Quantum Conflict Measurement in Decision Making for Out-of-Distribution Detection
Yilin Dong, Tianyun Zhu, Xinde Li, Jean Dezert, Rigui Zhou, Changming Zhu, Lei Cao, Shuzhi Sam Ge

TL;DR
This paper introduces a Quantum Conflict Indicator (QCI) for measuring conflicts between quantum mass functions, enhancing decision-making and out-of-distribution detection with improved accuracy and computational efficiency.
Contribution
It proposes a novel QCI for conflict measurement, validates its properties, and demonstrates its superiority in fusion methods and out-of-distribution detection tasks.
Findings
QCI satisfies key conflict measurement properties
QCI-based fusion outperforms traditional methods
Enhanced OOD detection accuracy with QCI-based approach
Abstract
Quantum Dempster-Shafer Theory (QDST) uses quantum interference effects to derive a quantum mass function (QMF) as a fuzzy metric type from information obtained from various data sources. In addition, QDST uses quantum parallel computing to speed up computation. Nevertheless, the effective management of conflicts between multiple QMFs in QDST is a challenging question. This work aims to address this problem by proposing a Quantum Conflict Indicator (QCI) that measures the conflict between two QMFs in decision-making. Then, the properties of the QCI are carefully investigated. The obtained results validate its compliance with desirable conflict measurement properties such as non-negativity, symmetry, boundedness, extreme consistency and insensitivity to refinement. We then apply the proposed QCI in conflict fusion methods and compare its performance with several commonly used fusion…
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Taxonomy
TopicsQuantum Information and Cryptography · Quantum Mechanics and Applications · Quantum Computing Algorithms and Architecture
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
