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T value of actor A is computed from the immediate neighbors who join the network after her/him (located in the shaded region).
HT value of actor A is computed from the neighbors of order n who join the network after her/him (located in the shaded region).
end{aligned} (1 where (T(a_{G_i})) is the attractiveness value of actor a in P-subgraph (G_i), ({text deg}(a_{S_{(i+1)}})) is the degree of the same actor but in S-subgraph (S_{{(i+1)}}), and (A_s{(i+1)}) is the (P_s -actors in S-subgraP_s -actors)}).
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He really saw the value of actors working eye to eye.
The decision-making process, conditioned by institutional, political, normative and cognitive dimensions (knowledge and values of actors involved: beliefs, resources, and strategies).
The development and adoption of public policies favourable to health are described by three axes: The decision-making process, conditioned by institutional, political, normative and cognitive dimensions (knowledge and values of actors involved: beliefs, resources, and strategies).
Here, the attraction value of an actor can be adjusted by the attraction values that the attracted actors achieve later on.
To be more specific, the attractiveness value (T value) of the actor A in the slice time t equals the number of new actors who joined the community in the slice time (t+1) by establishing new connection with actor A. To formalize our HT measure, we will enumerate here briefly some of the concepts that were used to implement T measure.
In other words, while T measure defines the attractiveness value of an actor through evaluating the number of outsiders who joined to the community by this actor, HT measure will refer to his/her attractiveness value through evaluating the importance of those outsiders.
It's all about business and money and the value of the actor.
To calculate the attractiveness value of the actor C in the whole P-graph G, we have to calculate (T(C_{G_1})) which equals the indegree value of the actor C in the S-subgraph (S_2).
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Since I tried Ludwig back in 2017, I have been constantly using it in both editing and translation. Ever since, I suggest it to my translators at ProSciEditing.

Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com