[eng] In this MSc thesis, we focus on studying the different types of clustering for a flow network. A flow network is
a network representation of a dynamical system. The methodology to obtain these kind of networks is relatively
new and it still has many aspects to study.
The motivation of this work was to verify a hypothesis dropped in Ref.[4] which theorized about the meaning of
the undirected clustering for a flow network. More specifically, it was hypothesized that the undirected clustering
of a flow network characterizes the stable manifolds of the dynamical system underlying it.
First, we expose the different concepts of the theoretical framework involved: elements of dynamical systems
theory and of network theory, mainly the different definitions of clustering. At the successive sections we show
the results of our computations for the Lorenz model. In the process, we prove the motivation hypothesis to
be incorrect. We continue by studying the different types of directed clustering that constitute the undirected
clustering, connecting them to the properties of the dynamical system. Finally, we discuss the possible meanings
of the quantities studied.