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Open AccessJournal ArticleDOI

The ground truth about metadata and community detection in networks

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TLDR
It is proved that no algorithm can uniquely solve community detection, and a general No Free Lunch theorem for community detection is proved, which implies that there can be no algorithm that is optimal for all possible community detection tasks.
Abstract
Across many scientific domains, there is a common need to automatically extract a simplified view or coarse-graining of how a complex system's components interact. This general task is called community detection in networks and is analogous to searching for clusters in independent vector data. It is common to evaluate the performance of community detection algorithms by their ability to find so-called ground truth communities. This works well in synthetic networks with planted communities because these networks' links are formed explicitly based on those known communities. However, there are no planted communities in real-world networks. Instead, it is standard practice to treat some observed discrete-valued node attributes, or metadata, as ground truth. We show that metadata are not the same as ground truth and that treating them as such induces severe theoretical and practical problems. We prove that no algorithm can uniquely solve community detection, and we prove a general No Free Lunch theorem for community detection, which implies that there can be no algorithm that is optimal for all possible community detection tasks. However, community detection remains a powerful tool and node metadata still have value, so a careful exploration of their relationship with network structure can yield insights of genuine worth. We illustrate this point by introducing two statistical techniques that can quantify the relationship between metadata and community structure for a broad class of models. We demonstrate these techniques using both synthetic and real-world networks, and for multiple types of metadata and community structures.

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Citations
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Journal ArticleDOI

Community Discovery in Dynamic Networks: A Survey

TL;DR: In this article, the authors present the distinctive features and challenges of dynamic community discovery and propose a classification of published approaches, which can be used to identify the set of approaches that best fit their needs.
Journal ArticleDOI

Global energy flows embodied in international trade: A combination of environmentally extended input–output analysis and complex network analysis

TL;DR: In this paper, the authors apply a variety of complex network analysis tools to uncover the structure of embodied energy flow network (EEFN) at global, regional and national level, based on environmentally extended input-output analysis (EEIOA).
Journal ArticleDOI

Metrics for Community Analysis: A Survey

TL;DR: A survey of the metrics used for community detection and evaluation can be found in this paper, where the authors also conduct experiments on synthetic and real networks to present a comparative analysis of these metrics in measuring the goodness of the underlying community structure.
Journal ArticleDOI

The modular organization of human anatomical brain networks: Accounting for the cost of wiring

TL;DR: A modification of an existing module detection algorithm that allowed it to focus on connections that are unexpected under a cost-reduction wiring rule and to identify modules from among these connections, which support the hypothesis that brain networks are composed of modules and provide additional insight into the function of those modules.
Journal ArticleDOI

Community detection in node-attributed social networks: A survey

TL;DR: An exhaustive search of known methods is performed and a classification of them based on when and how structure and attributes are fused is proposed, which pays attention to available information which methods outperform others and which datasets and quality measures are used for their evaluation.
References
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Journal ArticleDOI

Hierarchical Block Structures and High-resolution Model Selection in Large Networks

TL;DR: In this article, a new approach uses both the concept of modular hierarchy for network construction and the methods of statistical inference to address this problem, succeeding where the existing approaches see difficulties, and characterizing and identifying modules is highly nontrivial and still an outstanding problem in networks research.
MonographDOI

The Collegial Phenomenon

Book ChapterDOI

Communities of Interest

TL;DR: This work introduces a data structure that captures, in an approximate sense, the graph and its evolution through time, as the union of small subgraphs, called Communities of Interest (COI), centered on every node.
Journal ArticleDOI

Community detection in networks: Structural communities versus ground truth

TL;DR: It is shown that traditional community detection methods fail to find the metadata groups in many large networks, and that either the current modeling of community structure has to be substantially modified, or that metadata groups may not be recoverable from topology alone.
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