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Statistics / Monte Carlo methods / Probability theory / Estimation theory / Robot control / Nonparametric statistics / Markov models / Particle filter / Prediction / Hidden semi-Markov model / Resampling / Markov chain
Date: 2009-02-05 01:17:42
Statistics
Monte Carlo methods
Probability theory
Estimation theory
Robot control
Nonparametric statistics
Markov models
Particle filter
Prediction
Hidden semi-Markov model
Resampling
Markov chain

An Evaluation of Models for Predicting Opponent Positions in First-Person Shooter Video Games Stephen Hladky and Vadim Bulitko filters to predict opponent positions in first-person shooter (FPS) video games. These models

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