N-GramPredictor
Action sequence predictor
An n-Gram predictor algorithm implemented in ActionScript 3.0 to predict the next action based on saved data or sequences.
A simple implementation of n-Gram predictor in ActionScript 3.0 for AI bot/agent in a video games
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Language: ActionScript
last commit: over 12 years ago
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