About this Research Topic
The lack of transparency and explainability is, therefore, a critical point for policymakers and regulators aimed at avoiding wrong actions with adverse consequences on society. This issue is more evident in the financial and banking sectors, where the use cases of AI extend to the contexts of risk management, predictive analytics, and fraud detection, as well as in the healthcare field, where the focus is on both the funding management process of the healthcare services and the improvement of the diagnostic precision.
We can resort to AI-based systems to predict the financial, default, funding loss, and diagnostic-related risks. However, AI-based systems require that the main criteria, which support the predictions, are known in order to assess the related severity and foster the appropriate measures to reduce the risks in case of shocks in the financial systems, changes in market conditions, or monitoring of the healthcare policies.
For the purpose of explaining and interpreting machine learning models, eXplainable Artificial Intelligence (XAI) represents a fundamental field for understanding the steps and methods driving the decision process. In line with the policy requirements of transparency, this Research Topic aims to include original papers proposing the development of innovative XAI methodologies for global or local explanations in the research area of:
• the financial and banking sectors - mainly focused on credit scoring, which involves lending algorithms, price discovery (representing the basis of financial robot advisory algorithms), and cyber risk management (greatly critical due to the increasingly online connections);
• the healthcare field mainly focused on the evaluation of the funding and management policies.
We welcome contributions that may focus on, but are not limited to, the following subtopics:
• P2P Credit Risk Management
• Credit Scoring
• Cryptocurrency Market Dynamics
• Fraud detection and Prevention
• Cyber Risk Assessment
• Healthcare Policy Evaluation
• Monitoring of the Healthcare Service and System Funding Process
Keywords: Artificial Intelligence systems, Machine Learnings models, Credit Risk, Cybersecurity, Blockchain, Financial Data Science, Healthcare Policies, Healthcare Funding Process
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.