Deep learning detecting fraud in credit card transactions A Roy, J Sun, R Mahoney, L Alonzi, S Adams, P Beling 2018 systems and information engineering design symposium (SIEDS), 129-134, 2018 | 299 | 2018 |
A real-time ergonomic monitoring system using the Microsoft Kinect CC Martin, DC Burkert, KR Choi, NB Wieczorek, PM McGregor, ... 2012 IEEE Systems and Information Engineering Design Symposium, 50-55, 2012 | 115 | 2012 |
Horse race analysis in credit card fraud—deep learning, logistic regression, and Gradient Boosted Tree G Rushin, C Stancil, M Sun, S Adams, P Beling 2017 systems and information engineering design symposium (SIEDS), 117-121, 2017 | 107 | 2017 |
Value-decomposition multi-agent actor-critics J Su, S Adams, P Beling Proceedings of the AAAI conference on artificial intelligence 35 (13), 11352 …, 2021 | 99 | 2021 |
An agent based model of the E-Mini S&P 500 applied to Flash Crash analysis M Paddrik, R Hayes, A Todd, S Yang, P Beling, W Scherer 2012 IEEE Conference on Computational Intelligence for Financial Engineering …, 2012 | 95 | 2012 |
Multi-agent Inverse Reinforcement Learning for Two-person Zero-sum Games X Lin, PA Beling, R Cogill IEEE Transactions Games, 2017 | 87* | 2017 |
Dynamic models for floodplain management JR Olsen, PA Beling, JH Lambert Journal of Water Resources Planning and Management 126 (3), 167-175, 2000 | 81 | 2000 |
Adversarial learning in credit card fraud detection MF Zeager, A Sridhar, N Fogal, S Adams, DE Brown, PA Beling 2017 Systems and Information Engineering Design Symposium (SIEDS), 112-116, 2017 | 73 | 2017 |
Simulating kinect infrared and depth images MJ Landau, BY Choo, PA Beling IEEE Transactions on Cybernetics 46 (12), 3018-3031, 2016 | 72 | 2016 |
A survey of inverse reinforcement learning S Adams, T Cody, PA Beling Artificial Intelligence Review 55 (6), 4307-4346, 2022 | 62 | 2022 |
Feature selection for hidden Markov models and hidden semi-Markov models S Adams, PA Beling, R Cogill IEEE Access 4, 1642-1657, 2016 | 61 | 2016 |
Statistical Analysis-Based Error Models for the Microsoft Kinect™ Depth Sensor B Choo, M Landau, M DeVore, PA Beling Sensors 14 (9), 17430-17450, 2014 | 59 | 2014 |
A survey of feature selection methods for Gaussian mixture models and hidden Markov models S Adams, PA Beling Artificial Intelligence Review 52, 1739-1779, 2019 | 57 | 2019 |
A dynamic theory of the credit union GM Rubin, GA Overstreet, P Beling, K Rajaratnam Annals of Operations Research 205, 29-53, 2013 | 56 | 2013 |
Deep multi-agent reinforcement learning for multi-level preventive maintenance in manufacturing systems J Su, J Huang, S Adams, Q Chang, PA Beling Expert Systems with Applications 192, 116323, 2022 | 54 | 2022 |
Gaussian process-based algorithmic trading strategy identification SY Yang, Q Qiao, PA Beling, WT Scherer, AA Kirilenko Quantitative Finance 15 (10), 1683-1703, 2015 | 53 | 2015 |
Behavior based learning in identifying high frequency trading strategies S Yang, M Paddrik, R Hayes, A Todd, A Kirilenko, P Beling, W Scherer 2012 IEEE Conference on Computational Intelligence for Financial Engineering …, 2012 | 53 | 2012 |
Input-output economic evaluation of system of levees JR Olsen, PA Beling, JH Lambert, YY Haimes Journal of water resources planning and management 124 (5), 237-245, 1998 | 52* | 1998 |
Modeling law search as prediction F Dadgostari, M Guim, PA Beling, MA Livermore, DN Rockmore Artificial Intelligence and Law 29, 3-34, 2021 | 51* | 2021 |
Multi-agent inverse reinforcement learning for certain general-sum stochastic games X Lin, SC Adams, PA Beling Journal of Artificial Intelligence Research 66, 473-502, 2019 | 49* | 2019 |