Wernicke <ref name="wer1" /> introduced an algorithm named ''RAND-ESU'' that provides a significant improvement over ''mfinder''.<ref name="kas1" /> This algorithm, which is based on the exact enumeration algorithm ''ESU'', has been implemented as an application called ''FANMOD''.<ref name="wer1" /> ''RAND-ESU'' is a NM discovery algorithm applicable for both directed and undirected networks, effectively exploits an unbiased node sampling throughout the network, and prevents overcounting sub-graphs more than once. Furthermore, ''RAND-ESU'' uses a novel analytical approach called ''DIRECT'' for determining sub-graph significance instead of using an ensemble of random networks as a Null-model. The ''DIRECT'' method estimates the sub-graph concentration without explicitly generating random networks.<ref name="wer1" /> Empirically, the DIRECT method is more efficient in comparison with the random network ensemble in case of sub-graphs with a very low concentration; however, the classical Null-model is faster than the ''DIRECT'' method for highly concentrated sub-graphs.<ref name="mil1" /><ref name="wer1" /> In the following, we detail the ''ESU'' algorithm and then we show how this exact algorithm can be modified efficiently to ''RAND-ESU'' that estimates sub-graphs concentrations. | Wernicke <ref name="wer1" /> introduced an algorithm named ''RAND-ESU'' that provides a significant improvement over ''mfinder''.<ref name="kas1" /> This algorithm, which is based on the exact enumeration algorithm ''ESU'', has been implemented as an application called ''FANMOD''.<ref name="wer1" /> ''RAND-ESU'' is a NM discovery algorithm applicable for both directed and undirected networks, effectively exploits an unbiased node sampling throughout the network, and prevents overcounting sub-graphs more than once. Furthermore, ''RAND-ESU'' uses a novel analytical approach called ''DIRECT'' for determining sub-graph significance instead of using an ensemble of random networks as a Null-model. The ''DIRECT'' method estimates the sub-graph concentration without explicitly generating random networks.<ref name="wer1" /> Empirically, the DIRECT method is more efficient in comparison with the random network ensemble in case of sub-graphs with a very low concentration; however, the classical Null-model is faster than the ''DIRECT'' method for highly concentrated sub-graphs.<ref name="mil1" /><ref name="wer1" /> In the following, we detail the ''ESU'' algorithm and then we show how this exact algorithm can be modified efficiently to ''RAND-ESU'' that estimates sub-graphs concentrations. |