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
Applications of Machine Learning to Lattice Quantum Field Theory
Denis Boyda, Salvatore Calì, Sam Foreman, Lena Funcke, Daniel C. Hackett, Yin Lin, Gert Aarts, Andrei Alexandru, Xiao-Yong Jin, Biagio Lucini, Phiala E. Shanahan
Closure operators: Complexity and applications to classification and decision-making
Hamed Hamze Bajgiran, Federico Echenique
Image-to-Image Regression with Distribution-Free Uncertainty Quantification and Applications in Imaging
Anastasios N Angelopoulos, Amit P Kohli, Stephen Bates, Michael I Jordan, Jitendra Malik, Thayer Alshaabi, Srigokul Upadhyayula, Yaniv Romano
Investigating the fidelity of explainable artificial intelligence methods for applications of convolutional neural networks in geoscience
Antonios Mamalakis, Elizabeth A. Barnes, Imme Ebert-Uphoff
Recent Trends in 2D Object Detection and Applications in Video Event Recognition
Prithwish Jana, Partha Pratim Mohanta
Conversational Agents: Theory and Applications
Mattias Wahde, Marco Virgolin