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Financial network composed of 1 CCP, its 20 members (labeled by B) and one client per member

Financial network composed of 1 CCP, its 20 members (labeled by B) and one client per member

Contexts in source publication

Context 1
... member faces one client. The ensuing financial network is depicted by Figure 3. ...
Context 2
... the CCP has re-allocated all defaulted client positions, the resulting financial network formerly depicted in Figure 3 becomes the network with 19 members 44 in particular, not significantly higher than. 45 By offset we refer to risk reduction when taking over some additional position. ...

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