Deep Reinforcement Learning with Model Learning and Monte Carlo Tree Search in Minecraft

03/22/2018
by   Stephan Alaniz, et al.
0

Deep reinforcement learning has been successfully applied to several visual-input tasks using model-free methods. In this paper, we propose a model-based approach that combines learning a DNN-based transition model with Monte Carlo tree search to solve a block-placing task in Minecraft. Our learned transition model predicts the next frame and the rewards one step ahead given the last four frames of the agent's first-person-view image and the current action. Then a Monte Carlo tree search algorithm uses this model to plan the best sequence of actions for the agent to perform. On the proposed task in Minecraft, our model-based approach reaches the performance comparable to the Deep Q-Network's, but learns faster and, thus, is more training sample efficient.

READ FULL TEXT
research
06/12/2020

StarCraft II Build Order Optimization using Deep Reinforcement Learning and Monte-Carlo Tree Search

The real-time strategy game of StarCraft II has been posed as a challeng...
research
12/05/2019

Combining Q-Learning and Search with Amortized Value Estimates

We introduce "Search with Amortized Value Estimates" (SAVE), an approach...
research
07/13/2023

Image Transformation Sequence Retrieval with General Reinforcement Learning

In this work, the novel Image Transformation Sequence Retrieval (ITSR) t...
research
09/04/2009

A Monte Carlo AIXI Approximation

This paper introduces a principled approach for the design of a scalable...
research
10/25/2019

Deep Reinforcement Learning in HOL4

The paper describes an implementation of deep reinforcement learning thr...
research
02/01/2023

Alphazzle: Jigsaw Puzzle Solver with Deep Monte-Carlo Tree Search

Solving jigsaw puzzles requires to grasp the visual features of a sequen...
research
02/22/2021

Deep Reinforcement Learning for Dynamic Spectrum Sharing of LTE and NR

In this paper, a proactive dynamic spectrum sharing scheme between 4G an...

Please sign up or login with your details

Forgot password? Click here to reset