Biomolecular network dynamics are thought to operate near the critical boundary between ordered and disordered regimes, where large perturbations to a small set of elements neither die out nor spread on average. A biomolecular automaton (e.g., gene, protein) typically has high regulatory redundancy, where small subsets of regulators determine activation via collective canalization. Previous work has shown that effective connectivity, a measure of collective canalization, leads to improved dynamical regime prediction for homogeneous automata networks. We expand this by (i) studying random Boolean networks (RBNs) with heterogeneous in-degree distributions, (ii) considering additional experimentally validated automata network models of biomole...
Bio-molecular networks are often called upon to illustrate emergent properties of living systems. In...
Biochemical networks are often called upon to illustrate emergent properties of living systems. In t...
In this dissertation, we study the statistical mechanics of Boolean networks as a simple model in cl...
Biomolecular network dynamics are thought to operate near the critical boundary between ordered and ...
Canalization is a property of Boolean automata that characterizes the extent to which subsets of inp...
The hypothesis that many living systems should exhibit near-critical behavior is well motivated theo...
We generalize random Boolean networks by softening the hard binary discretization into multiple disc...
Network motifs have been identified as building blocks of regulatory networks, including gene regula...
The inference of genetic regulatory networks from global measurements of gene expressions is an impo...
Gene regulatory networks can be successfully modeled as Boolean networks. A much discussed hypothesi...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
We present schema redescription as a methodology to characterize canalization in automata networks u...
Logical models offer a simple but powerful means to understand the complex dynamics of biochemical r...
The structure of molecular networks is believed to determine important aspects of their cellular fun...
We present schema redescription as a methodology to characterize canalization in automata networks u...
Bio-molecular networks are often called upon to illustrate emergent properties of living systems. In...
Biochemical networks are often called upon to illustrate emergent properties of living systems. In t...
In this dissertation, we study the statistical mechanics of Boolean networks as a simple model in cl...
Biomolecular network dynamics are thought to operate near the critical boundary between ordered and ...
Canalization is a property of Boolean automata that characterizes the extent to which subsets of inp...
The hypothesis that many living systems should exhibit near-critical behavior is well motivated theo...
We generalize random Boolean networks by softening the hard binary discretization into multiple disc...
Network motifs have been identified as building blocks of regulatory networks, including gene regula...
The inference of genetic regulatory networks from global measurements of gene expressions is an impo...
Gene regulatory networks can be successfully modeled as Boolean networks. A much discussed hypothesi...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
We present schema redescription as a methodology to characterize canalization in automata networks u...
Logical models offer a simple but powerful means to understand the complex dynamics of biochemical r...
The structure of molecular networks is believed to determine important aspects of their cellular fun...
We present schema redescription as a methodology to characterize canalization in automata networks u...
Bio-molecular networks are often called upon to illustrate emergent properties of living systems. In...
Biochemical networks are often called upon to illustrate emergent properties of living systems. In t...
In this dissertation, we study the statistical mechanics of Boolean networks as a simple model in cl...