Abstract

The behavioral differences between expert and novice performance is a well-studied area in training literature. Advances in technology have made it possible to trace players' actions and behaviors within an online gaming environment as user-generated data for performance assessment. In this study, we introduce the use of string similarity to differentiate likely-experts from a group of unknown performers (mixture of novices and experts) based on how similar their in-game actions are to that of experts. Our findings indicate that string similarity is viable as an empirical assessment method to differentiate likely-experts from novices and potentially useful as the first performance metric for Serious Games Analytics (SEGA).

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