Advancing artificial intelligence (AI) for predictive modelling requires not only accuracy but also mechanisms that ensure transparency, interpretability, trust, accountability, and responsibility. This article critically examines principles and methods for embedding these dimensions into AI-based predictive systems. It highlights the inherent challenge of black-box machine learning and deep learning models, where predictive performance often compromises explainability. Conceptual foundations are clarified by differentiating transparency, interpretability, and trust, and by situating them within broader frameworks of accountability and proactive responsibility. Methodological strategies encompass intrinsically interpretable models, post-hoc explanation techniques such as SHAP and LIME, data lineage tracking, bias mitigation, and multimodal approaches integrating visual and linguistic communication. Trust is strengthened through continuous performance monitoring, uncertainty quantification, and user-facing explainability interfaces, while accountability is operationalised through audit trails, role-specific responsibility allocation, and external oversight mechanisms. The discussion also addresses critical challenges, including performance–interpretability trade-offs, risks of superficial transparency, and potential misuse of explanations, supported by case studies in healthcare, finance, and judicial decision-making. Future directions point toward interpretable-by-design architectures, causal reasoning frameworks, standardised auditing protocols, and interdisciplinary models of governance
A Thu, study studied this question.