International audienceGene regulatory network inference remains a challenging problem in systems biology despite numerous approaches. When substantial knowledge on a gene regulatory network is already available, supervised network inference also is appropriate. Such a method builds a binary classifier able to assign a class (Regulation/No regulation) to an ordered pair of genes. Once learnt, the classifier can be used to predict new regulations. In this work, we explore the framework of Markov Logic Network (MLN) recently introduced by Richardson and Domingos (2004, 2006). A MLN is a random Markov network that codes for a set of weighted formula. It therefore combines features of probabilistic graphical models with the expressivity of first...
To understand how the components of a complex system like the biological cell interact and regulate ...
A supervised learning framework based on information and combinatorial theories is introduced for th...
<p><b>A.</b> Modeling transcriptional regulatory networks as a probabilistic graphical model. Shown ...
International audienceGene regulatory network inference remains a challenging problem in systems bio...
International audienceBackgroundGene regulatory network inference remains a challenging problem in s...
An efficient two-step Markov blanket method for modeling and inferring complex regulatory networks f...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
A novel network inference method based on the improved MB discovery algorithm, IMBDANET, was propos...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
The construction and control of genetic regulatory networks using gene expression data is an importa...
Abstract—The expression of genes is a fundamental process in living cells, both eukaryotic and proka...
Liao, LiGene regulation plays a central role in cell biology. High throughput technologies, such as ...
This thesis focuses on the topic of gene regulatory network inference and control based on the Boole...
Probabilistic Boolean Networks (PBN’s), which form a subclass of Marko-vian Genetic Regulatory Netwo...
Reconstruction of genetic regulatory networks from time series data of gene expression patterns is a...
To understand how the components of a complex system like the biological cell interact and regulate ...
A supervised learning framework based on information and combinatorial theories is introduced for th...
<p><b>A.</b> Modeling transcriptional regulatory networks as a probabilistic graphical model. Shown ...
International audienceGene regulatory network inference remains a challenging problem in systems bio...
International audienceBackgroundGene regulatory network inference remains a challenging problem in s...
An efficient two-step Markov blanket method for modeling and inferring complex regulatory networks f...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
A novel network inference method based on the improved MB discovery algorithm, IMBDANET, was propos...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
The construction and control of genetic regulatory networks using gene expression data is an importa...
Abstract—The expression of genes is a fundamental process in living cells, both eukaryotic and proka...
Liao, LiGene regulation plays a central role in cell biology. High throughput technologies, such as ...
This thesis focuses on the topic of gene regulatory network inference and control based on the Boole...
Probabilistic Boolean Networks (PBN’s), which form a subclass of Marko-vian Genetic Regulatory Netwo...
Reconstruction of genetic regulatory networks from time series data of gene expression patterns is a...
To understand how the components of a complex system like the biological cell interact and regulate ...
A supervised learning framework based on information and combinatorial theories is introduced for th...
<p><b>A.</b> Modeling transcriptional regulatory networks as a probabilistic graphical model. Shown ...