Enumerating Graphlets with Amortized Time Complexity Independent of Graph Size
Abstract: Graphlets of order $k$ in a graph $G$ are connected subgraphs induced by $k$ nodes (called $k$-graphlets) or by $k$ edges (called edge $k$-graphlets). They are among the interesting subgraphs in network analysis to get insights on both the local and global structure of a network. While several algorithms exist for discovering and enumerating graphlets, the cost per solution of such algorithms typically depends on the size of the graph $G$, or its maximum degree. In real networks, even the latter can be in the order of millions, whereas $k$ is typically required to be a small value. In this paper we provide the first algorithm to list all graphlets of order $k$ in a graph $G=(V,E)$ with an amortized cost per solution depending \emph{solely} on the order $k$, contrarily to previous approaches where the cost depends \emph{also} on the size of $G$ or its maximum degree. Specifically, we show that it is possible to list $k$-graphlets in $O(k2)$ time per solution, and to list edge $k$-graphlets in $O(k)$ time per solution. Furthermore we show that, if the input graph has bounded degree, then the cost per solution for listing $k$-graphlets is reduced to $O(k)$. Whenever $k = O(1)$, as it is often the case in practical settings, these algorithms are the first to achieve constant time per solution.
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