Geometric Characterization of Data Sets with Unique Reduced Gröbner Bases.
Bull Math Biol
; 81(7): 2691-2705, 2019 07.
Article
em En
| MEDLINE
| ID: mdl-31256302
Model selection based on experimental data is an important challenge in biological data science. Particularly when collecting data is expensive or time-consuming, as it is often the case with clinical trial and biomolecular experiments, the problem of selecting information-rich data becomes crucial for creating relevant models. We identify geometric properties of input data that result in an unique algebraic model, and we show that if the data form a staircase, or a so-called linear shift of a staircase, the ideal of the points has a unique reduced Gröbner basis and thus corresponds to a unique model. We use linear shifts to partition data into equivalence classes with the same basis. We demonstrate the utility of the results by applying them to a Boolean model of the well-studied lac operon in E. coli.
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MEDLINE
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Modelos Biológicos
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En
Ano de publicação:
2019
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Article