Dissertation: networks
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\chapter{Temporal Networks}%
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\chapter{Temporal Networks}%
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\label{cha:temporal-networks}
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\label{cha:temporal-networks}
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\section{Definition and basic properties}%
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\label{sec:defin-basic-prop}
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In this section, we will introduce the notion of temporal networks or
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graphs. This is a complex notion, with many concurrent definitions and
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interpretations. First, we restate the standard definition of a
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non-temporal, static graph.
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\begin{defn}[Graph]
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A \emph{graph} is a couple $G = (V, E)$, where $V$ is a finite set
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of \emph{nodes} (or \emph{vertices}), and $E \subseteq V\times V$ is
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a set of \emph{edges}. A \emph{weighted graph} is defined by
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$G = (V, E, w)$, where $w : E\mapsto \mathbb{R}_+$ is fcalled the
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\emph{weight function}.
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\end{defn}
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We also define some basic concepts that will be needed later on to
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build simplicial complexes on graphs.
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\begin{defn}[Clique]
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A \emph{clique} is a set of nodes where each pair is connected. That
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is, a clique $C$ of a graph $G = (V,E)$ is a subset of $V$ such that
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$\forall i,j\in C, i \neq j \implies (i,j)\in E$. A clique is said
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to be \emph{maximal} if it cannot be augmented by any node.
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\end{defn}
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Temporal networks are defined in the more general framework of
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\emph{multilayer networks}. However, this definition is much too
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general for our simple applications, and we restrict ourselves to
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edge-centric time-varying graphs. In this model, the set of nodes is
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fixed and doesn't change over time, whereas edges can appear or
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disappear at different timestamps.
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\begin{defn}[Temporal network]
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A \emph{temporal network} (or graph) is a tuple
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$G = (V, E, \mathcal{T}, \rho)$, where:
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\begin{itemize}
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\item $V$ is a finite set of nodes,
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\item $E\subseteq V\times V$ is a set of edges,
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\item $\mathbb{T}$ is the \emph{temporal domain} (often taken as
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$\mathbb{N}$ or $\mathbb{R}_+$), and
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$\mathcal{T}\subseteq\mathbb{T}$ is the \emph{lifetime} of the
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network,
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\item $\rho: E\times\mathcal{T}\mapsto\{0,1\}$ is the \emph{presence
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function}, which determines whether an edge is present in the
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network at each timestamp.
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\end{itemize}
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The \emph{available dates} of an edge are the set
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$\mathcal{I}(e) = \{t\in\mathcal{T}: \rho(e,t)=1\}$.
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\end{defn}
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Temporal networks can also have weighted edges. In this case, it is
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possible to have constant weights (edges can only appear or disappear
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over time, and always have the same weight), or time-varying
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weights. In the latter case, we can set the domain of the presence
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function to be $\mathbb{R}_+$ instead of $\{0,1\}$, where by
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convention a zero weight corresponds to an absent edge.
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\begin{defn}[Additive temporal network]
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A temporal network is said to be \emph{additive} if for all $e\in E$
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and $t\in\mathcal{T}$, if $\rho(e,t)=1$, then
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$\forall t'>t, \rho(e, t') = 1$. Edges can only be added to the
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network, never removed.
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\end{defn}
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\section{Network partitioning}%
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\label{sec:network-partitioning}
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\section{Persistent homology for networks}%
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\label{sec:pers-homol-netw}
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We now consider the problem of applying persistent homology to network
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data. An undirected network is already a simplicial complex of
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dimension 1. However, this will not be sufficient to capture enough
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topological information: we need to introduce higher-dimensional
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simplices. The first possible method is to project the network on a
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metric space, thus transforming the network data into a point cloud
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data. For this, we need to compute the distance between each pair of
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nodes in the network (via shortest path distance for instance). This
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also requires the network to be connected.
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Another usual method for weighted networks is called the \emph{weight
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rank clique filtration} (WRCF), which filters the network based on
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weights. The procedure works as follows:
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\begin{enumerate}
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\item Set the set of all nodes, without any edge, as filtration
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step~0.
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\item Rank all edge weights in decreasing order $\{w_1,\ldots,w_n\}$.
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\item At filtration step $t$, keep only the edges whose weights are
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less than $w_t$, thus creating an unweighted graph.
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\item Define the maximal cliques of the resulting graph to be
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simplices.
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\end{enumerate}
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At each step of the filtration, we construct a simplicial complex
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based on cliques: this is called a \emph{clique complex}. It is
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necessarily valid since a subset of a clique is necessarily a clique
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itself, and the same is true for the intersection of two cliques.
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This leads to a first possibility for applying persistent homology to
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temporal networks. It is possible to segment the lifetime of the
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network into sliding windows, creating a static graph on each window
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by retaining only the edges available during the time interval. We can
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then apply WRCF on each static graph in the sequence, obtaining a
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filtered complex for each window, to which we can then apply
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persistent homology.
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This method is sensitive to the choice of sliding windows on the time
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scale. The width and the overlap of the windows can completely change
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the networks created and their topological features. Too small a
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window, and the network becomes too small to have any significant
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topological properties, too large, and we lose important information
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in the evolution of the network over time.
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\section{Zigzag persistence}%
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\label{sec:zigzag-persistence}
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\backmatter%
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\backmatter%
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\nocite{*}
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\nocite{*}
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