Neural Networks Models for Analyzing Magic: the Gathering Cards

Historically, games of all kinds have often been the subject of study in scientific works of Computer Science, including the field of machine learning. By using machine learning techniques and applying them to a game with defined rules or a structured dataset, it's possible to learn and improve...

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Veröffentlicht in:arXiv.org 2018-10
Hauptverfasser: Zilio, Felipe, Prates, Marcelo, Lamb, Luis
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description Historically, games of all kinds have often been the subject of study in scientific works of Computer Science, including the field of machine learning. By using machine learning techniques and applying them to a game with defined rules or a structured dataset, it's possible to learn and improve on the already existing techniques and methods to tackle new challenges and solve problems that are out of the ordinary. The already existing work on card games tends to focus on gameplay and card mechanics. This work aims to apply neural networks models, including Convolutional Neural Networks and Recurrent Neural Networks, in order to analyze Magic: the Gathering cards, both in terms of card text and illustrations; the card images and texts are used to train the networks in order to be able to classify them into multiple categories. The ultimate goal was to develop a methodology that could generate card text matching it to an input image, which was attained by relating the prediction values of the images and generated text across the different categories.
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subjects Artificial intelligence
Artificial neural networks
Card games
Games
Machine learning
Neural networks
Recurrent neural networks
title Neural Networks Models for Analyzing Magic: the Gathering Cards
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