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TABLE 5. High and low attributes that composed the mixed models of smartphones.DimensionAttributeSpecification of theperformance valueDevice 5Device 6

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TABLE 5. High and low attributes that composed the mixed models of smartphones.

Dimension Attribute Specification of the

performance value Device 5 Device 6

Aesthetics F12. Device weight High Low

F13. Device size High Low

F18. Customise/personalize Low High

Usability and Aesthetics

F9. Camera appearance High Low

F10. Display size High Low

F11. Control command Low High

Usability F5. Type of connectivity High Low

F8. Connect with other devices High Low

F14.Native apps High Low

F15. Service for download apps High Low

F16.User Guide High Low

F17.Durability and safety High Low

F1. Speed of processing Low High

F2. Memory Low High

F3. Capacity to extend memory Low High

F4. Camera resolution/zoom Low High

F6. Battery durability Low High

F7. Display resolution Low High

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