Utilizing game theory, learning automata and reinforcement learning concepts, thesis presents a computational model (simulation) based on general equilibrium theory and classical monetary model. Model is based on interacting Constructively Rational agents. Constructive Ratio- nality has been introduced in current literature as machine learning based concept that allows relaxing assumptions on modeled economic agents information and ex- pectations. Model experiences periodical endogenous crises (Fall in both production and con- sumption accompanied with rise in unemployment rate). Crises are caused by firms and households adopting to a change in price and wage levels. Price and wage level adjustments are necessary for the goods and labor mar...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
With Romuald Elie and Carl Remlinger we recently uploaded on ArXiv a paper on Reinforcement Learning...
Utilizing game theory, learning automata and reinforcement learning concepts, thesis presents a comp...
A constituent feature of adaptive complex systems are non-linear feedback mechanisms between actors....
A constituent feature of adaptive complex systems are non-linear feedback mechanisms between actors....
In this paper, we employ techniques from artificial intelligence such as reinforcement learning and ...
Dynamic models of adjustment, as well as static models of equilibrium, are important to understand e...
1 Abstract Thesis describes close relationship between Dynamic programming and rein- forcement learn...
This chapter provides a survey of the recent work on learning in the context of macroeconomics. Lear...
Our joint paper, with Romuald Elie and Carl Remlinger entitled Reinforcement Learning in Economics a...
The aim of this thesis is to propose and illustrate an alternative approach to economic modeling and...
We present an agent-based model of a simple endogenous-money economy. The model simulates agents rep...
Real-world decision-makers are forced to be locally constructive; that is, their decisions are neces...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
With Romuald Elie and Carl Remlinger we recently uploaded on ArXiv a paper on Reinforcement Learning...
Utilizing game theory, learning automata and reinforcement learning concepts, thesis presents a comp...
A constituent feature of adaptive complex systems are non-linear feedback mechanisms between actors....
A constituent feature of adaptive complex systems are non-linear feedback mechanisms between actors....
In this paper, we employ techniques from artificial intelligence such as reinforcement learning and ...
Dynamic models of adjustment, as well as static models of equilibrium, are important to understand e...
1 Abstract Thesis describes close relationship between Dynamic programming and rein- forcement learn...
This chapter provides a survey of the recent work on learning in the context of macroeconomics. Lear...
Our joint paper, with Romuald Elie and Carl Remlinger entitled Reinforcement Learning in Economics a...
The aim of this thesis is to propose and illustrate an alternative approach to economic modeling and...
We present an agent-based model of a simple endogenous-money economy. The model simulates agents rep...
Real-world decision-makers are forced to be locally constructive; that is, their decisions are neces...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
Models of macroeconomic learning are populated by agents who possess a great deal of knowledge of th...
With Romuald Elie and Carl Remlinger we recently uploaded on ArXiv a paper on Reinforcement Learning...