Publication | Closed Access
A Confidence-Calibrated MOBA Game Winner Predictor
15
Citations
9
References
2020
Year
Artificial IntelligenceGame AiEngineeringMachine LearningGame TheoryUncertain DataComputational Game TheoryUncertainty ModelingData ScienceUncertainty QuantificationCalibrationNovel Calibration MethodStatisticsConfidence-calibration MethodPredictive AnalyticsGame AnalyticsComputer ScienceSensor CalibrationBusinessCalibration Error
In this paper, we propose a confidence-calibration method for predicting the winner of a famous multiplayer online battle arena (MOBA) game, League of Legends. In MOBA games, the dataset may contain a large amount of input-dependent noise; not all of such noise is observable. Hence, it is desirable to attempt a confidence-calibrated prediction. Unfortunately, most existing confidence calibration methods are pertaining to image and document classification tasks where consideration on uncertainty is not crucial. In this paper, we propose a novel calibration method that takes data uncertainty into consideration. The proposed method achieves an outstanding expected calibration error (ECE) (0.57%) mainly owing to data uncertainty consideration, compared to a conventional temperature scaling method of which ECE value is 1.11%.
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