Pattern detection in bipartite networks: a review of terminology, applications and methods
Zachary Neal, Annabel Cadieux, Diego Garlaschelli, Nicholas J., Gotelli, Fabio Saracco, Tiziano Squartini, Shade T. Shutters, Werner Ulrich,, Guanyang Wang, Giovanni Strona

TL;DR
This paper reviews various methodologies for detecting patterns in bipartite networks represented by binary matrices, emphasizing randomization techniques and their applications across multiple scientific disciplines.
Contribution
It provides a multidisciplinary overview of matrix randomization methods, translating terminology and comparing approaches to facilitate cross-disciplinary understanding.
Findings
Summarizes key randomization techniques for bipartite matrices.
Highlights importance of structural constraints like row/column sums.
Discusses limitations and computational challenges of methods.
Abstract
Two dimensional matrices with binary (0/1) entries are a common data structure in many research fields. Examples include ecology, economics, mathematics, physics, psychometrics and others. Because the columns and rows of these matrices represent distinct entities, they can equivalently be expressed as a pair of bipartite networks that are linked by projection. A variety of diversity statistics and network metrics can then be used to quantify patterns in these matrices and networks. But what should these patterns be compared to? In all of these disciplines, researchers have recognized the necessity of comparing an empirical matrix to a benchmark set of "null" matrices created by randomizing certain elements of the original data. This common need has nevertheless promoted the independent development of methodologies by researchers who come from different backgrounds and use different…
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Taxonomy
TopicsComplex Network Analysis Techniques · Mental Health Research Topics · Plant and animal studies
