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Cheat Detection on Online Chess Games using Convolutional and Dense Neural Network | IEEE Conference Publication | IEEE Xplore

Cheat Detection on Online Chess Games using Convolutional and Dense Neural Network


Abstract:

With the widespread use of chess engines cheating in chess has become easier than ever, especially in online chess. Cheating obviously brings a negative impact to the spo...Show More

Abstract:

With the widespread use of chess engines cheating in chess has become easier than ever, especially in online chess. Cheating obviously brings a negative impact to the sport. However, research on the topic on cheat detection in chess is still scarcely found. Thus, this paper will discuss data and algorithms that can be used to develop cheat detection tools to analyze games. For data, there are analyzed data and unanalyzed data from online chess games whereas for the algorithm that will be explored there are convolutional neural network (CNN) and densely connected neural network. The results from the experiment using the CNN algorithm are better than the densely connected neural network for detecting if the player is cheating or not. Meanwhile for the data, using either unanalyzed and analyzed data doesn't change the best performing neural network, but it was found using the analyzed data still boosts the accuracy of both neural networks.
Date of Conference: 16-17 December 2021
Date Added to IEEE Xplore: 11 February 2022
ISBN Information:
Conference Location: Yogyakarta, Indonesia

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