Evaluating Multi-User Interfaces (EMI)

The present research utilized eye-tracking methodology to investigate whether or not embedded information is more difficult to find than unembedded information and whether or not embedded information is more likely to be misinterpreted than unembedded information. Results from this study suggest that adjacent rather than embedded information may be preferable in the design of complex multi-user interfaces.

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