linkrl
LinkRL is a software framework designed to support research and development of reinforcement learning methods applied to link-oriented tasks in graph-structured data. The framework focuses on learning policies that govern actions affecting the presence or absence of links, making it relevant to tasks such as link prediction, graph-based navigation, and dynamic graph modification.
Architecture and features: LinkRL provides modular components for environment design, agent specification, reward shaping, and evaluation.
Usage and workflow: Users typically define or select a graph-based environment, select an RL algorithm, and
Impact and scope: In research contexts, LinkRL serves as a common platform for comparing reinforcement learning
See also: reinforcement learning, link prediction, graph neural networks. Limitations include the need for careful reward