“…Many methods, useful for community detection, are implemented and executed in optimal time, such as Louvain, Static networks/ Greedy/ Focus on starting Node(s) Reference Algorithm Key features Source Code Bagrow J. et al [30] use of l − shell to find the starting nodes, parameter dependent -Xu B. et al [12] use of k top leader nodes as starting nodes, community size is parameter dependent Zhang T. et al [31] use nodes with maximum degree as starting ones, low accuracy -Chen Q. Et al [32] LMD local degree central node as seed -Moradi F. et al [33] similarity score to define starting nodes, parameter-free -Xia S. et al [10] ILCDSP uses selection probability to find starting nodes, not very stable -Fanrong M. et al [34] LCD-MC start LCD from maximal clique containing the seed node -Wang P. et al [35] MAGA-LC tightest nodes as seeds -Hamann M. et al [36] start LCD from maximal clique containing the seed node, TCE method, unweighted and weighted networks, overlapping communities Provided Ding X. et al [37] RTLCD use core node as starting one -Tasgin M. et al [38] use of highest score node to start the label propagation method, instability in determining the final communities, weak performance in identifying a reasonable number of communities Provided Xu X. Et al [39] DLCD-CCE expands community centers, can run in a distributed environment, weighted networks -Guo K. et al [8] InfoNode local degree central nodes and Jaccard coefficient to detect starting nodes, overlapping communities, parameter dependent, more than one seeds -Luo W. et al [40] LCDNN nearest nodes with greater centrality as seeds, multiscale local communities -Liu J. et al [16] HqsMLCD multiple communities, higher quality starting nodes -Aghaalizadeh et al [41] use core nodes as starting, weighted networks -Hu Y. et al [42] S-LM local centrality measurements used for selecting starting nodes -Ji P. et al [43] CAELCD finds core nodes as seeds and expand them -PageRank Nibble and others.…”