Application Proficiency
Application proficiency focuses on optimizing the performance and efficiency of algorithms and models across diverse applications, aiming to improve accuracy, speed, and resource utilization. Current research emphasizes developing robust methods for handling model uncertainties and constraints, often employing Bayesian optimization, metaheuristics, and deep learning architectures like convolutional neural networks and transformers. This field is crucial for advancing various domains, from real-time control systems and fraud detection to personalized medicine and environmental monitoring, by enabling the effective deployment of sophisticated computational tools.
Papers
Dynamic Pricing in Securities Lending Market: Application in Revenue Optimization for an Agent Lender Portfolio
Jing Xu, Yung-Cheng Hsu, William Biscarri
An Application of Large Language Models to Coding Negotiation Transcripts
Ray Friedman, Jaewoo Cho, Jeanne Brett, Xuhui Zhan, Ningyu Han, Sriram Kannan, Yingxiang Ma, Jesse Spencer-Smith, Elisabeth Jäckel, Alfred Zerres, Madison Hooper, Katie Babbit, Manish Acharya, Wendi Adair, Soroush Aslani, Tayfun Aykaç, Chris Bauman, Rebecca Bennett, Garrett Brady, Peggy Briggs, Cheryl Dowie, Chase Eck, Igmar Geiger, Frank Jacob, Molly Kern, Sujin Lee, Leigh Anne Liu, Wu Liu, Jeffrey Loewenstein, Anne Lytle, Li Ma, Michel Mann, Alexandra Mislin, Tyree Mitchell, Hannah Martensen née Nagler, Amit Nandkeolyar, Mara Olekalns, Elena Paliakova, Jennifer Parlamis, Jason Pierce, Nancy Pierce, Robin Pinkley, Nathalie Prime, Jimena Ramirez-Marin, Kevin Rockmann, William Ross, Zhaleh Semnani-Azad, Juliana Schroeder, Philip Smith, Elena Stimmer, Roderick Swaab, Leigh Thompson, Cathy Tinsley, Ece Tuncel, Laurie Weingart, Robert Wilken, JingJing Yao, Zhi-Xue Zhang
New Metrics for Assessing Projection Pursuit Indexes, and Guiding Optimisation Choices
H. Sherry Zhang, Dianne Cook, Nicolas Langrené, Jessica Wai Yin Leung
Jerk-limited Traversal of One-dimensional Paths and its Application to Multi-dimensional Path Tracking
Jonas C. Kiemel, Torsten Kröger
Data-Driven Estimation of Conditional Expectations, Application to Optimal Stopping and Reinforcement Learning
George V. Moustakides
A Survey on the Application of Generative Adversarial Networks in Cybersecurity: Prospective, Direction and Open Research Scopes
Md Mashrur Arifin, Md Shoaib Ahmed, Tanmai Kumar Ghosh, Ikteder Akhand Udoy, Jun Zhuang, Jyh-haw Yeh
A Cantor-Kantorovich Metric Between Markov Decision Processes with Application to Transfer Learning
Adrien Banse, Venkatraman Renganathan, Raphaël M. Jungers
Large Language Model Agents for Improving Engagement with Behavior Change Interventions: Application to Digital Mindfulness
Harsh Kumar, Suhyeon Yoo, Angela Zavaleta Bernuy, Jiakai Shi, Huayin Luo, Joseph Williams, Anastasia Kuzminykh, Ashton Anderson, Rachel Kornfield
Multiple-Resolution Tokenization for Time Series Forecasting with an Application to Pricing
Egon Peršak, Miguel F. Anjos, Sebastian Lautz, Aleksandar Kolev