System Performance
System performance research focuses on optimizing the efficiency and accuracy of various computational systems, from machine learning models to robotic controllers and even quantum computers. Current research emphasizes improving model architectures (e.g., graph-oriented databases for language models, retention-based networks for multi-agent reinforcement learning) and training techniques (e.g., hard sample mining, co-optimization of design and control), while also addressing issues like fairness, robustness, and explainability. These advancements have significant implications for diverse fields, impacting the development of more efficient and reliable AI systems, improved medical diagnostics, and enhanced manufacturing processes.
Papers
Comparing Performance of Different Linguistically-Backed Word Embeddings for Cyberbullying Detection
Juuso Eronen, Michal Ptaszynski, Fumito Masui
Distributed Machine Learning in D2D-Enabled Heterogeneous Networks: Architectures, Performance, and Open Challenges
Zhipeng Cheng, Xuwei Fan, Minghui Liwang, Ning Chen, Xiaoyu Xia, Xianbin Wang
QAPPA: Quantization-Aware Power, Performance, and Area Modeling of DNN Accelerators
Ahmet Inci, Siri Garudanagiri Virupaksha, Aman Jain, Venkata Vivek Thallam, Ruizhou Ding, Diana Marculescu
A two-steps approach to improve the performance of Android malware detectors
Nadia Daoudi, Kevin Allix, Tegawendé F. Bissyandé, Jacques Klein
Performance of a deep learning system for detection of referable diabetic retinopathy in real clinical settings
Verónica Sánchez-Gutiérrez, Paula Hernández-Martínez, Francisco J. Muñoz-Negrete, Jonne Engelberts, Allison M. Luger, Mark J. J. P. van Grinsven
Subspace Learning Machine (SLM): Methodology and Performance
Hongyu Fu, Yijing Yang, Vinod K. Mishra, C. -C. Jay Kuo
Performance and Interpretability Comparisons of Supervised Machine Learning Algorithms: An Empirical Study
Alice J. Liu, Arpita Mukherjee, Linwei Hu, Jie Chen, Vijayan N. Nair
When Performance is not Enough -- A Multidisciplinary View on Clinical Decision Support
Roland Roller, Klemens Budde, Aljoscha Burchardt, Peter Dabrock, Sebastian Möller, Bilgin Osmanodja, Simon Ronicke, David Samhammer, Sven Schmeier
On the Performance of Machine Learning Methods for Breakthrough Curve Prediction
Daria Fokina, Oleg Iliev, Pavel Toktaliev, Ivan Oseledets, Felix Schindler
A global analysis of metrics used for measuring performance in natural language processing
Kathrin Blagec, Georg Dorffner, Milad Moradi, Simon Ott, Matthias Samwald
Performance of Deep Learning models with transfer learning for multiple-step-ahead forecasts in monthly time series
Martín Solís, Luis-Alexander Calvo-Valverde
Analysing the Performance of Stress Detection Models on Consumer-Grade Wearable Devices
Van-Tu Ninh, Sinéad Smyth, Minh-Triet Tran, Cathal Gurrin