Overcoming Bias in Community Detection Evaluation
Jeancarlo Campos Le\~ao (1), Alberto H. F. Laender (2), Pedro O. S., Vaz de Melo (2) ((1) Instituto Federal do Norte de Minas Gerais, (2), Universidade Federal de Minas Gerais)

TL;DR
This paper presents a robust evaluation approach for community detection in networks by combining structural and functional strategies to identify and mitigate biases, leading to more reliable community quality assessments.
Contribution
It introduces a method that integrates structural and functional evaluation strategies to detect and overcome biases in community detection results.
Findings
Effective in reducing bias in community evaluation
Produces more consistent community quality assessments
Validated on real and synthetic networks
Abstract
Community detection is a key task to further understand the function and the structure of complex networks. Therefore, a strategy used to assess this task must be able to avoid biased and incorrect results that might invalidate further analyses or applications that rely on such communities. Two widely used strategies to assess this task are generally known as structural and functional. The structural strategy basically consists in detecting and assessing such communities by using multiple methods and structural metrics. On the other hand, the functional strategy might be used when ground truth data are available to assess the detected communities. However, the evaluation of communities based on such strategies is usually done in experimental configurations that are largely susceptible to biases, a situation that is inherent to algorithms, metrics and network data used in this task.…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
