factorsnetworks
Factorsnetworks are probabilistic graphical models that express the joint distribution of a set of variables by decomposing it into a network of local factors. The framework generalizes traditional factor graphs by making factor connections reflect modular interactions among variables. In a factorsnetwork, variable nodes represent random variables, while factor nodes encode compatibility constraints or likelihoods over small subsets of variables. The network structure specifies which variables participate in each factor, enabling flexible modeling of dependencies across domains.
Factors can take parametric, piecewise, or learned forms. The same factor may be shared across configurations,
Inference combines standard graphical-model techniques with network-aware approximations. Exact inference is often intractable in richly connected
Applications include social network analysis, sensor networks, biology, finance, and recommender systems, where localized interactions govern