Michael Benjamin, Michael Triantafyllou
Estimating truncation effects of quantum bosonic systems using sampling algorithms
Masanori Hanada, Junyu Liu, Enrico Rinaldi, Masaki Tezuka
Using machine learning algorithms to determine the post-COVID state of a person by his rhythmogram
Sergey Stasenko, Andrey Kovalchuk, Eremin Evgeny, Natalya Zarechnova, Maria Tsirkova, Sergey Permyakov, Sergey Parin, Sofia Polevaya
Using machine learning algorithms to determine the emotional disadaptation of a person by his rhythmogram
Sergey Stasenko, Olga Shemagina, Eremin Evgeny, Vladimir Yakhno, Sergey Parin, Sofia Polevaya