Deep Learning in the Sequence Space
By: Marlon Azinovic-Yang, Jan Žemlička
Potential Business Impact:
Teaches computers to predict how economies will change.
We develop a deep learning algorithm for approximating functional rational expectations equilibria of dynamic stochastic economies in the sequence space. We use deep neural networks to parameterize equilibrium objects of the economy as a function of truncated histories of exogenous shocks. We train the neural networks to fulfill all equilibrium conditions along simulated paths of the economy. To illustrate the performance of our method, we solve three economies of increasing complexity: the stochastic growth model, a high-dimensional overlapping generations economy with multiple sources of aggregate risk, and finally an economy where households and firms face uninsurable idiosyncratic risk, shocks to aggregate productivity, and shocks to idiosyncratic and aggregate volatility. Furthermore, we show how to design practical neural policy function architectures that guarantee monotonicity of the predicted policies, facilitating the use of the endogenous grid method to simplify parts of our algorithm.
Similar Papers
Deep Learning for Continuous-time Stochastic Control with Jumps
Machine Learning (CS)
Teaches computers to make smart choices automatically.
Deep Learning for Continuous-time Stochastic Control with Jumps
Machine Learning (CS)
Teaches computers to make smart choices in risky situations.
A new architecture of high-order deep neural networks that learn martingales
Machine Learning (CS)
Makes computer trading models more accurate.