Reasoning-Based Forecast Interpreter
Explainable AI for trustworthy event forecasting
What is it about?
The Reasoning-Based Forecast Interpreter is a software component which allows adding specific rules to AI models to enable better predictions in event forecasting applications. The concept behind it is a hybrid neuro-symbolic framework, which also allows users to trace the logic behind an AI system’s decisions, especially in scenarios that involve multiple time-dependent variables. Hence, the tool addresses the “black-box” nature of deep learning, making complex forecasts more understandable and, potentially, more trustworthy.
Who is it for?
Data Scientists and AI developers who need to justify or debug forecasting models
Research institutions focused on Explainable AI (XAI) research
Business analysts who want to interpret model outputs for decision-making
Compliance officers in regulated sectors (e.g., healthcare, finance) who require model explainability
Why use it?
Brings clarity and transparency to neural model outputs
Helps users in analyzing mispredictions and retrain models more effectively
Promotes the trust of stakeholders in automated decision systems
How to access the tool?
The component is available as an open-source project on the EVENFLOW GitHub:
🔗 https://github.com/EVENFLOW-project-EU
Additional engagement includes:
Conference presentations
Academic publications
Collaboration offers research teams for model testing and feedback
Further development will continue via research proposals and an open-source community of developers and users focused on XAI.

