In this thesis, we used deep reinforcement learning to train autonomous agents and evaluated the impact of increasing the complexity of the training environment over time. This was compared to using a fixed complexity. Also, we investigated the impact of using a pre-trained agent as a starting point for training in an environment with a different complexity, compared to an untrained agent. The scope was limited to only training and analyzing agents playing a variant of the 2D game Snake. Random obstacles were placed on the map, and complexity corresponds to the amount of obstacles. Performance was measured in terms of eaten fruits. The results showed benefits in overall performance for the agent trained in increasingly complex environments....
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
In this thesis, we used deep reinforcement learning to train autonomous agents and evaluated the imp...
In this thesis, we used deep reinforcement learning to train autonomous agents and evaluated the imp...
Reinforcement learning is one of the main paradigms of machine learning. In this paradigm learners (...
Reinforcement learning is one of the main paradigms of machine learning. In this paradigm learners (...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Deep reinforcement learning algorithms typically require large amounts of data to solve a specific p...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
Deep reinforcement learning algorithms typically require large amounts of data to solve a specific p...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
In this thesis, we used deep reinforcement learning to train autonomous agents and evaluated the imp...
In this thesis, we used deep reinforcement learning to train autonomous agents and evaluated the imp...
Reinforcement learning is one of the main paradigms of machine learning. In this paradigm learners (...
Reinforcement learning is one of the main paradigms of machine learning. In this paradigm learners (...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Algoritmer baserade på reinforcement learning har framgångsrikt tillämpats på många olika maskininlä...
Deep reinforcement learning algorithms typically require large amounts of data to solve a specific p...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
In this thesis, we trained a reinforcement learning agent using one of the most recent policy gradie...
Deep reinforcement learning algorithms typically require large amounts of data to solve a specific p...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...
The purpose of this thesis is to investigate if increasing complexity for a problem makes a differen...