Description: Network bias refers to the distortion that can arise in artificial intelligence (AI) results due to the structure and connections within a network. This phenomenon manifests when the interactions and relationships between the nodes of a network influence how data is processed and analyzed. In the context of AI, network bias can affect the quality and fairness of outcomes, as networks can amplify existing prejudices or create new inequalities. This bias can be particularly problematic in applications that rely on automated decision-making, such as hiring, criminal justice, or healthcare. Understanding network bias is crucial for developing fairer and more responsible AI systems, as it allows for the identification and mitigation of negative influences that may arise from the network’s structure. In summary, network bias is a critical aspect of ethics and the design of AI systems, as its impact can have significant consequences on individuals’ lives and society as a whole.