H.3. Artificial Intelligence
A Reinforcement Learning-based Encoder-Decoder Framework for Learning Stock Trading Rules

M. Taghian; A. Asadi; R. Safabakhsh

Volume 11, Issue 1 , January 2023, , Pages 103-118

https://doi.org/10.22044/jadm.2023.11979.2347

Abstract
  The quality of the extracted features from a long-term sequence of raw prices of the instruments greatly affects the performance of the trading rules learned by machine learning models. Employing a neural encoder-decoder structure to extract informative features from complex input time-series has proved ...  Read More

H.3.2.6. Games and infotainment
Robust Opponent Modeling in Real-Time Strategy Games using Bayesian Networks

A. Torkaman; R. Safabakhsh

Volume 7, Issue 1 , January 2019, , Pages 149-159

https://doi.org/10.22044/jadm.2018.6932.1815

Abstract
  Opponent modeling is a key challenge in Real-Time Strategy (RTS) games as the environment is adversarial in these games, and the player cannot predict the future actions of her opponent. Additionally, the environment is partially observable due to the fog of war. In this paper, we propose an opponent ...  Read More