Understand Watchdogs: Discover How Game Bot Get Discovered
- URL: http://arxiv.org/abs/2011.13374v2
- Date: Tue, 19 Jan 2021 12:29:53 GMT
- Title: Understand Watchdogs: Discover How Game Bot Get Discovered
- Authors: Eunji Park, Kyung Ho Park, Huy Kang Kim
- Abstract summary: We develop the XAI model using a dataset from the Korean MMORPG, AION.
This provides us explanations about the game bots' behavior, and the truthfulness of the explanations has been evaluated.
- Score: 8.8519643723088
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The game industry has long been troubled by malicious activities utilizing
game bots. The game bots disturb other game players and destroy the
environmental system of the games. For these reasons, the game industry put
their best efforts to detect the game bots among players' characters using the
learning-based detections. However, one problem with the detection
methodologies is that they do not provide rational explanations about their
decisions. To resolve this problem, in this work, we investigate the
explainabilities of the game bot detection. We develop the XAI model using a
dataset from the Korean MMORPG, AION, which includes game logs of human players
and game bots. More than one classification model has been applied to the
dataset to be analyzed by applying interpretable models. This provides us
explanations about the game bots' behavior, and the truthfulness of the
explanations has been evaluated. Besides, interpretability contributes to
minimizing false detection, which imposes unfair restrictions on human players.
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