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Experience modeling with graphs encoded knowledge for construction industry

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Academic year: 2021

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Figure

Fig. 1. Experience model incorporating problem-solving technique (Kamsu Foguem et al. [15]).
Fig. 3. A pictorial representation of the modeling components.
Fig. 5 depicts the relationships (Logical operators, Comparison operators, Usual relations and Temporal relations) between concepts, including their respective branches created
Fig. 5. Relation types.
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