Managing Ambiguity: A Proof of Concept of Human-AI Symbiotic Sense-making based on Quantum-Inspired Cognitive Mechanism of Rogue Variable Detection
Agnieszka Bienkowska, Jacek Malecki, Alexander Mathiesen-Ohman, Katarzyna Tworek

TL;DR
This paper introduces a quantum-inspired human-AI system that detects and manages organizational ambiguity early, enabling proactive decision-making and resilience in volatile environments.
Contribution
It presents a novel quantum-inspired model and process for human-AI symbiosis that detects rogue variables and manages ambiguity before it leads to errors or crises.
Findings
Early ambiguity detection enabled proactive patent protection.
Preserving interpretive plurality facilitated disruption-free decision-making.
The system demonstrated practical value in a real-world case study.
Abstract
Organizations increasingly operate in environments characterized by volatility, uncertainty, complexity, and ambiguity (VUCA), where early indicators of change often emerge as weak, fragmented signals. Although artificial intelligence (AI) is widely used to support managerial decision-making, most AI-based systems remain optimized for prediction and resolution, leading to premature interpretive closure under conditions of high ambiguity. This creates a gap in management science regarding how human-AI systems can responsibly manage ambiguity before it crystallizes into error or crisis. This study addresses this gap by presenting a proof of concept (PoC) of the LAIZA human-AI augmented symbiotic intelligence system and its patented process: Systems and Methods for Quantum-Inspired Rogue Variable Modeling (QRVM), Human-in-the-Loop Decoherence, and Collective Cognitive Inference. The…
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Taxonomy
TopicsInnovation, Sustainability, Human-Machine Systems · Embodied and Extended Cognition · Ethics and Social Impacts of AI
