Corpus ID: 155093199

Survival of the Fittest in PlayerUnknown BattleGround

  title={Survival of the Fittest in PlayerUnknown BattleGround},
  author={Brij Rokad and Tushar Karumudi and O. Acharya and Akshay Jagtap},
The goal of this paper was to predict the placement in the multiplayer game PUBG (playerunknown battleground). In the game, up to one hundred players parachutes onto an island and scavenge for weapons and equipment to kill others, while avoiding getting killed themselves. The available safe area of the game map decreases in size over time, directing surviving players into tighter areas to force encounters. The last player or team standing wins the round. In this paper specifically, we have… Expand
PUBG Winner Ranking Prediction using R Interface ‘h2o’ Scalable Machine Learning Platform
  • Yash Indulkar
  • 2021 International Conference on Emerging Smart Computing and Informatics (ESCI)
  • 2021


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