Financial Application
Financial applications of artificial intelligence are rapidly expanding, driven by the need for efficient and accurate analysis of complex financial data. Current research focuses on developing and adapting various machine learning models, including large language models (LLMs), deep learning architectures (like YOLO and Swin-Unet), and optimization algorithms (e.g., those incorporating reinforcement learning and model predictive control), to handle diverse data types (text, images, time series) and tasks (prediction, classification, generation). This work is significant because it promises to improve decision-making, risk management, and resource allocation across various financial sectors, while also advancing the broader field of AI through the development of novel algorithms and model architectures tailored to specific financial challenges.
Papers
A Review of Indoor Millimeter Wave Device-based Localization and Device-free Sensing Technologies and Applications
Anish Shastri, Neharika Valecha, Enver Bashirov, Harsh Tataria, Michael Lentmaier, Fredrik Tufvesson, Michele Rossi, Paolo Casari
PMFL: Partial Meta-Federated Learning for heterogeneous tasks and its applications on real-world medical records
Tianyi Zhang, Shirui Zhang, Ziwei Chen, Dianbo Liu
Neural network stochastic differential equation models with applications to financial data forecasting
Luxuan Yang, Ting Gao, Yubin Lu, Jinqiao Duan, Tao Liu
An Overview of Healthcare Data Analytics With Applications to the COVID-19 Pandemic
Zhe Fei, Yevgen Ryeznik, Oleksandr Sverdlov, Chee Wei Tan, Weng Kee Wong
Critical Initialization of Wide and Deep Neural Networks through Partial Jacobians: General Theory and Applications
Darshil Doshi, Tianyu He, Andrey Gromov
Unsupervised cross domain learning with applications to 7 layer segmentation of OCTs
Yue Wu, Abraham Olvera Barrios, Ryan Yanagihara, Irene Leung, Marian Blazes, Adnan Tufail, Aaron Lee