An Exploration of Deep Learning Methods in Hungry Geese

09/05/2021
by   Nikzad Khani, et al.
0

Hungry Geese is a n-player variation of the popular game snake. This paper looks at state of the art Deep Reinforcement Learning Value Methods. The goal of the paper is to aggregate research of value based methods and apply it as an exercise to other environments. A vanilla Deep Q Network, a Double Q-network and a Dueling Q-Network were all examined and tested with the Hungry Geese environment. The best performing model was the vanilla Deep Q Network due to its simple state representation and smaller network structure. Converging towards an optimal policy was found to be difficult due to random geese initialization and food generation. Therefore we show that Deep Q Networks may not be the appropriate model for such a stochastic environment and lastly we present improvements that can be made along with more suitable models for the environment.

READ FULL TEXT
research
08/07/2023

Deep Q-Network for Stochastic Process Environments

Reinforcement learning is a powerful approach for training an optimal po...
research
08/04/2020

Exploring Variational Deep Q Networks

This study provides both analysis and a refined, research-ready implemen...
research
12/11/2019

Online Deep Reinforcement Learning for Autonomous UAV Navigation and Exploration of Outdoor Environments

With the rapidly growing expansion in the use of UAVs, the ability to au...
research
10/30/2018

Exploration by Random Network Distillation

We introduce an exploration bonus for deep reinforcement learning method...
research
09/15/2018

Towards Better Interpretability in Deep Q-Networks

Deep reinforcement learning techniques have demonstrated superior perfor...
research
05/21/2017

Shallow Updates for Deep Reinforcement Learning

Deep reinforcement learning (DRL) methods such as the Deep Q-Network (DQ...
research
05/17/2016

Dynamic Frame skip Deep Q Network

Deep Reinforcement Learning methods have achieved state of the art perfo...

Please sign up or login with your details

Forgot password? Click here to reset