Summarization: Biological networks are often described as probabilistic graphs in the context of gene and protein sequence analysis in molecular biology. Microarrays and proteomics technologies facilitate the monitoring of expression levels over thousands of biological units over time. Several experimental efforts have appeared aiming to unveiling pairwise interactions, with many graphical models being introduced in order to discover associations from expression-data analysis. However, the small size of samples compared to the number of observed genes/proteins makes the inference of the network structure quite challenging. In this study, we generate gene–protein networks from sparse experimental temporal data using two methods, partial corr...