An Entropy-Based Graph Construction Method for Representing and Clustering Biological Data
Por:
Ariza-Jiménez L., Pinel N., Villa L.F., Quintero O.L.
Publicada:
1 oct 2020
Resumen:
Unsupervised learning methods are commonly used to perform the non-trivial task of uncovering structure in biological data. However, conventional approaches rely on methods that make assumptions about data distribution and reduce the dimensionality of the input data. Here we propose the incorporation of entropy related measures into the process of constructing graph-based representations for biological datasets in order to uncover their inner structure. Experimental results demonstrated the potential of the proposed entropy-based graph data representation to cope with biological applications related to unsupervised learning problems, such as metagenomic binning and neuronal spike sorting, in which it is necessary to organize data into unknown and meaningful groups. © 2020, Springer Nature Switzerland AG.
Filiaciones:
Ariza-Jiménez L.:
Mathematical Modeling Research Group, Universidad EAFIT, Medellín, Colombia
Pinel N.:
Biodiversity, Evolution, and Conservation Research Group, Universidad EAFIT, Medellín, Colombia
Villa L.F.:
System Engineering Research Group, ARKADIUS, Universidad de Medellín, Medellín, Colombia
Quintero O.L.:
Mathematical Modeling Research Group, Universidad EAFIT, Medellín, Colombia
Green Published
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